Abstract
A modified version of Lazear’s model (in American Economic Review, 94, 208-211, 2004, Journal of Labor Economics, 23, 649–680, 2005) for occupational choice is formulated. It includes a utility adjustment factor that captures the combined effect of nonpecuniary benefits and uncertainty associated with entrepreneurship. We show that the counterfactual income returns to entrepreneurship are lower than the market value of entrepreneurial talent and higher than the inverse of the utility adjustment factor. Moreover, if the skill profiles in the population are Fréchet-distributed, the ratio between the expected incomes of entrepreneurs and observationally similar wage employees is lower than the inverse of the utility adjustment factor. Thus, entrepreneurs will on average earn less than wage employees if the utility adjustment factor is greater than or equal to one. It is also shown that the self-selection bias related to this income ratio or returns measure increases with the observed percentage of entrepreneurs. Swedish employment data are used to calibrate the modified Lazear model. The empirical results indicate that uncertainty considerations might be more important for the occupational choices than nonpecuniary benefits.
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1 Introduction
This paper analyzes the returns to entrepreneurship by applying a utility-based version of Lazear’s (2002, 2004, 2005) occupational choice model. The modified model allows income uncertainty and nonpecuniary benefits associated with entrepreneurship to influence the occupational choice. In Lazear’s original model, the individuals have two basic skills, and their choices between entrepreneurship and wage employment are determined by the resulting incomes. Individuals that choose wage employment will be paid according to the strength of their strongest skill, and the payment for those that choose entrepreneurship will equal the strength of their weakest skill times a positive parameter reflecting the market value of entrepreneurial talent. Income maximization implies that individuals having balanced skills are more likely than others to become entrepreneurs.
Different aspects of Lazear’s model have been tested in a large number of empirical studies. Most of them seem to support the implication that entrepreneurs have more balanced skills than wage employees; see Lazear (2004, 2005), Wagner (2003, 2006), Cho and Orazem (2014), Bublitz and Noseleit (2014), Tegtmeier et al. (2016), Aldén et al. (2017) and Krieger et al. (2018), for instance. The model has also been criticized. A long-standing issue in the literature relates to the observation that entrepreneurs tend to earn less than comparable wage employees; see Hamilton (2000) and Åstebro (2012). Hamilton (2000) suggests that nonpecuniary benefits of being one’s own boss might compensate for the observed earning differences. Hartog et al. (2010) claim that nonpecuniary benefits seem to be necessary to solve “the returns-to-entrepreneurship puzzle,” and Benz (2009) states that “…entrepreneurship cannot possibly be understood as a quest for profit alone” (page 24).
The criticism seems to exclude an occupational choice model based on income maximization alone. However, it should be noted that Lazear (2002) shows that whether his model will result in higher or lower average income for entrepreneurs than for wage employees depends upon the assumption made about the distribution of skill profiles in the population. Using numerical methods, he shows that a normal distribution will always imply a higher average income for entrepreneurs than for wage employees, whereas a gamma distribution, under some conditions, will reverse that relationship. Applying another income maximization model, Jovanovic (2019) shows that whether the ratio of entrepreneurial income to wage income will exceed or fall below one depends upon the assumed values of model parameters such as liquidity constraints and the correlation between management and working skills.
Lazear’s model has also been criticized for excluding the uncertainties and risks characterizing entrepreneurship. Modeling the occupational choice, Ekelund et al. (2005), Brown et al. (2011), and Hvide and Panos (2014), for instance, show that risk tolerance promotes entrepreneurship. Hsieh et al. (2017) include the acquisition of skills as a choice variable rather than being taken as given. Applying a two-stage model, they conclude that risk aversion might promote entrepreneurship, seemingly in contradiction to the previous studies.
Another common explanation for the observed earning differential between entrepreneurs and employees is related to the difficulty of measuring entrepreneurial earnings and to the definition of an entrepreneur; see Parker (2018) for an overview. Lechman (2015) reports that the contribution of different working conditions to the earning gap is marginal and concludes that income underreporting might play the main role. According to Berglann et al. (2011) and Åstebro and Chen (2014), entrepreneurs might in fact earn more than comparable wage employees provided that their incomes are measured accurately. Levine and Rubinstein (2016) differentiate between incorporated and unincorporated self-employed and show that the incorporated self-employed earn more and the unincorporated less than comparable wage employees.
In addition to the measurement problem, self-selection makes it difficult to estimate what entrepreneurs would have earned if they instead had chosen to become employees. Hyytinen et al. (2013) correct for the heterogeneity caused by genetic factors by using a database for identical twins that includes information about earnings as well as working conditions. They report negative earning returns but compensating positive nonpecuniary benefits for entrepreneurs.
The basic aim of our paper is to provide a theoretical framework that can be used to analyze how occupational choices are affected by skill profiles, incomes, and the combined influence of nonpecuniary benefits and income uncertainty. We will assume that the occupational choice is determined by utility maximization rather than by income maximization as in Lazear’s model. The utility of wage employment equals the received income as in Lazear’s model. The utility of entrepreneurship, however, equals the income expected by the individual multiplied by a utility adjustment factor. This factor captures the combined effects of nonpecuniary benefits and the uncertainty about what the income actually will be. The utility mapping implies that if, for instance, a potential entrepreneur adjusts the utility upwards by 15% because of more autonomy and downwards by 5% because of income uncertainty, then the end result will be a utility adjustment factor of 1.093.Footnote 1,Footnote 2 For this modified model, it is possible to show that the income returns to entrepreneurship—relative to the counterfactual incomes as wage employed—are greater than the inverse of the utility adjustment factor and lower than or equal to the market value of entrepreneurial talent.
In order to derive further theoretical implications of our modified model and to test it empirically, we will specify a statistical distribution of the skills in a population. Earlier empirical studies of income differences between entrepreneurs and wage employees provide some hints for this specification. First, the skill distribution should allow, but not require, lower average earnings of entrepreneurs than of observationally similar employees. It follows that neither a normal nor a uniform skill distribution would be appropriate, since both imply a reversed income ratio as shown by Lazear (2002) and Åstebro and Thompson (2011), respectively. Furthermore, the specification should be compatible with commonly observed differences between the income distribution of entrepreneurs and wage employees. As shown by Hamilton (2000) and Parker (2018), for instance, the income distribution of entrepreneurs typically has a larger variance and a larger positive skew. Another consistent feature is an overrepresentation of entrepreneurs in the lower and upper parts of the overall income distribution. By and large, similar differences hold for the Swedish income distribution data that we use to apply the model empirically. We have chosen the Fréchet distribution, which is positively skewed with a fat right-hand tail, since it fulfills both the stated condition and is compatible with the observed characteristics of the income distributions of entrepreneurs and work employees.Footnote 3 It is also attractive because its properties make it possible to relate analytically the incomes of entrepreneurs and wage employees to their counterfactual incomes. This allows us to analyze the self-selection bias related to a commonly used measure of the income returns to entrepreneurship: the ratio between the average income for observationally similar entrepreneurs and wage employed. Furthermore, when the skills are Fréchet-distributed, the parameters of the model are straightforward to calibrate against commonly available labor market data.
The paper contributes to earlier studies in several ways. It shows that the combined influence of nonpecuniary benefits and uncertainty is crucial for the counterfactual income returns to entrepreneurship; the lower bound on this returns measure equals the inverse of the utility adjustment factor. If we add the assumption that skills are Fréchet-distributed, entrepreneurs will on average earn less than comparable wage employees provided that the adjustment factor is greater than or equal to one. Another conclusion is that the self-selection bias of this income ratio when used as a returns measure will be larger, the higher the relative frequency of entrepreneurs.
We use Swedish employment register data to calibrate and apply the model for two university-educated population groups: architects and electrical engineers. Entrepreneurs are defined as self-employed and we make a distinction between all self-employed and the subset that are employers. The calibrated parameters show that the corresponding entrepreneurial supply curves differ considerably and that the utility adjustment factor is less than one for three out of four analyzed subgroups.
The paper is organized as follows. Section 2 formulates the model framework and its theoretical implications. Section 3 presents our data and Section 4 presents the calculated values of the counterfactual income returns and the model parameters. Section 4 also includes a comparison between the theoretically derived income distributions based on the calibrated parameters and the actual income distributions in our data. Concluding remarks follow in Section 5. Mathematical proofs and the applied procedure for parameter calibration are in Appendix 1 and additional data in Appendix 2.
2 The model framework
Following Lazear (2005), we consider a population of individuals who choose between becoming entrepreneurs or wage employees. Each individual has two basic skills with strengths that vary in the population according to the positive random variables X1 and X2. The income as an entrepreneur is determined by the individual’s weakest skill times a positive parameter λ representing the market value of entrepreneurial talent. For a randomly selected individual, the entrepreneurial income is thus λ · min {X1, X2}. As a wage employee, on the other hand, the income will correspond to the strength of the individual’s strongest skill, that is, max {X1, X2}.
As discussed in the introduction, nonpecuniary benefits may explain why some individuals become entrepreneurs although their incomes as wage employees would be higher.Footnote 4 On the other hand, uncertainty about the income as an entrepreneur may explain why some individuals choose to become wage employees although their entrepreneurial incomes would be higher. To allow for nonpecuniary benefits and income uncertainty for entrepreneurs, we make a slight modification of Lazear’s occupational choice model. Instead of assuming that the entrepreneurial income is certain, we assume that it is uncertain with expected value λ · min {x1, x2} for an individual with observed skill strengths of x1 and x2. Because of the uncertainty, the utility of the income is presumably reduced when compared with an equally large certain income. Nonpecuniary benefits may also influence the utility of entrepreneurship in relation to the expected income. We assume that these effects can be combined in a common positive utility adjustment factor s such that the utility of entrepreneurship for a randomly selected individual isFootnote 5
Simplicity is the main reason for assuming a multiplicative adjustment. Considering nonpecuniary benefits, it seems reasonable to assume that the benefits of autonomy or from a “taste for variety” will increase with the income as is argued by Benz (2009).Footnote 6 A proportional adjustment for income uncertainty is perhaps more questionable but seems to be in accordance with experimental studies showing that individuals tend to simplify their approach when choosing between certain and uncertain outcomes; see Kahneman and Tversky (1979). Thus, the s parameter reflects the behavior of a person who first adjusts his expected income because of perceived nonmonetary benefits and then adjusts it because of income uncertainty. For wage employees, we keep Lazear’s assumption that the utility equals the income
With this slight modification of Lazear’s model, an individual chooses entrepreneurship if and only if it gives a higher utility:
We note that this could only happen if s · λ > 1, which is therefore assumed. If this condition is not fulfilled, no one would choose to be an entrepreneur. The probability that a randomly drawn individual chooses entrepreneurship is then
The probability pE obviously increases with both s and λ.
The logic of the occupational choice model is illustrated in Fig. 1. The probability of becoming an entrepreneur pE is equal to the probability that the random vector (X1, X2) falls between the two rays X2 = s · λ · X1 and X2 = X1/(s · λ). Clearly, pE goes from zero to one as s · λ goes from one to infinity, since then the rays will shift from coinciding with the diagonal to coinciding with the axes.
Next we let YE and YW denote the income earned by (self-selected) entrepreneurs and (self-selected) wage employees, respectively. Formally,
By definition, each individual chooses occupational status to maximize his utility. Does this mean that he also maximizes his income? This is only true if there are no other factors than income that determines the utility, that is, if s = 1. To analyze the general case with a utility adjustment factor s that is not necessarily equal to one, we first define the counterfactual income of an entrepreneur as the income he would have earned, if he instead had chosen to become a wage employee
and the corresponding counterfactual income of a wage employee as the income he would have earned, if he instead had chosen to become an entrepreneur
Consider now an individual’s income returns to entrepreneurship and to wage employment relative to the counterfactual incomes, that is, YE/ZE and YW/ZW, respectively. It should be noted that by construction, these counterfactual income returns are unbiased by self-selection.
Moreover, upper and lower bounds on these income returns are easily derived. For an entrepreneur with perfectly balanced skills, that is, for whom X1 = X2, the relative income returns are YE/ZE = λ, since min{X1, X2} = max {X1, X2}. For an entrepreneur who is indifferent between being an entrepreneur or a wage employee, that is, for whom s · λ · min {X1, X2} = max {X1, X2}, the counterfactual income returns are YE/ZE = λ · min {X1, X2}/ max {X1, X2} = 1/s. Hence
Similarly, for an employee who is indifferent between being a wage employee or an entrepreneur, that is, for whom s · λ · min {X1, X2} = max {X1, X2}, the relative income returns are YW/ZW = max {X1, X2}/λ · min {X1, X2} = s. Hence
Based on these concepts of individual counterfactual income returns, we define the counterfactual income returns to entrepreneurship as
and the counterfactual income returns to wage employment asFootnote 7
Before introducing a specific skill distribution, we just assume that the two random skills X1 and X2 are statistically independent and identically distributed with strictly positive densities on the positive axes and having finite expected values. Then obviously the same inequalities hold for the returns based on expected incomes. In fact, the non-strict inequalities are then strengthened to strict ones, since the skill distributions have been assumed to have strictly positive densities. We have therefore established the following proposition:
Proposition 1
Consider our modified Lazear model with s · λ > 1 and with random skill profiles X1 > 0 and X2 > 0 that are statistically independent and identically distributed with strictly positive densities on the positive axes and with finite expected values. The counterfactual income returns to entrepreneurship μE then satisfy
and the counterfactual income returns to wage employment satisfy
It should be noted that the inequalities hold for any continuous skill distribution specified as in the proposition. As we will see in the empirical application reported in Table 2, μE will be very close to the average of its boundaries, that is, μE ≈ (λ + 1/s)/2.
If the utility adjustment factor s ≤ 1, the first inequality guarantees that entrepreneurs on average will earn more than they would do as wage employees. If, on the other hand, s > 1, then the reversed relationship is not excluded. In either case, their expected income returns will be smaller than the market value of entrepreneurship talent, that is, μE < λ. The second inequality says that wage employees on average will earn more than they would do as entrepreneurs, if the utility adjustment factor s ≥ 1. They could, on the other hand, on average earn less than they would do as entrepreneurs if s < 1, and hence, μW might then be less than one. Finally, if s = 1, both entrepreneurs and wage employees will on average earn more than they would do by making the opposite occupational choice.
To be able to analyze the properties of our modified model further and to apply it to empirical data, we need to specify a distribution for the skills in the population. As already motivated, we will apply the Fréchet distribution. We first derive closed-form expressions for the occupational choice probabilities given Fréchet-distributed skills.
Proposition 2
Consider our modified Lazear model with s · λ > 1 and with random skills X1 and X2 that are statistically independent and identically Fréchet(β, v)-distributed with β > 1 and v > 0.Footnote 8 The probability of entrepreneurship and wage employment are then, respectively,
and
Proof
See Appendix 1.
As expected, the supply of entrepreneurs pE increases at a decreasing rate with increasing utility adjustment factor s and increasing market value of entrepreneurial talent λ. The same holds for pE vis-à-vis β. The latter conclusion is intuitively clear, since the larger the value of β, the smaller is the variance of the skill distributions (see Appendix 1), which in turn implies that the skills will be more balanced.Footnote 9
With the same distributional assumptions, one can also derive closed-form expressions for the expected incomes of entrepreneurs and wage employees.
Proposition 3
Consider our modified Lazear model with the same assumptions as in Proposition 2. Then the expected incomes of entrepreneurs and wage employees are, respectively,
Proof
See Appendix 1.
The expected income of wage employees \( \mathit{\mathsf{E}}\left[{Y}_{\mathrm{W}}\right] \) obviously increases with both \( \lambda\ \mathrm{and}\ s \) for given parameters β and v. The explanation is that the strongest skill of those wage employees that then shift to entrepreneurs is likely to be relatively weak compared with the strongest skill of those that remain wage employed. It also seems intuitively reasonable that the expected income of entrepreneurs \( \mathit{\mathsf{E}}\left[{Y}_{\mathrm{E}}\right] \) should increase with λ and decrease with s. This conjecture is supported by numerical experiments for relevant values of \( \lambda, s,\mathrm{and}\ \beta \). Moreover, suppose that the demand for entrepreneurs increases for given values of \( s\ \mathrm{and}\ \beta . \) In a balanced labor market, λ then has to increase, which will increase the supply of entrepreneurs by an upward adjustment of their relative incomes. Again numerical experiments for relevant parameter values indicate that \( \mathit{\mathsf{E}}\left[{Y}_{\mathrm{E}}\right]/\mathit{\mathsf{E}}\left[{Y}_{\mathrm{W}}\right] \) then increases, and hence, \( \mathit{\mathsf{E}}\left[{Y}_{\mathrm{E}}\right] \) increases relatively more than \( \mathit{\mathsf{E}}\left[{Y}_{\mathrm{W}}\right] \). If we assume that the demand for entrepreneurs is fixed, then the product s · λ has to be constant by Proposition 2. It follows that if the utility adjustment factor, that is s, increases, then the expected income of entrepreneurs decreases, while that of wage employees remains constant.
We are now in a position to establish a fundamental inequality for the ratio of the expected incomes of entrepreneurs to wage employees.
Proposition 4
Consider our modified Lazear model with the same assumptions as in Proposition 2. Then the ratio of the expected incomes of entrepreneurs to wage employees is
Proof
See Appendix 1.
Although Fréchet-distributed skills are sufficient for this inequality to hold, it also holds for other skill distributions with a similar form. Lazear (2002) reports (for the case s = 1) that the inequality is valid for gamma-distributed skills for sufficiently low values of λ > 1. We have found that it also holds for Weibull-distributed skills under similar conditions.Footnote 10
The proposition says that entrepreneurs on average will earn less than wage employees as long as entrepreneurship is associated with a utility adjustment factor greater than or equal to one, that is, if s ≥ 1. However, if this is not the case, that is, if 0 < s < 1, entrepreneurs may on average earn more than wage employees.
Suppose income is the only factor that determines the entrepreneurship utility, that is, s = 1. Then entrepreneurs as well as wage employees will on average earn more than they would do by making the opposite occupational choice;\( {\mu}_{\mathrm{E}}>1\ \mathrm{and}\ {\mu}_{\mathrm{W}}>1 \). By Proposition 4, this is fully consistent with entrepreneurs on average earning less than observationally similar wage employees. In this sense, there is no return-to-entrepreneurship puzzle.
Self-selection bias is a recurrent problem in empirical studies using the ratio of expected entrepreneurial income to expected income of wage employed \( \mathit{\mathsf{E}}\left[{Y}_{\mathrm{E}}\right]/\mathit{\mathsf{E}}\left[{Y}_{\mathrm{W}}\right] \) as a measure of returns to entrepreneurship.Footnote 11 That this measure underestimates the returns to entrepreneurship is clear since \( \mathit{\mathsf{E}}\left[{Y}_{\mathrm{E}}\right]/\mathit{\mathsf{E}}\left[{Y}_{\mathrm{W}}\right]<{\mu}_{\mathrm{E}} \), which follows by combining Propositions 1 and 4. We define the relative self-selection bias of the expected income ratio as
Next we show that the larger the fraction of entrepreneurs, the larger is the self-selection bias b.
Proposition 5
Consider our modified Lazear model with the same assumptions as in Proposition 2. Then the self-selection bias b, as a function of the probability of entrepreneurship pE, is
with b strictly increasing from 1/β to 1 as pE increases from 0 to 1 and b strictly decreasing in β > 1.
Proof
See Appendix 1.
3 The data
Our database—provided by Statistics Sweden—comprises individual time series data of all employed individuals in Sweden from 2004 to 2008. Anyone working at least 1 h per week in November each year, 4.4 million individuals in 2008, is considered employed the same year, implying that both full-time and part-time employees are included. Each individual is categorized as either wage employed or self-employed.Footnote 12 Individuals that combine wage employment and self-employment are classified as wage employees if their income from wage employment is larger than the income from self-employment and vice versa. Since combinations are rather common, it should be noted that even a small income change between the years might result in a reclassification of an individual from, say, self-employed to wage employed.
The income information corresponds to before-tax wage per year for wage employed and before-tax net business income per year for self-employed. Statistics Sweden multiplies reported business incomes by 1.6 in order to adjust for an observed tendency by business owners to report too low incomes. The incomes for those combining wage employment and self-employment include both types of incomes. It follows that the income of self-employed combiners used in our analysis will be higher than their actual business income. The income of wage employed combiners will be higher or lower than their actual wage income depending on if their business income is positive or negative.
Since the purpose is to illustrate some empirical implications of our model specification, the calculations will be limited to the latest year 2008 and two populations of working individuals. We have chosen individuals that have the same length but different types of formal education and that differ significantly regarding the propensity to be self-employed: electrical engineers and architects that have a master’s degree from a technical university.Footnote 13 According to our model, the much higher self-employment rate among architects is related to the balance of skills, the utility adjustment factor, and the market value of entrepreneurship. Assuming that analytical and creative skills are important for the occupational choice, a seemingly reasonable hypothesis is that architects have a more balanced skill profile than electrical engineers.
Furthermore, we distinguish between all self-employed and the subset of self-employed that hires at least one person, the latter to be denoted 1+. The reason for this is that self-employed who work on their own account usually earn less than those who employ other persons; see Parker (2018), for instance.
Table 1 shows the average self-employment rates and the ratios of the average incomes of self-employed to wage employed in 2008. As indicated in Appendix 2, Table 4, the variation in these values across the years 2004–2008 is relatively small.
As already noted, the self-employment rates are much lower for electrical engineers than for architects: 9.3 as compared with 26.0%. The corresponding percentages of self-employed hiring at least one person are about half as high.Footnote 14
Only the self-employed architects that hire at least one person earn more than the wage employed. As expected, the income ratios are higher for the self-employed that are employers than for all self-employed.Footnote 15 Our model provides some information about possible reasons for the latter differences. Since E[YE]/E[YW] < 1/s by Proposition 4, and s is the utility adjustment factor, one explanation might be that the self-employed hiring others regard income uncertainty as more important, and positive benefits like being one’s own boss as less important than the own-account self-employed.
Table 5 in Appendix 2 provides additional information about the observed income percentiles in 2008. The 5th income percentile is throughout lower for self-employed than for wage employed. The pattern is less clear in the upper end of the income distribution.
Among the electrical engineers, the 95th and the 99th income percentiles are lower for self-employed than for wage employed. This holds for both categories of self-employed. With one exception, the opposite relationship applies for the architects. The exception is the 95th income percentile for all self-employed architects. The overrepresentation of self-employed architects in both ends of the common income distribution is consistent with the characterization of entrepreneurs as “stars and misfits”; see Åstebro et al. (2011), for instance.
4 Results
The parameters of our modified Lazear model have been calibrated against the information about occupational status in Table 1 and average incomes and income percentiles in Tables 4 and 5 in Appendix 2 for the year 2008.Footnote 16 Table 2 shows the calculated values of the counterfactual income returns and the calibrated model parameters.
The counterfactual income returns to self-employment as well as to wage employment are positive among all subgroups but “all self-employed electrical engineers”—their returns being 2% lower than if they had instead chosen wage employment. Furthermore, the table shows that the self-employment returns are higher for architects than for electrical engineers and for hiring self-employed as compared with all self-employed. The hypothesis, suggested by Proposition 1, that the counterfactual income returns to entrepreneurship μE should be very close to the averages of the corresponding values of λ and 1/s, is empirically verified. A comparison with Table 1 also confirms empirically the earlier theoretical result that the counterfactual income returns are higher than the corresponding income ratios.
Somewhat surprisingly, Table 2 also shows that the only category that has a utility adjustment factor s exceeding one is “all self-employed electrical engineers.” One obvious interpretation is that the trade-off between the hazards of entrepreneurship and the safety of wage employment has a stronger influence than nonpecuniary benefits among the other three categories.
As follows by Proposition 2, the probability of entrepreneurship will increase with the product of the two parameters s and λ as well as with β. Table 2 shows that the products are higher among architects than electrical engineers and also among all self-employed than self-employed hiring at least one person. Since the values of β are lower among the architects, and lower values are associated with a larger variance (see Appendix 1), we can reject the hypothesis that architects have more balanced skill profiles than electrical engineers. Their much higher rate of self-employment is rather explained by a higher market value of entrepreneurial talent. However, our assumption about independent skills is an important caveat. As shown by Lazear (2005), the supply of entrepreneurs will increase with the correlation between the two skills. Thus, the higher market value of entrepreneurial talent among architects than engineers might be explained by a lower skill correlation. If the assumption about uncorrelated skill distributions is relaxed, it also seems likely that the calibrated parameter values would change (see footnotes 21 and 22 for further information). Apart from our model, it is also possible that students interested in becoming entrepreneurs prefer to study architecture rather than engineering, or simply that it is more difficult for architects than for electrical engineers to find a well-paid employment matching their education.Footnote 17
According to Lazear (2005), the market value of entrepreneurial talent λ adapts to ensure that the supply of entrepreneurs satisfies an exogenously given demand. The relationship between the entrepreneurship rates and λ can therefore be summarized as an entrepreneurial supply curve.Footnote 18 Using the calibrated parameter values given in Table 2, Fig. 2 illustrates the supply curves for the different categories. As expected, a higher market value of entrepreneurship increases the supply of self-employed. However, the supply consequences of the utility adjustment factor s are more striking. The intercepts of the supply curves are equal to the inverse of the corresponding s values. Since the latter value is lower among each category of architects than among the corresponding category of electrical engineers, it follows that the architects’ supply curves start at a higher level.
As we clarify in Section 2, the income ratios presented in Table 1, interpreted as income returns to entrepreneurship, are biased by self-selection. A comparison with the counterfactual income returns in Table 2 indicates that the income ratio underestimates the “true” income returns for the category “all self-employed” by 35% for electrical engineers and 41% for architects. As explained in Proposition 5, the larger self-selection bias for architects results from their higher rate of self-employment, since the β values are rather similar.
Proposition 3 in Appendix 1 shows how the income distributions for wage employed and entrepreneurs can be calculated. Using the parameter values reported in Table 2, we have computed the 5th, 25th, 50th, 75th, and 95th income percentiles and compared them with the corresponding observed income percentiles according to Appendix 2, Table 5. Table 3 reports the ratio of the computed to the observed income percentiles. Excluding the 5th percentile, the fit is fairly good. It is somewhat better for self-employed hiring others than for all self-employed as well as for wage employees.
It is impossible to assess to what extent the reported differences depend upon the applied model, the Fréchet assumption, or the data. We think, however, that the fit is good enough to warrant further investigations. One obvious improvement would be to control for observable individual characteristics like age, gender, and labor market region.Footnote 19
5 Summary and concluding remarks
The paper presents a modified version of Lazear’s model of selection into entrepreneurship. The modification means that the expected entrepreneurial incomes, as perceived by the individuals, are multiplied with a utility adjustment factor assumed to handle the combined influence of nonpecuniary benefits and the income uncertainty related to entrepreneurship. In the theoretical part of the paper, we show that the counterfactual income returns to entrepreneurship are greater than the inverse of the utility adjustment factor and lower than the market value of entrepreneurial talent. Adding the assumption that the skill profiles in a population are Fréchet-distributed, utility maximization will lead to lower expected earnings for entrepreneurs than for wage employees, if the utility adjustment factor s is greater than or equal to one. Hence, Lazear’s model (having s = 1) is fully compatible with lower average earnings for entrepreneurs than for observationally similar wage employed. Furthermore, we show that the self-selection bias of the ratio of the average incomes of entrepreneurs to observationally similar wage employees, when used as a measure of income returns to entrepreneurship, increases with the observed percentages of entrepreneurs.
Data from the Swedish employment register for the year 2008 are used to calibrate the model parameters for two university-educated population groups: architects and electrical engineers. As shown theoretically and confirmed empirically, the counterfactual income returns to self-employment are higher than the returns indicated by the income ratio between observationally similar self-employed and wage employed. Moreover, the entrepreneurial supply curves differ substantially between the two population groups and within the groups between all self-employed and those hiring at least one person. The calibrated parameters indicate that nonpecuniary benefits as well as risk considerations should be included in occupational choice models. Our assumption that the skills are Fréchet-distributed gains circumstantial support from a comparison of the observed and the computed model-based income distributions. It also gains some indirect support, since it allows, but does not require, the average income of self-employed to be lower than that of wage employed.
Some of our simplifying model assumptions should be emphasized. We assume that architects and electrical engineers need the same number and type of skills whether wage employees or entrepreneurs and that the two skill distributions are independent. These assumptions are bound to influence our results since the supply of entrepreneurs would be smaller if more than two skills are needed and larger if the distributions of skills are correlated; see Lazear (2005). It would be an interesting avenue for future research to allow correlation between the skills and to test other distributions than the Fréchet distribution. Since the standard way to handle risk is to model utility as a nonlinear function of income, the use of a multiplicative adjustment factor is another simplification. A counter-argument is that experimental studies show that individuals tend to simplify their decisions when choosing between certain and uncertain outcomes; see Kahneman and Tversky (1979). Other shortcomings are that the multiplicative adjustment factor reflects the combined effect of risk handling and nonpecuniary benefits and that several of our theoretical derivations as well as empirical conclusions hinge on the assumption that the skills are Fréchet-distributed. Though the Fréchet assumption is compatible with empirical observations of the income distributions of self-employed and wage employed, we cannot rule out that this also holds for other distributions that make balanced skills sufficiently more common at low than at high skill levels. To test other conceivable distributions, however, will probably require heavy numerical calculations rather than our analytical derivations. Yet, we think it is warranted to further analyze the theoretical and empirical implications from applying different skill distributions in the specification of the Lazear model.
We think that our modification of Lazear’s model can be extended in several directions. One improvement would be to allow correlation between the skills and another one to investigate the possibility of estimating the market value of entrepreneurial talent as a function of individual characteristics like age, gender, and their labor market region. Since the income returns to entrepreneurship and to wage employment should ensure that the supplies of entrepreneurs and specialists correspond to the demand, a more ambitious theoretical extension would be to develop a labor market equilibrium model that allows for simultaneous estimation of the market value of entrepreneurial talent, the utility adjustment factor, and the parameters of the skill profile distribution.Footnote 20 It should be added that our specification of the skill distribution opens up for analyzing measures of cognitive abilities in a new way. The empirical tests of Lazear’s model of the kind reported by Aldén et al. (2017) and Hartog et al. (2010), for instance, can be complemented with estimations that increase our knowledge of the skill distribution.
Notes
Parker (2018) provides an overview of studies investigating the importance of nonpecuniary attributes of entrepreneurship.
Block et al. (2015) report support for the hypothesis that the willingness to take risks is positively correlated with the nonmonetary benefits.
The Fréchet distribution is one of three univariate extreme value distributions that also include the Gumbel and Weibull distributions; see Kotz and Nadarajah (2000), for instance.
The possibility to pursue one’s own ideas, broader skill utilization, and richer work content are examples of nonpecuniary benefits. Aspects of this kind are sometimes interpreted in terms of procedural utility; see Frey et al. (2004), for instance.
A natural extension of this approach would be to treat the market value of entrepreneurial talent λ and the utility adjustment factor s as stochastic. This is beyond the scope of the present study, however.
Benz (2009) assumes that UE = (λ + η) · min {X1, X2}, where the deterministic factor η > 1 − λ accounts for nonmonetary benefits. Our approach is mathematically equivalent to his, since λ + η = s · λ for s = η/λ + 1.
These counterfactual income returns measures were introduced in Hårsman et al. (2018) for a utility adjustment factor s = 1. Alternative measures could be defined as \( {\overset{\sim }{\mu}}_{\mathrm{E}}=E\left[{Y}_{\mathrm{E}}/{Z}_{\mathrm{E}}\right] \) and \( {\overset{\sim }{\mu}}_{\mathrm{W}}=E\left[{Y}_{\mathrm{W}}/{Z}_{\mathrm{W}}\right] \). For Fréchet-distributed skills, the differences between the two kinds of measures are small. In addition, the proposed measures μE and μW are easier to apply mathematically.
A positive random variable is Fréchet(β, v)-distributed with shape parameter β > 0 and scale parameter v > 0, if its c.d.f. is \( F(x)={e}^{-{\left(v/x\right)}^{\beta }},x>0 \). For the expected value to exist, it is required that β > 1, in which case it is v · Γ(1 − 1/β), where the gamma function is defined by \( \varGamma (x)=\underset{0}{\overset{\infty }{\int }}{t}^{x-1}{e}^{-t} dt \) for x > 0. Some basic properties of the Fréchet distribution are stated in Appendix 1. These properties form the basis for its mathematical tractability.
One may introduce positive statistical dependence between the skill variables X1and X2 as shown in footnote 21. The probability of entrepreneurship then goes to one, as these variables approach perfect correlation; see footnote 22.
With Weibull-distributed skills, it is possible to derive closed-form expressions for the income distributions for entrepreneurs and wage employees as well as their expected incomes. Preliminary analysis for s = 1 indicates that the expected income of entrepreneurs is smaller or larger than that of wage employees depending on whether the market value of entrepreneurial talent λ is smaller or larger than some critical value \( \overline{\lambda} \). This critical value decreases as the shape parameter β of the Weibull distribution increases.
Jovanovic (2019), for instance, uses the ratio of average incomes to analyze the entrepreneurship premium.
All self-employed are owners of a registered incorporated or unincorporated business.
The upper part of the table compares all self-employed with all employed and the lower part the subset of self-employed hiring at least one person with all employed except the own account self-employed.
See Appendix 1 for a description of the calibration procedure.
Appendix 2, Table 4, provides additional information about the income differences between architects and electrical engineers.
The entrepreneurship probability in Proposition 2 implies \( \lambda =\frac{1}{s}\cdotp {\left(\frac{1+{p}_{\mathrm{E}}}{1-{p}_{\mathrm{E}}}\right)}^{1/\beta } \).
Hårsman et al. (2018) provide an example for the case s = 1.
In a model of international trade, Eaton and Kortum (2002) use an estimation approach of this kind.
For proofs, see Corollary 3 in Mattsson et al. (2014), for example. Our present results can be extended to allow for positive statistical correlation by letting the joint c.d.f. of X = (X1, X2) be \( F\left({x}_1,{x}_2\right)={e}^{-{\left[{\left({v}_1/{x}_1\right)}^{\beta /\psi }+{\left({v}_2/{x}_2\right)}^{\beta /\psi}\right]}^{\psi }} \), for ψ ∈ (0, 1]. As shown by Galichon (2019), the correlation coefficient ρ(ψ) exists for β > 2 and is then \( \rho \left(\psi \right)=\frac{\varGamma^2\left(1-\psi /\beta \right)\cdotp \varGamma \left(1-2/\beta \right)/\varGamma \left(1-2\psi /\beta \right)-{\varGamma}^2\left(1-1/\beta \right)}{\varGamma \left(1-2/\beta \right)-{\varGamma}^2\left(1-1/\beta \right)} \). Specifically, ρ(ψ) → 1 as ψ → 0, and ρ (1) = 0.
Assuming that the skill variables X1 and X2 are correlated according to the specification in the previous footnote, we have \( {P}_E=\left[{\left( s\lambda \right)}^{\beta /\psi }-1\right]/\left[{\left( s\lambda \right)}^{\beta /\psi }+1\right] \) for ψ ∈ (0, 1). Hence, the probability of entrepreneurship approaches one as the correlation coefficient approaches one, that is as ψ → 0.
The authors thank Jörgen Weibull for suggesting this proof.
The calibrated parameters remind of regression estimates. The sum of the squared differences between observed and computed income percentiles is minimized while keeping the average of the computed incomes equal to the average of the observed incomes.
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Acknowledgments
We are very grateful to Vardan Hovsepyan for his able assistance with data handling, parameter computations, and figure production. We also thank Alfred Galichon for deriving the Fréchet correlation coefficient and two anonymous reviewers and Pontus Braunerhjelm, Börje Johansson, and Jörgen Weibull for valuable insights, comments, and suggestions.
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Appendices
Appendix 1. Additional propositions, proofs, and parameter calibration
1.1 Some basic properties of the Fréchet distribution
A continuous random variable X > 0 is Fréchet(β, v)-distributed with shape parameter β > 0 and scale parameter v > 0, if its c.d.f. is
The expected value is \( \mathit{\mathsf{E}}\left[X\right]=v\cdotp \varGamma \left(1-1/\beta \right) \), provided that β > 1,which is henceforth assumed, and the variance is \( \mathsf{Var}\left[X\right]={v}^2\cdotp \left[\varGamma \left(1-2/\beta \right)-{\varGamma}^2\left(1-1/\beta \right)\right] \), provided that β > 2. The expected value \( \mathit{\mathsf{E}}\left[X\right]\to v \) and the variance \( \mathsf{Var}\left[X\right]\to 0\ \mathsf{as}\ \beta \to \infty \). If X is Fréchet(β, v), then τX is Fréchet (β, τv) for any scalar τ > 0.
The following properties of the Fréchet distribution will be repeatedly used in the proofs.Footnote 21 If X1 and X2 are statistically independent Fréchet (β, v1) and Fréchet (β, v2), respectively, then
and
with
1.2 Proof of Proposition 2
Proof
The probability of a randomly drawn individual becoming a wage employee is pW = Pr [X1 > sλX2] + Pr [X2 > sλX1]. Since sλX2 and sλX1 are both Fréchet(β, sλv) and X1, and X2 are statistically independent, it follows from Eq. (1) that
and henceFootnote 22
1.3 Further claim of Proposition 3 and proof
In addition to the claims in Proposition 3, we also prove that the c.d.f. of entrepreneurial and wage employment incomes are, respectively,
and
Proof
Note that since X1 and X2 are independent and identically distributed, all relationships are symmetric with respect to the two skills. Hence, it is no restriction to let the income of a wage employee be YW = (X1|X1 > sλX2) which by (2) is Fréchet\( \left(\beta, \hat{v}\right) \) with \( \hat{v}={\left({v}^{\beta }+{\left( s\lambda v\right)}^{\beta}\right)}^{1/\beta }={\left(1+{\left( s\lambda \right)}^{\beta}\right)}^{1/\beta}\cdotp v \) from which its c.d.f. \( {F}_{Y_W} \) and expected value E[YW] immediately follow.
Similarly, it is no restriction to let the income of an entrepreneur be YE = (λX1|sλX1 > X2 > X1). Define the random variables V = (λX1|sλX1 > X2) = (λX1|λX1 > s−1X2) and R = (λX1|X1 > X2) = (λX1|λX1 > λX2), which by (2) are \( Fr\overset{\hbox{'}}{e} chet\left(\beta, {\left({\lambda}^{\beta }+{s}^{-\beta}\right)}^{1/\beta}\cdotp v\right) \) and \( Fr\overset{\hbox{'}}{e} chet\left(\beta, {2}^{1/\beta}\lambda \cdotp v\right) \), respectively. Evidently,
where FV, \( {F}_{Y_E} \), and FR are the c.d.f.s of V, YE, and R, respectively. By (1)
and by (3)
Hence
with \( {F}_V(x)={e}^{-\left({\lambda}^{\beta }+{s}^{-\beta}\right)\cdotp {\left(v/x\right)}^{\beta }} \) and \( {F}_R(x)={e}^{-2{\lambda}^{\beta}\cdotp {\left(v/x\right)}^{\beta }} \).
From (4) it follows that
with E[V] = s−1(1 + (sλ)β)1/β · v · Γ(1 − 1/β) and E[R] = 21/βλ · v · Γ(1 − 1/β).
1.4 Proof of Proposition 4
Proof
Remember that s · λ > 1 by assumption. The statement of the proposition, rewritten as \( \mathit{\mathsf{E}}\left[{Y}_{\mathrm{W}}\right]>s\cdotp \mathsf{E}\left[{Y}_E\right] \), follows if the equality
is satisfied for some α ∈ (0, 1) and Q > E[YW], since E[YW] ≤ s · E[YE] would then lead to a contradiction. Given the expressions for E[YW] and E[YE] from Proposition 3, the equality (5) is easily verified for \( \alpha =\frac{{\left( s\lambda \right)}^{\beta }-1}{2{\left( s\lambda \right)}^{\beta }}\in \left(0,1\right) \) and Q = 21/βs · λ · v · Γ(1 − 1/β) > E[YW].
1.5 Proof of Proposition 5
Proof
By definition,\( b=1-\mathit{\mathsf{E}}\left[{\mathit{\mathsf{Z}}}_{\mathrm{E}}\right]/\mathit{\mathsf{E}}\left[{Y}_{\mathrm{W}}\right] \). Let φ = (sλ)β. By Proposition 3 and the Proof of Proposition 6 below, we have \( b=1-\frac{2^{1/\beta }{\left(1+\varphi \right)}^{1-1/\beta }-2}{\varphi -1} \), and, since φ = (1 + pE)/(1 − pE) by Proposition 2, b as a function of pE becomes
Evidently b = 1 for pE = 1 and by l’Hôpital’s rule b goes to 1/β as pE decreases to 0. We want to show that b as a function of pE is strictly increasing in the interval (0, 1).Footnote 23 It is somewhat simpler to prove the equivalent statement that b as a function of pW = 1 − pE is strictly decreasing in the interval (0, 1). Then
with the derivative
Consider the numerator
and note that c(1) = 0. Hence, b ′ (pW) < 0 for all pW ∈ (0, 1) if c ′ (pW) > 0 for all pW ∈ (0, 1). Recalling that β > 1, this is indeed the case since
Finally, it is easily verified that b is strictly decreasing in β > 1.
1.6 Formulation and proof of Proposition 6
Proposition 6
Consider Lazear’s model with the same assumptions as in Proposition 2.
The counterfactual income returns to entrepreneurship are then
and the counterfactual income returns to wage employment are
Proof
Since X1 and X2 are independent and identically distributed, it is no restriction to let ZE = (X2|sλX1 > X2 > X1). Define the random variables V = (X2|X2 > sλX1) and R = (X2|X2 > X1), which by (2) are Fréchet \( \left(\beta, {\left(1+{\left( s\lambda \right)}^{\beta}\right)}^{1/\beta}\cdotp v\right) \) and Fréchet \( \left(\beta, {2}^{1/\beta}\cdotp v\right) \), respectively, and hence E[V] = (1 + (sλ)β)1/β · v · Γ(1 − 1/β) and E[R] = 21/β · v · Γ(1 − 1/β), respectively. Evidently,
By (1)
and by (3)
Hence
which together with the expression for E[YE] from Proposition 3 establishes the required expression for μE.
Similarly, it is no restriction to let ZW = (λX1|X2 > sλX1). Define the random variable V = (λX1|sλX1 > X2) = (λX1|λX1 > s−1X2), which by (2) is \( Fr\overset{\hbox{'}}{e} chet\left(\beta, {\left({\lambda}^{\beta }+{s}^{-\beta}\right)}^{1/\beta}\cdotp v\right) \), and hence E[V] = (λβ + s−β)1/β · v · Γ(1 − 1/β). Evidently,
By (1)
Since \( \mathit{\mathsf{E}}\left[\lambda {X}_1\right]=\lambda \cdotp v\cdotp \varGamma \left(1-1/\beta \right) \) we get
which together with the expression for E[YW] from Proposition 3 establishes the required expression for μW.
1.7 Applied procedure for parameter calibration
To apply the modified Lazear model as specified in Proposition 2, four parameters need to be calibrated against empirical data: s, λ, β, and v. It is assumed that data are available for the relative frequency of entrepreneurs (self-employed) \( {\overline{p}}_{\mathrm{E}} \) as well as for the p percentiles of the income distributions \( {\overline{Y}}_{\mathrm{p}}^{\mathrm{E}} \) and \( {\overline{Y}}_{\mathrm{p}}^{\mathrm{W}} \), p ∈ {0.05, 0.25, 0.5, 0.75, 0.95}, and the average incomes \( {\overline{Y}}_{\mathrm{E}} \) and \( {\overline{Y}}_{\mathrm{W}} \) of entrepreneurs and wage employees, respectively. We will use \( {\overline{p}}_{\mathrm{E}} \) as our observation for pE, and \( {\overline{Y}}_{\mathrm{E}} \) and \( {\overline{Y}}_{\mathrm{W}} \) as our observations for \( \mathit{\mathsf{E}}\left[{Y}_{\mathrm{E}}\right] \) and \( \mathit{\mathsf{E}}\left[{Y}_{\mathrm{W}}\right] \), respectively.
Let φ ≡ (sλ)β. By Proposition 2
and by Proposition 3
The last equation can be solved for β as a function of \( s\in \left(0,{\overline{Y}}_W/{\overline{Y}}_E\right) \)
and hence λ as a function of s is
and by Proposition 3, v as a function of s is
Next, the p percentiles \( {Y}_{\mathrm{p}}^{\mathrm{E}}(s) \) and \( {Y}_{\mathrm{p}}^W(s) \) of the income distributions \( {F}_{Y_E} \) and \( {F}_{Y_W} \), as specified in the proof of Proposition 3 in Appendix 1, are derived from the equations \( {F}_{Y_E}\left({Y}_p^E(s)\right)=p \) and \( {F}_{Y_W}\left({Y}_p^W(s)\right)=p \), given the parameters \( \beta (s),\lambda (s),v(s),\mathrm{and}\ s \), for p ∈ {0.05, 0.25, 0.5, 0.75, 0.95}. The equations for the percentiles for wage employees can be solved analytically
while the equations for the percentiles for entrepreneurs \( {Y}_p^E(s) \) have to be solved numerically.
Finally, s is determined so as to minimize the sum of the quadratic deviations between the p percentiles of the observed and computed income distributions of entrepreneurs and wage employeesFootnote 24:
Appendix 2. Additional data
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Hårsman, B., Mattsson, LG. Analyzing the returns to entrepreneurship by a modified Lazear model. Small Bus Econ 57, 1875–1892 (2021). https://doi.org/10.1007/s11187-020-00377-1
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DOI: https://doi.org/10.1007/s11187-020-00377-1
Keywords
- Returns to entrepreneurship
- Occupational choice
- Nonpecuniary benefits
- Self-employment
- Self-selection
- Fréchet distribution
- Uncertainty
- Risk