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Empirical Economics

, Volume 14, Issue 2, pp 167–192 | Cite as

Statistical analysis of “structural change”: An annotated bibliography

  • P. Hackl
  • A. H. Westlund
Article

Keywords

Structural Change Economic Theory Annotate Bibliography 
These keywords were added by machine and not by the authors. This process is experimental and the keywords may be updated as the learning algorithm improves.

List of Journal Abbreviations

AmerStat

American Statistician

AnlsStat

Annals of Statistics

AnnEcSoMt

Annals of Economic and Social Measurement

AnnMathStat

The Annals of Mathematical Statistics

ApplStat

Applied Statistics

ASAProBuEc

ASA Proceedings of Business and Economic Statistics Section

AstrlJSt

Australian Journal of Statistics

BiomtrcJ

Biometrical Journal

Biomtrcs

Biometrics

Biomtrka

Biometrika

CommStA

Communications in Statistics, Part A — Theory and Methods

DecisnSc

Decision Siences

Econmtca

Econometrica

IEEEAuCn

IEEE Transactions on Automatic Control

IEEEInfo

IEEE Transactions on Information Theory

IntEconR

International Economic Review

IntStRvw

International Statistical Review

JAppProb

Journal of Applied Probability

JASA

Journal of the American Statistical Association

JBES

Journal of Business and Economic Statistics

JEconmtcs

Journal of Econometrics

JIMaAppl

Journal of the Institute of Mathematics and its Applications

JMultiAn

Journal of Multivariate Analysis

JRRS-B

Journal of the Royal Statistical Society, Series B

JStCmpSm

Journal of Statistical Computation and Simulation

JStPlInf

Journal of Statistical Planning and Inference

JTimSrAn

Journal of Time Series Analysis

MaOpfStS

Mathematische Operationsforschung und Statistik, Series Statistics

REcon&St

Review of Economics and Statistics

ScandJSt

Scandinavian Journal of Statistics

SqtlAnly

Sequential Analysis

Technmcs

Technometrics

ThProbAp

Theory of Probability and its Applications

Zeit Wahr

Zeitschrift für Wahrscheinlichkeitstheorie und Verwandte Gebiete

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Copyright information

© Physica-Verlag 1989

Authors and Affiliations

  • P. Hackl
    • 1
    • 2
  • A. H. Westlund
    • 3
  1. 1.Department of StatisticsUniversity of EconomicsViennaAustria
  2. 2.Department of Statistics and Actuarial ScienceThe University of IowaIowa CityUSA
  3. 3.Department of Economic StatisticsStockholm School of EconomicsStockholmSweden

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