Abstract
Charles Babbage, one of the inventors of mechanical engines capable of calculation, commented (Babbage 1864): “On two occasions I have been asked, – ‘Pray, Mr. Babbage, if you put into the machine wrong figures, will the right answers come out?’ … I am not able rightly to apprehend the kind of confusion of ideas that could provoke such a question.” Roughly 100 years later in the age of electronic engines capable of calculation, an IBM instructor in New York named George Fuechsel captured this idea more succinctly when he used “garbage in, garbage out” as a training mantra.
Access this chapter
Tax calculation will be finalised at checkout
Purchases are for personal use only
References
Asmundsson J, Rardin RL, Uzsoy R (2006) Tractable non-linear production planning models for semiconductor wafer fabrication facilities. IEEE Trans Semicond Manufact 19(1):95–111
Babbage C (1864) Passages from the Life of a Philosopher. Longman and Co., pp 67
Backus P, Janakiram M, Mowzoon S, Runger G, Bhargava A (2006) Factory cycle-time prediction with a data-mining approach. IEEE Trans Semicond Manufact 19(2):252–258
Ballou D, Pazer H (1995) Designing information systems to optimize accuracy-timeliness trade-off. Inf Syst Res 6(1):51–72
Ballou D, Tayi GK (1999) Enhancing data quality in data warehouse environments. Commun ACM 42(1):73–78
Ballou D, Wang R, Pazer H, Tayi GK (1998) Modeling information manufacturing systems to determine information product quality. Manage Sci 44(4):462–484
Batini C, Scannapieco M (2006) Data quality: concepts, methodologies and techniques (data-centric systems and applications). Springer-Verlag New York, Inc., Secaucus, NJ. ISBN 978-3450331728
Brackett MH (1994) Data sharing using a common data architecture. Wiley. ISBN 978-0471309932
Brackett MH (2000) Data resource quality: turning bad habits into good practices, Addison-Wesley. ISBN 978-0201713060
Chengalur-Smith IN, Ballou D, Pazer H (1999) The impact of data quality information on decision making: an exploratory analysis. IEEE Trans Knowl Data Eng 11(6):853–864
Dalvi N, Suciu D (2007) Management of probabilistic data: foundations and challenges. In: Proceedings of 26th ACM SIGMOD-SIGACT-SIGART Symposium on Principles of Database Systems (Beijing), June 11–13, 2007, pp 1–12
Dasu T, Johnson T (2003) Exploratory data mining and data cleaning. John Wiley & Sons, Inc., New York, NY. ISBN 978-0471268512
English LP (1999) Improving data warehouse and business information quality: methods for reducing costs and increasing profits. Wiley. ISBN 978-0471253839
Fan W, Lu H, Madnick SE, Cheung D (2001) Discovering and reconciling value conflicts for numerical data integration. Inform Syst 26(8):635–656
Jarke M, Jeusfeld MA, Quix C, Vassiliadis P, Architecture and quality in data warehouse: an extended repository approach. Inform Syst 24(3):229–253
Jung W, Olfman L, Ryan T, Park Y (2005) An experimental study of the effects of contextual data quality and task complexity on decision performance. In: Proceedings of IEEE International Conference on Information Reuse and Integration, pp 149–154
Kahn B, Strong D, Wang R (2002) Information quality benchmarks: product and service performance. Commun ACM 45(4):184–192
Lee YW, Pipino L, Strong D, Wang R (2004) Process embedded data integrity. J Database Manage 15(1):87–103
Lee YW, Strong DM, Kahn BK, Wang RY (2002) AIMQ: a methodology for information quality assessment. Inform Manage 40(2):133–146
Loshin D (2008) Master data management. Morgan Kaufmann. ISBN 978-0123742254
Madnick S, Zhu H (2006) Improving data quality through effective use of data semantics. Data Knowl Eng 59(2):460–475
Nurani RK, Strojwas AJ, Maly WP, Ouyang C, Shindo W, Akella R, McIntyre MG, Derrett J (1998) In-line yield prediction methodologies using patterned wafer inspection information. IEEE Trans Semicond Manufact 11(1):40–47
Petrovskiy MI (2003) Outlier detection algorithms in data mining systems. Program Comput Soft 29(4):228–237
Pierce EM (2004) Assessing data quality with control matrices. Commun ACM 47(2):82–86
Pipino LL, Lee YW, Wang RY (2002) Data quality assessment. Commun ACM 45(4):211–218
Raghunathan S (1999) Impact of information quality and decision-maker quality on decision quality: a theoretical model and simulation analysis. Decis Support Syst 26(4):275–286
Redman TC (1998) The impact of poor data quality on the typical enterprise. Commun ACM 41(2):79–82
Shankaranarayan G, Ziad M, Wang RY (2003) Managing data quality in dynamic decision environment: an information product approach. J Database Manag 14(4):14–32
Wang RY, Lee Y, Pipino L, Strong D (1998) Managing your information as a product. Sloan Manag Rev Summer:95–106
Wang RY, Reddy MP, Kon HB (1995) Toward quality data: an attribute-based approach. Decis Support Syst 13(3–4):349–372
Wang RY, Strong DM (1996) Beyond accuracy: what data quality means to data consumers. J Manage Inform Syst 12(4):5–33
Wang RY, Ziad M, Lee YW (2001) Data quality. Springer. ISBN 978-0792372158
Author information
Authors and Affiliations
Corresponding author
Editor information
Editors and Affiliations
Rights and permissions
Copyright information
© 2011 Springer Science+Business Media, LLC
About this chapter
Cite this chapter
Dionne, L., Kempf, K.G. (2011). Data in Production and Supply Chain Planning. In: Kempf, K., Keskinocak, P., Uzsoy, R. (eds) Planning Production and Inventories in the Extended Enterprise. International Series in Operations Research & Management Science, vol 151. Springer, New York, NY. https://doi.org/10.1007/978-1-4419-6485-4_8
Download citation
DOI: https://doi.org/10.1007/978-1-4419-6485-4_8
Published:
Publisher Name: Springer, New York, NY
Print ISBN: 978-1-4419-6484-7
Online ISBN: 978-1-4419-6485-4
eBook Packages: Business and EconomicsBusiness and Management (R0)