Premium
Improving operations planning with learning curves: overcoming the pitfalls of ‘messy’ shop floor data
Author(s) -
Smunt Timothy L,
Watts Charles A
Publication year - 2003
Publication title -
journal of operations management
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 3.649
H-Index - 191
eISSN - 1873-1317
pISSN - 0272-6963
DOI - 10.1016/s0272-6963(02)00088-8
Subject(s) - learning curve , computer science , variance (accounting) , product (mathematics) , econometrics , statistics , machine learning , mathematics , economics , accounting , operating system , geometry
While most of the previous research on learning and experience curves examines cost improvements at the product level, we investigate the use of learning curve analysis at the detailed component part production level. Using extensive shop floor data from a medium‐sized commercial firm, we discovered that the ‘messy’ data (i.e. high level of data variance) at the detailed levels often lead to reduced decision maker confidence in the estimates of the learning rates. However, we also found that by applying simple aggregation methods, we could better determine the accuracy of the predicted learning curve rates. Increased confidence in the learning curve estimates is made possible by comparison of regression estimates made at the detailed data level to those made at various aggregated data levels. Based upon our analysis of the empirical data, we are able to provide insights into the practical use of learning curve analysis and associated data aggregation with ‘messy’ shop floor data.