Learnability and the Vapnik-Chervonenkis dimension
Journal of the ACM (JACM)
A non-parametric learning algorithm for small manufacturing data sets
Expert Systems with Applications: An International Journal
A neural network weight determination model designed uniquely for small data set learning
Expert Systems with Applications: An International Journal
A trend prediction model from very short term data learning
Expert Systems with Applications: An International Journal
Hi-index | 12.05 |
Data mining methods have been successfully used for analyzing production data in manufacturing, and generally the production samples are considered derived from a population from the statistical view. However, the assumption is often challenged, because a production system is normally highly interrelated with a manufacturing environment that is time-dependent. Therefore, instead of treating data as elements from a population following a certain distribution, this research considers that, in the whole course of data collection, a total data set might reasonably be divided into three phases as a more accurate production profile: early phase, mature phase, and oversized phase. In the early phase, the data set is usually small and the information extracted is fragile; in the mature phase, the data collected can provide sufficient and stable knowledge to the management; and in the oversized phase, since the system has substantially changed, many old data are no longer current so that their representability has declined. Based on this concept, the two critical points that segment the total data set into three parts are systematically determined here using neural network technologies; and the manufacturing model can be reformed for advancing its predictive capability.