Rebuilding sample distributions for small dataset learning
作者:
Highlights:
• Most algorithms often output unsatisfying predictions when working with small data.
• A data-driven method is proposed for enhancing the data structures of small data.
• A set of new functions are derived to estimate the domains of small data.
• The method successfully improves the predictions of algorithms in two real cases.
摘要
Over the past few decades, a few learning algorithms have been proposed to extract knowledge from data. The majority of these algorithms have been developed with the assumption that training sets can denote populations. When the training sets contain only a few properties of their populations, the algorithms may extract minimal and/or biased knowledge for decision makers. This study develops a systematic procedure based on fuzzy theories to create new training sets by rebuilding the possible sample distributions, where the procedure contains new functions that estimate domains and a sample generating method. In this study, two real cases of a leading company in the thin film transistor liquid crystal display (TFT-LCD) industry are examined. Two learning algorithms—a back-propagation neural network and support vector regression—are employed for modeling, and two sample generation approaches—bootstrap aggregating (bagging) and the synthetic minority over-sampling technique (SMOTE)—are employed to compare the accuracy of the models. The results indicate that the proposed method outperforms bagging and the SMOTE with the greatest amount of statistical support.
论文关键词:Small data,Virtual sample,Data preprocessing
论文评审过程:Received 31 March 2017, Revised 28 October 2017, Accepted 29 October 2017, Available online 3 November 2017, Version of Record 12 December 2017.
论文官网地址:https://doi.org/10.1016/j.dss.2017.10.013