A regression tree approach using mathematical programming

作者:Yang Lingjian; Liu Songsong; Tsoka Sophia; Papageorgiou Lazaros G*
来源:Expert Systems with Applications, 2017, 78: 347-357.
DOI:10.1016/j.eswa.2017.02.013

摘要

Regression analysis is a machine learning approach that aims to accurately predict the value of continuous output variables from certain independent input variables, via automatic estimation of their latent relationship from data. Tree-based regression models are popular in literature due to their flexibility to model higher order non-linearity and great interpretability. Conventionally, regression tree models are trained in a two-stage procedure, i.e. recursive binary partitioning is employed to produce a tree structure, followed by a pruning process of removing insignificant leaves, with the possibility of assigning multivariate functions to terminal leaves to improve generalisation. This work introduces a novel methodology of node partitioning which, in a single optimisation model, simultaneously performs the two tasks of identifying the break-point of a binary split and assignment of multivariate functions to either leaf, thus leading to an efficient regression tree model. Using six real world benchmark problems, we demonstrate that the proposed method consistently outperforms a number of state-of-the-art regression tree models and methods based on other techniques, with an average improvement of 7-60% on the mean absolute errors (MAE) of the predictions.

  • 出版日期2017-7-15