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Random Pairwise Shapelets Forest

Authors :
Shi, Mohan
Wang, Zhihai
Yuan, Jodong
Liu, Haiyang
Publication Year :
2019
Publisher :
arXiv, 2019.

Abstract

Shapelet is a discriminative subsequence of time series. An advanced shapelet-based method is to embed shapelet into accurate and fast random forest. However, it shows several limitations. First, random shapelet forest requires a large training cost for split threshold searching. Second, a single shapelet provides limited information for only one branch of the decision tree, resulting in insufficient accuracy and interpretability. Third, randomized ensemble causes interpretability declining. For that, this paper presents Random Pairwise Shapelets Forest (RPSF). RPSF combines a pair of shapelets from different classes to construct random forest. It omits threshold searching to be more efficient, includes more information for each node of the forest to be more effective. Moreover, a discriminability metric, Decomposed Mean Decrease Impurity (DMDI), is proposed to identify influential region for every class. Extensive experiments show RPSF improves the accuracy and training speed of shapelet-based forest. Case studies demonstrate the interpretability of our method.<br />Comment: There is some misunderstanding between authors when this manuscript is submitted. Some of authors disagree to submit this manuscript. So we decide to withdraw the article

Details

Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....5b32f5d12bb3462220ec4931f440a54c
Full Text :
https://doi.org/10.48550/arxiv.1903.07799