ES-DoS: Exhaustive search and density-of-states estimation as a general framework for sparse variable selection

Yasuhiko Igarashi, Hiroko Ichikawa, Yoshinori Nakanishi-Ohno, Hikaru Takenaka, Daiki Kawabata, Satoshi Eifuku, Ryoi Tamura, Kenji Nagata, Masato Okada

Research output: Contribution to journalConference articlepeer-review

13 Citations (Scopus)

Abstract

In this paper, we propose an exhaustive search with density-of-states estimation (ES-DoS) method for sparse variable selection in a wide range of learning tasks with various learning machines. We applied this ES-DoS method to synthetic and real data as an example of the regression and classification problems and discuss the results in this paper. The most important aspect of our ES-DoS method is to extract not only the optimal solution but also density of states (DoS) in terms of machine learning and data-driven science. Mapping the solutions of various approximate methods or scientists' hypotheses onto the DoS, we can comprehensively discuss and evaluate these methods and hypotheses. Our ES-DoS method opens the way for sparse variable selection in various fields, which promotes the high-dimensional data-driven science.

Original languageEnglish
Article number012001
JournalJournal of Physics: Conference Series
Volume1036
Issue number1
DOIs
Publication statusPublished - 27 Jun 2018
EventInternational Meeting on High-Dimensional Data-Driven Science, HD3 2017 - Kyoto, Japan
Duration: 10 Sept 201713 Sept 2017

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