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Theory and Algorithms for Shapelet-Based Multiple-Instance Learning.
Suehiro, Daiki; Hatano, Kohei; Takimoto, Eiji; Yamamoto, Shuji; Bannai, Kenichi; Takeda, Akiko.
Afiliação
  • Suehiro D; Department of Advanced Information Technology, Faculty of Information Science and Electrical Engineering, Kyushu University, and RIKEN Center for Advanced Intelligence Project, Nishi-ku, Fukuoka, 8190395, Japan suehiro93@gmail.com.
  • Hatano K; Faculty of Arts and Science, Kyushu University, and RIKEN Center for Advanced Intelligence Project, Nishi-ku, Fukuoka, 8190395, Japan hatano@inf.kyushu-u.ac.jp.
  • Takimoto E; Department of Informatics, Faculty of Information Science and Electrical Engineering, Kyushu University, Nishi-ku, Fukuoka, 8190395, Japan eiji@inf.kyushu-u.ac.jp.
  • Yamamoto S; Department of Mathematics, Keio University, and RIKEN Center for Advanced Intelligence Project, Minatokita-ku, Yokohama, 2238522, Japan yamashu@math.keio.ac.jp.
  • Bannai K; Department of Mathematics, Keio University, and RIKEN Center for Advanced Intelligence Project, Minatokita-ku, Yokohama, 2238522, Japan bannai@math.keio.ac.jp.
  • Takeda A; Department of Creative Informatics, University of Tokyo, and RIKEN Center for Advanced Intelligence Project, Bunkyo-ku, Tokyo, 1138656, Japan takeda@mist.i.u-tokyo.ac.jp.
Neural Comput ; 32(8): 1580-1613, 2020 08.
Article em En | MEDLINE | ID: mdl-32521217
ABSTRACT
We propose a new formulation of multiple-instance learning (MIL), in which a unit of data consists of a set of instances called a bag. The goal is to find a good classifier of bags based on the similarity with a "shapelet" (or pattern), where the similarity of a bag with a shapelet is the maximum similarity of instances in the bag. In previous work, some of the training instances have been chosen as shapelets with no theoretical justification. In our formulation, we use all possible, and thus infinitely many, shapelets, resulting in a richer class of classifiers. We show that the formulation is tractable, that is, it can be reduced through linear programming boosting (LPBoost) to difference of convex (DC) programs of finite (actually polynomial) size. Our theoretical result also gives justification to the heuristics of some previous work. The time complexity of the proposed algorithm highly depends on the size of the set of all instances in the training sample. To apply to the data containing a large number of instances, we also propose a heuristic option of the algorithm without the loss of the theoretical guarantee. Our empirical study demonstrates that our algorithm uniformly works for shapelet learning tasks on time-series classification and various MIL tasks with comparable accuracy to the existing methods. Moreover, we show that the proposed heuristics allow us to achieve the result in reasonable computational time.

Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2020 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2020 Tipo de documento: Article