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JCP
2006

Efficient Formulations for 1-SVM and their Application to Recommendation Tasks

13 years 11 months ago
Efficient Formulations for 1-SVM and their Application to Recommendation Tasks
The present paper proposes new approaches for recommendation tasks based on one-class support vector machines (1-SVMs) with graph kernels generated from a Laplacian matrix. We introduce new formulations for the 1-SVM that can manipulate graph kernels quite efficiently. We demonstrate that the proposed formulations fully utilize the sparse structure of the Laplacian matrix, which enables the proposed approaches to be applied to recommendation tasks having a large number of customers and products in practical computational times. Results of various numerical experiments demonstrating the high performance of the proposed approaches are presented.
Yasutoshi Yajima, Tien-Fang Kuo
Added 13 Dec 2010
Updated 13 Dec 2010
Type Journal
Year 2006
Where JCP
Authors Yasutoshi Yajima, Tien-Fang Kuo
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