JSAI Technical Report, Type 2 SIG
Online ISSN : 2436-5556
Personalized Tag Predition Boosted by BaggTaming A Case Study of the Hatena Bookmark
Toshihiro KAMISHIMAMasahiro HAMASAKIShotaro AKAHO
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RESEARCH REPORT / TECHNICAL REPORT FREE ACCESS

2008 Volume 2008 Issue DMSM-A802 Pages 19-

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Abstract

We proposed BaggTaming to boost the prediction accuracy by exploiting additional data whose class labels are less reliable. This algorithm is successfully applied to the personalized tag predicition for the data collected from the delicious. To check whether our method is generally effective, we test the data crawled from the hatena bookmark.

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