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  1. 研究報告
  2. オーディオビジュアル複合情報処理(AVM)
  3. 2012
  4. 2012-AVM-077

Utilizing Users' Watching Sequences and TV-programs' Metadata for Personalized TV-program Recommendation

https://ipsj.ixsq.nii.ac.jp/records/82884
https://ipsj.ixsq.nii.ac.jp/records/82884
37524eb4-31d2-4b41-9d4c-3f7d228f3e8c
名前 / ファイル ライセンス アクション
IPSJ-AVM12077011.pdf IPSJ-AVM12077011.pdf (683.0 kB)
Copyright (c) 2012 by the Information Processing Society of Japan
オープンアクセス
Item type SIG Technical Reports(1)
公開日 2012-07-12
タイトル
タイトル Utilizing Users' Watching Sequences and TV-programs' Metadata for Personalized TV-program Recommendation
タイトル
言語 en
タイトル Utilizing Users' Watching Sequences and TV-programs' Metadata for Personalized TV-program Recommendation
言語
言語 eng
資源タイプ
資源タイプ識別子 http://purl.org/coar/resource_type/c_18gh
資源タイプ technical report
著者所属
GITS Waseda University
著者所属
GITS Waseda University
著者所属
GITS Waseda University
著者所属
WOWOW Inc.
著者所属(英)
en
GITS Waseda University
著者所属(英)
en
GITS Waseda University
著者所属(英)
en
GITS Waseda University
著者所属(英)
en
WOWOW Inc.
著者名 DinhQuocHung Pao, Sriprasertsuk Wataru, Kameyama Kenji, Fukuda

× DinhQuocHung Pao, Sriprasertsuk Wataru, Kameyama Kenji, Fukuda

DinhQuocHung
Pao, Sriprasertsuk
Wataru, Kameyama
Kenji, Fukuda

Search repository
著者名(英) Dinh, QuocHung Pao, Sriprasertsuk Wataru, Kameyama Kenji, Fukuda

× Dinh, QuocHung Pao, Sriprasertsuk Wataru, Kameyama Kenji, Fukuda

en Dinh, QuocHung
Pao, Sriprasertsuk
Wataru, Kameyama
Kenji, Fukuda

Search repository
論文抄録
内容記述タイプ Other
内容記述 Recently, the explosive growth of digital video contents including IPTV (Internet Protocol Television) has led to the need of recommendation system to guide users among various and huge amount of entertainment movies, live-TV or related services that are called TV programs in general. Consequently, recommendation system has become a general tool to support user's decision in making choice. Most of the ever-proposed algorithms focus on the prediction accuracy; however, we also have to support the diversity of the recommendation results to surprise users in order to widen their choices that might be just missed if the accuracy is only focused on. In this paper, we introduce a new model-based top-K recommendation algorithm called “watch-flow algorithm” for selecting the next K highest potential TV programs that user might like. Our model utilizes users' watching sequences and TV program metadata to identify the recommending value for each TV program. Furthermore, this model is also capable of giving a personalized recommendation for a specific user based on his/her watching sequence, as well as capable to improve the prediction accuracy and the diversity. We apply our algorithm on a random sample of users' watching sequences in a dataset collected from real users' log. According to the experimental results, our proposed method shows better performance in recommendation than that of ever-proposed algorithms in terms of higher accuracy while keeping the coverage of programs in high rate.
論文抄録(英)
内容記述タイプ Other
内容記述 Recently, the explosive growth of digital video contents including IPTV (Internet Protocol Television) has led to the need of recommendation system to guide users among various and huge amount of entertainment movies, live-TV or related services that are called TV programs in general. Consequently, recommendation system has become a general tool to support user's decision in making choice. Most of the ever-proposed algorithms focus on the prediction accuracy; however, we also have to support the diversity of the recommendation results to surprise users in order to widen their choices that might be just missed if the accuracy is only focused on. In this paper, we introduce a new model-based top-K recommendation algorithm called “watch-flow algorithm” for selecting the next K highest potential TV programs that user might like. Our model utilizes users' watching sequences and TV program metadata to identify the recommending value for each TV program. Furthermore, this model is also capable of giving a personalized recommendation for a specific user based on his/her watching sequence, as well as capable to improve the prediction accuracy and the diversity. We apply our algorithm on a random sample of users' watching sequences in a dataset collected from real users' log. According to the experimental results, our proposed method shows better performance in recommendation than that of ever-proposed algorithms in terms of higher accuracy while keeping the coverage of programs in high rate.
書誌レコードID
収録物識別子タイプ NCID
収録物識別子 AN10438399
書誌情報 研究報告オーディオビジュアル複合情報処理(AVM)

巻 2012-AVM-77, 号 11, p. 1-6, 発行日 2012-07-12
Notice
SIG Technical Reports are nonrefereed and hence may later appear in any journals, conferences, symposia, etc.
出版者
言語 ja
出版者 情報処理学会
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