Session-aware news recommendations using random walks on time-evolving heterogeneous information networks

被引:0
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作者
Panagiotis Symeonidis
Lidija Kirjackaja
Markus Zanker
机构
[1] Free University of Bozen-Bolzano,
关键词
Link prediction; News recommendation; Heterogeneous information networks;
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学科分类号
摘要
Traditional news media Web sites usually provide generic recommendations that are not personalized to the preferences of their users. Typically, news recommendation algorithms mainly rely on the long-term preferences of users and do not adjust their model to the continuous stream of short-lived incoming stories to capture short-term intentions revealed by users’ sessions. In this paper, we therefore study the problem of session-aware recommendations by running random walks on dynamic heterogeneous graphs. Concretely, we construct a heterogeneous information network consisting of users, news articles, news categories, locations and sessions. By using different (1) sliding time window sizes, (2) sub-graphs for model learning, (3) sequential article weighting strategies and (4) more diversified random walks, we perform recommendations in a second step. Our algorithm proposal is evaluated on three real-life data sets, and we demonstrate that our method outperforms state-of-the-art methods by delivering more accurate and diversified recommendations.
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页码:727 / 755
页数:28
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