User-Oriented Objective Prioritization for Meta-Featured Multi-Objective Recommender Systems.

UMAP (Adjunct Publication)(2018)

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摘要
Multi-Objective Recommender Systems (MO-RS) consider several objectives to produce useful recommendations. Besides accuracy, other important quality metrics include novelty and diversity of recommended lists of items. Previous research up to this point focused on naive combinations of objectives. In this paper, we present a new and adaptable strategy for prioritizing objectives focused on usersu0027 preferences. Our proposed strategy is based on meta-features, i.e., characteristics of the input data that are influential in the final recommendation. We conducted a series of experiments on three real-world datasets, from which we show that: (i) the use of meta-features leads to the improvement of the Pareto solution set in the search process; (ii) the strategy is effective at making choices according to the specificities of the usersu0027 preferences; and (iii) our approach outperforms state-of-the-art methods in MO-RS.
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关键词
Recommender System, multi-objective, hybrid filtering
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