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Analysing exposure diversity in collaborative recommender systems-Entropy fusion approach

机译:分析采用协同推荐系统 - 熵融合方法的曝光多样性

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Recommender Systems are considered as essential business tools to leverage the potential growth of on-line services. Neighbourhood based collaborative filtering, a successful recommendation approach has mainly focused on improving accuracy of predictions. From user point of view, it is more valuable to obtain novel and diverse recommendations rather than monotonic preferences. Ratings given by a user for different categories of items are considered as a tool to access user exposure diversity which signifies his creative and divergent thinking. On the other hand, pair of items is concordant if highly correlated users agree in rating the items. Based on the user exposure diversity and item concordance, the neighbourhood selection process of item based collaborative recommender systems is refined. Rating predictions are made based on the newly selected neighbours. The performance of the proposed approach is investigated for accuracy and diversity of predictions on Movielens data sets. The results demonstrate that the proposed approach outperforms the state of the art recommendation approaches which address accuracy diversity trade off. Statistical analysis is done to prove the efficiency of the proposed approach. (C) 2019 Elsevier B.V. All rights reserved.
机译:推荐系统被视为基本的业务工具,以利用在线服务的潜在增长。基于社区的协作过滤,成功的推荐方法主要集中在提高预测的准确性。从用户的角度来看,获得新颖和不同的建议而不是单调的偏好更有价值。用户对不同类别项目给出的评级被视为访问用户曝光多样性的工具,这表示他的创造性和发散的思维。另一方面,如果高度相关的用户在评定物品中同意,则一对物品很合作。基于用户曝光多样性和项目的一致性,基于项目的协作推荐系统的邻域选择过程是精制的。评级预测是基于新选择的邻居进行的。提出了拟议方法的表现,以便在Movielens数据集上预测的准确性和多样性。结果表明,拟议的方法优于现有技术推荐方法,这些方法解决了准确性多元化贸易。统计分析是为了证明提出的方法的效率。 (c)2019 Elsevier B.v.保留所有权利。

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