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Modeling Side Information in Preference Relation based Restricted Boltzmann Machine for recommender systems

机译:基于偏好关系基于限制的Boltzmann Machine的建模侧信息

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A majority of the collaborative filtering techniques exploit user-item rating information to generate recommendations of unseen items for a user. However, a user's preference also depends on some extra information like item features, user attributes and others, which is known as side information. Further, according to recent studies, using preference relation as an alternative to absolute ratings often produces quality recommendations. This study proposes a collaborative filtering technique using Preference Relation based Restricted Boltzmann Machine for recommender system. The proposed method takes the preference relations of items as input and generates a ranking of items for any user. Using Conditional Restricted Boltzmann Machine, the side information of items along with preference relations are integrated into the model. Besides side information, the proposed method is also able to capture second order and higher order user-item interactions. Experimental verification of the proposed model is done using three datasets: MovieLens-1M, MovieLens-20M, and Book-Crossing, which are the most widely used datasets for testing recommender systems. Results obtained at different positions using standard ranking measures like, NDCG and MAP, indicate that the performance of the proposed method is better compared to related state-of-the-art collaborative filtering models for Top-N recommendation task. (C) 2019 Elsevier Inc. All rights reserved.
机译:大多数协同过滤技术利用用户项评级信息来为用户生成未经看法的建议。然而,用户的偏好也取决于物品特征,用户属性和其他物品的一些额外信息,称为侧面信息。此外,根据最近的研究,使用优先关系作为绝对额定值的替代方案通常会产生质量推荐。本研究提出了使用基于偏好关系的受限Boltzmann机器进行了用于推荐系统的协同过滤技术。该方法采用物品的偏好关系作为输入,并为任何用户生成项目的排名。使用条件限制的Boltzmann机器,项目的侧面信息以及偏好关系集成到模型中。除了侧面信息外,所提出的方法还能够捕获二阶和更高阶的用户项交互。所提出的模型的实验验证是使用三个数据集完成的:Movielens-1M,Movielens-20M和书籍交叉,这是测试推荐系统的最广泛使用的数据集。使用标准排名措施的不同位置获得的结果,如NDCG和MAP,表明该方法的性能与Top-N推荐任务相关的最先进的协同过滤模型更好。 (c)2019 Elsevier Inc.保留所有权利。

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