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Personalized recommendation based on heat bidirectional transfer

机译:基于热双向传递的个性化推荐

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摘要

Personalized recommendation has become an increasing popular research topic, which aims to find future likes and interests based on users' past preferences. Traditional recommendation algorithms pay more attention to forecast accuracy by calculating first-order relevance, while ignore the importance of diversity and novelty that provide comfortable experiences for customers. There are some levels of contradictions between these three metrics, so an algorithm based on bidirectional transfer is proposed in this paper to solve this dilemma. In this paper, we agree that an object that is associated with history records or has been purchased by similar users should be introduced to the specified user and recommendation approach based on heat bidirectional transfer is proposed. Compared with the state-of-the-art approaches based on bipartite network, experiments on two benchmark data sets, Movielens and Netflix, demonstrate that our algorithm has better performance on accuracy, diversity and novelty. Moreover, this method does better in exploiting long-tail commodities and cold-start problem. (C) 2015 Elsevier B.V. All rights reserved.
机译:个性化推荐已成为越来越流行的研究主题,其目的是根据用户过去的偏好来找到未来的喜好和兴趣。传统的推荐算法通过计算一阶相关性来更加注重预测准确性,而忽略了为客户提供舒适体验的多样性和新颖性的重要性。这三个指标之间存在一定程度的矛盾,因此本文提出了一种基于双向转移的算法来解决这一难题。在本文中,我们同意将与历史记录相关联或已由相似用户购买的对象引入特定用户,并提出基于热双向传递的推荐方法。与基于双向网络的最新方法相比,在两个基准数据集(Movielens和Netflix)上进行的实验表明,我们的算法在准确性,多样性和新颖性方面均具有更好的性能。而且,这种方法在开发长尾商品和冷启动问题方面效果更好。 (C)2015 Elsevier B.V.保留所有权利。

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