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Solutions to cold-start problems for latent factor models

机译:潜在因子模型的冷启动问题解决方案

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In the data age, the “information overload” problem severely impacts the precise of people to choose what they prefer. However, recommendation systems are able to provide people related information from huge amounts of data, and effectively solve the “information overload” problem. Currently, Latent Factor Model(LFM) has become dominant in the recommendation field. For example, Matrix Factorization performs excellently on rating prediction problem. By optimizing a ranking criterion, LFM also has an outstanding performance on top-N recommendation problem, such as Bayesian Personalized Ranking. But LFM can't solve the cold-start problem. Aiming at solving the cold-start problem, we obtain the mapping concept to construct a hybrid model, in which we map new entities' (e.g. user or item) attributes to their latent features vector. Experiments on the cold-start problem show that the hybrid model provides much better recommendation precision.
机译:在数据时代,“信息超载”问题严重影响着人们选择自己喜欢的东西的精确度。但是,推荐系统能够从大量数据中提供与人相关的信息,并有效解决“信息超载”问题。目前,潜在因素模型(LFM)在推荐领域已占主导地位。例如,矩阵分解在评分预测问题上表现出色。通过优化排名标准,LFM在诸如贝叶斯个性化排名之类的前N个推荐问题上也具有出色的表现。但是LFM无法解决冷启动问题。为了解决冷启动问题,我们获得了映射概念以构建混合模型,其中我们将新实体的属性(例如用户或项目)映射到它们的潜在特征向量。对冷启动问题的实验表明,混合模型提供了更好的推荐精度。

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