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A Probabilistic Perspective Model for Recommendation Considering Long Tail Effect

机译:考虑长尾效应的推荐概率透视模型

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Behavior-based recommendation algorithm is one class of the most important methods in recommendation systems. A variety of models are researched for a long time, such as collaborative filtering, graph-based models, matrix factorization and so on. Different characteristics in many aspects of these methods are also be analyzed. In this study, we design a new similarity measure from the perspective of probabilistic, considering the so-called long tail effect hiding in human behaviors. We also compare this model with cosine similarity and hybrid spreading algorithm in graph models from both theoretical and experimental aspects. It proves that our approach performs better than the other two models in several guidelines.
机译:行为的推荐算法是推荐系统中最重要的方法的一类。很长一段时间都研究了各种模型,例如协同滤波,基于图形的模型,矩阵分解等。还分析了这些方法的许多方面的不同特征。在这项研究中,考虑到在人类行为中隐藏的所谓的长尾效应,我们设计了一种从概率的角度设计一种新的相似度措施。我们还将此模型与余弦相似性和混合扩展算法进行了理论和实验方面的图形模型中。它证明,我们的方法在若干指南中比其他两种模型更好地表现出。

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