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A Cross-Domain Collaborative Filtering Algorithm Based on Feature Construction and Locally Weighted Linear Regression

机译:基于特征构造和局部加权线性回归的跨域协同过滤算法

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摘要

Cross-domain collaborative filtering (CDCF) solves the sparsity problem by transferring rating knowledge from auxiliary domains. Obviously, different auxiliary domains have different importance to the target domain. However, previous works cannot evaluate effectively the significance of different auxiliary domains. To overcome this drawback, we propose a cross-domain collaborative filtering algorithm based on Feature Construction and Locally Weighted Linear Regression (FCLWLR). We first construct features in different domains and use these features to represent different auxiliary domains. Thus the weight computation across different domains can be converted as the weight computation across different features. Then we combine the features in the target domain and in the auxiliary domains together and convert the cross-domain recommendation problem into a regression problem. Finally, we employ a Locally Weighted Linear Regression (LWLR) model to solve the regression problem. As LWLR is a nonparametric regression method, it can effectively avoid underfitting or overfitting problem occurring in parametric regression methods. We conduct extensive experiments to show that the proposed FCLWLR algorithm is effective in addressing the data sparsity problem by transferring the useful knowledge from the auxiliary domains, as compared to many state-of-the-art single-domain or cross-domain CF methods.
机译:跨域协作过滤(CDCF)通过从辅助域转移评级知识来解决稀疏性问题。显然,不同的辅助域对目标域的重要性不同。但是,先前的工作不能有效地评估不同辅助域的重要性。为克服此缺点,我们提出了一种基于特征构造和局部加权线性回归(FCLWLR)的跨域协作过滤算法。我们首先在不同的域中构造要素,然后使用这些要素表示不同的辅助域。因此,跨不同域的权重计算可以转换为跨不同特征的权重计算。然后,我们将目标域和辅助域中的特征组合在一起,并将跨域推荐问题转换为回归问题。最后,我们采用局部加权线性回归(LWLR)模型来解决回归问题。由于LWLR是一种非参数回归方法,因此它可以有效避免参数回归方法中出现的过拟合或过拟合问题。我们进行了广泛的实验,表明与许多最新的单域或跨域CF方法相比,所提出的FCLWLR算法可通过从辅助域中转移有用的知识来有效解决数据稀疏性问题。

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