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A Latent Variable Bayesian Network Recommendation Model for Product Scoring Prediction

机译:产品评分预测的潜在贝叶斯网络推荐模型

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Including scenes features, including the dependencies between the attribute information and user ratings are implicit variables determine a user score of commodities to build hidden variable model includes user preferences, describe any form of dependence between the rating data relevant attributes as the main target, The Bayesian network is used as the basic framework of the dependencies between attributes and the probability relationship between attributes and scores. The project scoring data is used to construct the item scoring model without hidden variables, and the semi-clique structure is proposed to insert the description of user preferences the latent variable model with user preference is constructed, and the method of parameter estimation of hidden variable model based on EM algorithm is given. Then the probability inference model of the hidden variable model and the corresponding project score prediction method are proposed. The experimental results based on MovieLens and LDOS-CoMoDa data show that the proposed Bayesian model with implicit variables and the corresponding score prediction method are effective.
机译:包括场景特征在内的属性信息和用户评分之间的依赖关系是隐式变量,确定商品的用户得分以建立包含用户偏好的隐藏变量模型,描述以评分数据相关属性之间的任何形式的依赖关系为主要目标,贝叶斯网络被用作属性之间的依存关系以及属性和分数之间的概率关系的基本框架。利用项目评分数据构建无隐藏变量的项目评分模型,提出半透明结构,插入用户偏好的描述,构建具有用户偏好的潜在变量模型,并进行隐变量参数估计的方法。给出了基于EM算法的模型。然后提出了隐变量模型的概率推理模型和相应的项目得分预测方法。基于MovieLens和LDOS-CoMoDa数据的实验结果表明,所提出的具有隐含变量的贝叶斯模型和相应的得分预测方法是有效的。

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