Are You Influenced by Others When Rating?: Improve Rating Prediction by Conformity Modeling

Yiming Liu, Xuezhi Cao, Yong Yu
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引用次数: 52

Abstract

Conformity has a strong influence to user behaviors, even in online environment. When surfing online, users are usually flooded with others' opinions. These opinions implicitly contribute to the user's ongoing behaviors. However, there is no research work modeling online conformity yet. In this paper, we model user's conformity in online rating sites. We conduct analysis using real data to show the existence and strength of conformity in these scenarios. We propose a matrix-factorization-based conformity modeling technique to improve the accuracy of rating prediction. Experiments show that our model outperforms existing works significantly (with a relative improvement of 11.72% on RMSE). Therefore, we draw the conclusion that conformity modeling is important for understanding user behaviors and can contribute to further improve the online recommender systems.
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评分时你会受到别人的影响吗?:通过整合模型改进评级预测
从众对用户行为有很强的影响,即使在网络环境中也是如此。在网上冲浪时,用户通常会被其他人的观点淹没。这些意见隐含地影响着用户的持续行为。然而,目前还没有建立在线整合模型的研究工作。本文对在线评价网站的用户一致性进行了建模。我们使用真实数据进行分析,以显示这些场景中一致性的存在和强度。为了提高评级预测的准确性,我们提出了一种基于矩阵分解的整合建模技术。实验表明,我们的模型明显优于现有的工作(RMSE的相对改进为11.72%)。因此,我们得出结论,从众建模对于理解用户行为很重要,可以有助于进一步改进在线推荐系统。
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Opening Remarks Mining Information for the Cold-Item Problem Are You Influenced by Others When Rating?: Improve Rating Prediction by Conformity Modeling Contrasting Offline and Online Results when Evaluating Recommendation Algorithms Intent-Aware Diversification Using a Constrained PLSA
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