Research on Recommendation Algorithm Based on Cross-grained Emotion Analysis

Jin Xiao, Bo Liu, Sihan Li, Ke Liao, Jing Huang
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Abstract

In the era of internet and big data, traditional method of user preferences mining has been difficult to keep up with the update speed of enterprise product or service decision adjustment, so it is a new idea to apply recommendation algorithm to user preferences mining. Most of the recommendation algorithms based on review emotion analysis are carried out at a single level of fine-granularity or coarse-granularity, which is difficult to ensure the accuracy and comprehensiveness of user preferences mining. This paper proposes a new recommendation algorithm EAFM, which is based on cross-grained emotion analysis. Based on the latent dirichlet allocation, dependency syntactic analysis and convolutional neural network model, the algorithm synchronously performs fine-grained and coarse-grained emotion analysis with online review data as corpus, and then proposes the emotion score correction mechanism, which solves the problems of data sparsity and algorithm time complexity in user preference mining. In the experimental design section, we use Amazon product data for verification, and regard root mean square error as the performance evaluation index. Experimental results show that the EAFM approach has better user preference mining performance than the compared algorithm.
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基于交叉粒度情感分析的推荐算法研究
在互联网和大数据时代,传统的用户偏好挖掘方法已经难以跟上企业产品或服务决策调整的更新速度,因此将推荐算法应用于用户偏好挖掘是一种新的思路。大多数基于评论情感分析的推荐算法都是在细粒度或粗粒度的单一层次上进行的,难以保证用户偏好挖掘的准确性和全面性。本文提出了一种新的基于跨粒度情感分析的推荐算法EAFM。该算法基于潜在狄利克雷分配、依赖句法分析和卷积神经网络模型,以在线评论数据为语料库,同步进行细粒度和粗粒度情感分析,并提出情感评分校正机制,解决了用户偏好挖掘中的数据稀疏性和算法时间复杂度问题。在实验设计部分,我们使用亚马逊的产品数据进行验证,并以均方根误差作为性能评价指标。实验结果表明,EAFM方法比对比算法具有更好的用户偏好挖掘性能。
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