基于评论情感分类预测的虚拟评分增强中文在线视频推荐

Weishi Zhang, Guiguang Ding, Li Chen, Chunping Li
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引用次数: 21

摘要

本文的目标是在用户评价信息不可用的情况下,利用虚拟评分来解决在线环境下的推荐问题。事实上,在目前的大多数网站尤其是中文视频分享网站中,由于评分数据的稀疏性,传统的纯基于评分的协同过滤推荐方法并不完全合格。受我们之前对这些网站上广泛出现的用户评论的调查工作的启发,我们因此提出了一种新的推荐算法,该算法融合了一种自监督的表情符号集成情感分类方法,其中缺失的用户-物品评级矩阵可以被通过分解给定用户评论预测的虚拟评级所取代。为了测试算法的实用价值,我们首先通过与监督方法的比较,确定了自监督情感分类的更高性能。此外,我们进行了统计评估方法,以显示我们的推荐系统在提高中文在线视频推荐的准确性方面的有效性。
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Augmenting Chinese Online Video Recommendations by Using Virtual Ratings Predicted by Review Sentiment Classification
In this paper we aim to resolve the recommendation problem by using the virtual ratings in online environments when user rating information is not available. As a matter of fact, in most of current websites especially the Chinese video-sharing ones, the traditional pure rating based collaborative filtering recommender methods are not fully qualified due to the sparsity of rating data. Motivated by our prior work on the investigation of user reviews that broadly appear in such sites, we hence propose a new recommender algorithm by fusing a self-supervised emoticon-integrated sentiment classification approach, by which the missing User-Item Rating Matrix can be substituted by the virtual ratings which are predicted by decomposing user reviews as given to the items. To test the algorithm’s practical value, we have first identified the self-supervised sentiment classification’s higher performance by comparing it with a supervised approach. Moreover, we conducted a statistic evaluation method to show the effectiveness of our recommender system on improving Chinese online video recommendations’ accuracy.
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