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Mining affective text to improve social media item recommendation

机译:挖掘情感文字以改善社交媒体项目推荐

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摘要

Social media websites, such as YouTube and Flicker, are currently gaining in popularity. A large volume of information is generated by online users and how to appropriately provide personalized content is becoming more challenging. Traditional recommendation models are overly dependent on preference ratings and often suffer from the problem of "data sparsity". Recent research has attempted to integrate sentiment analysis results of online affective texts into recommendation models; however, these studies are still limited. The one class collaborative filtering (OCCF) method is more applicable in the social media scenario yet it is insufficient for item recommendation. In this study, we develop a novel sentiment-aware social media recommendation framework, referred to as SA_OCCF, in order to tackle the above challenges. We leverage inferred sentiment feedback information and OCCF models to improve recommendation performance. We conduct comprehensive experiments on a real social media web site to verify the effectiveness of the proposed framework and methods. The results show that the proposed methods are effective in improving the performance of the baseline OCCF methods.
机译:诸如YouTube和Flicker之类的社交媒体网站目前越来越受欢迎。在线用户会生成大量信息,如何正确提供个性化内容变得越来越具有挑战性。传统的推荐模型过分依赖于偏好等级,并且经常遭受“数据稀疏”的问题。最近的研究试图将在线情感文本的情感分析结果整合到推荐模型中。但是,这些研究仍然有限。一类协作过滤(OCCF)方法更适用于社交媒体场景,但不足以进行项目推荐。在这项研究中,我们开发了一种新颖的感知情感的社交媒体推荐框架,称为SA_OCCF,以应对上述挑战。我们利用推断的情感反馈信息和OCCF模型来提高推荐效果。我们在一个真实的社交媒体网站上进行了全面的实验,以验证所提出的框架和方法的有效性。结果表明,所提出的方法可有效提高基线OCCF方法的性能。

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