在推荐系统中丰富用户和项目数据的社会偏好本体

Christopher Krauss, S. Arbanowski
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引用次数: 4

摘要

推荐算法的一些已知问题是所谓的“冷启动问题”的结果,这种问题是由缺乏足够的用户、项目或内容数据引起的,这些数据对于计算上下文敏感的预测至关重要。随之而来的是“稀疏性问题”,它也暴露了推荐系统提供的用户反馈信息太少的问题,比如喜欢和观点。因此,协同过滤和基于知识的过滤算法无法进行精确的预测,导致客户满意度的下降。如果除此之外还缺乏元数据,那么通过基于内容的过滤算法计算相似度也可能失败。本文介绍了偏好本体,以及它们如何通过分析来自社交网络和其他网络资源的文本的外部数据来帮助减少这些问题。因此,我们引入了自己设计的语义引擎,进行情感分析和语义关键字提取。这些新颖的本体代表了挖掘的信息,从而描述了用户对自动分析主题的兴趣,并将其映射到推荐引擎中的项目元数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Social Preference Ontologies for Enriching User and Item Data in Recommendation Systems
Some of the known issues of recommendation algorithms are a result of the so called "Cold Start Problem" that is caused by a lack of sufficient data of users, items or the content, which are essential for the calculation of context-sensitive predictions. Along with this comes the "Sparsity Problem" which also exposes the problem of recommendation systems which are being provided with too little information of user feedback such as likes and views. As a consequent collaborative and knowledge-based filtering algorithms are unable of precise prediction which is causing a decline of the customer satisfaction. If beyond that there also is a lack of metadata, the calculation of similarities through content-based filtering algorithms is likely to fail as well. This paper introduces preference ontologies and how they help to reduce these issues by analyzing external data, in terms of texts from social networks and other web sources. Thereby we introduce a self-designed semantic engine, performing sentiment analysis and semantic keyword extraction. These novel ontologies represent the mined information and thus, describe the users interest in automatic analyzed topics and map them to the meta data of items in recommendation engines.
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