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A content-collaborative recommender that exploits WordNet-based user profiles for neighborhood formation

机译:内容协作推荐者,利用基于WordNet的用户个人资料进行社区形成

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Collaborative and content-based filtering are the recommendation techniques most widely adopted to date. Traditional collaborative approaches compute a similarity value between the current user and each other user by taking into account their rating style, that is the set of ratings given on the same items. Based on the ratings of the most similar users, commonly referred to as neighbors, collaborative algorithms compute recommendations for the current user. The problem with this approach is that the similarity value is only computable if users have common rated items. The main contribution of this work is a possible solution to overcome this limitation. We propose a new content-collaborative hybrid recommender which computes similarities between users relying on their content-based profiles, in which user preferences are stored, instead of comparing their rating styles. In more detail, user profiles are clustered to discover current user neighbors. Content-based user profiles play a key role in the proposed hybrid recommender. Traditional keyword-based approaches to user profiling are unable to capture the semantics of user interests. A distinctive feature of our work is the integration of linguistic knowledge in the process of learning semantic user profiles representing user interests in a more effective way, compared to classical keyword-based profiles, due to a sense-based indexing. Semantic profiles are obtained by integrating machine learning algorithms for text categorization, namely a naive Bayes approach and a relevance feedback method, with a word sense disambiguation strategy based exclusively on the lexical knowledge stored in the WordNet lexical database. Experiments carried out on a content-based extension of the EachMovie dataset show an improvement of the accuracy of sense-based profiles with respect to keyword-based ones, when coping with the task of classifying movies as interesting (or not) for the current user. An experimental session has been also performed in order to evaluate the proposed hybrid recommender system. The results highlight the improvement in the predictive accuracy of collaborative recommendations obtained by selecting like-minded users according to user profiles.
机译:协作过滤和基于内容的过滤是迄今为止最广泛采用的推荐技术。传统的协作方法通过考虑当前用户和其他用户的评分方式(即在相同项目上给出的一组评分)来计算相似度值。基于最相似用户(通常称为邻居)的评分,协作算法会为当前用户计算推荐。这种方法的问题在于,仅当用户具有共同的评分项目时,相似度值才能计算。这项工作的主要贡献是克服这一局限性的可能解决方案。我们提出了一个新的内容协作混合推荐器,该推荐器依靠基于其内容的配置文件(存储用户首选项)来计算用户之间的相似度,而不是比较其评分方式。更详细地,将用户配置文件聚类以发现当前的用户邻居。基于内容的用户配置文件在建议的混合推荐器中起关键作用。传统的基于关键字的用户分析方法无法捕获用户兴趣的语义。我们的工作的一个显着特征是,由于基于感官的索引编制,与基于经典关键字的配置文件相比,语言知识在学习表示用户兴趣的语义用户配置文件的过程中进行了整合。通过集成用于文本分类的机器学习算法(即朴素的贝叶斯方法和相关性反馈方法)以及专门基于WordNet词汇数据库中存储的词汇知识的词义消歧策略,可以获取语义配置文件。对EveryMovie数据集的基于内容的扩展进行的实验表明,在应对将影片分类为当前用户感兴趣(或不感兴趣)的任务时,与基于关键字的配置文件相比,基于感知的配置文件的准确性有所提高。为了评估提出的混合推荐系统,还进行了一次实验。结果突出显示了通过根据用户个人资料选择志趣相投的用户而获得的协作推荐的预测准确性的提高。

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