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A Semantic Approach in Recommender Systems

机译:推荐系统中的语义方法

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Recommender systems (RSs) suggest a list of items to users by using collaborative or content-based filtering. Collaborative filtering approaches build models from the user's past behaviors (items previously purchased or selected and/or numerical ratings given to those items) as well as similar decisions made by other users, while content-based filtering approaches utilize attributes of the items to recommend additional items with similar properties. Although RS is aplied in many real systems, it has several problems that need to be solved, e.g., cold-start (new users or new items) problem, data sparse problem, and especially data scarcity problem since most of the users are not willing to provide their opinions on the items. In this work, we present a semantic approach to recommender systems, especially for alleviating the sparsity and scarcity problems where most of the current recommendation systems face. We create a semantic model to generate similarity data given an original data set, thus, the prediction model has more data to learn. Experimental results show that the proposed approach works well, especially for sparse data sets.
机译:推荐系统(RS)通过使用协作或基于内容的筛选向用户建议项目列表。协作过滤方法根据用户的过去行为(先前购买或选择的物品和/或对这些物品给予的数字评分)以及其他用户做出的类似决策来构建模型,而基于内容的过滤方法利用物品的属性来推荐其他物品具有相似属性的项目。尽管RS已应用于许多实际系统中,但它仍有一些问题需要解决,例如冷启动(新用户或新项目)问题,数据稀疏问题,尤其是数据稀缺性问题,因为大多数用户都不愿意这样做。提供有关项目的意见。在这项工作中,我们为推荐系统提供了一种语义方法,特别是为了缓解大多数当前推荐系统所面临的稀疏性和稀缺性问题。我们创建一个语义模型以在给定原始数据集的情况下生成相似性数据,因此,预测模型需要学习更多的数据。实验结果表明,该方法行之有效,特别是对于稀疏数据集。

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