基于符号模态数据的具有用户和项目特征的推荐系统

Delmiro D. Sampaio-Neto, Telmo M. Silva Filho, Renata M. C. R. Souza
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引用次数: 0

摘要

大多数推荐系统都是使用数值数据或分类数据(即传统数据)实现的。这类数据在用于复杂概念建模时可能会成为一个限制因素,因为数据中存在内部变异或内部结构。为了克服这些限制,我们使用了符号数据,在符号数据中,数据可以用不同类型的值来表示,如区间、列表或直方图。本作品介绍了一种基于内容或基于协同过滤的单一方法,使用模态变量为用户和项目构建推荐系统。在基于内容的系统中,用户配置文件和项目配置文件是根据其特征的模态表示创建的,项目列表与用户配置文件相匹配。在协同过滤系统中,建立用户档案,并将用户分组形成一个邻域,根据邻域用户与接受推荐的用户之间的相似度,推荐该邻域用户评价的产品。我们使用一个电影领域的数据集进行了实验,以评估所建议方法的有效性。实验结果表明,与之前使用符号数据的方法相比,我们有能力生成质量更高的排名列表。具体来说,通过建议的方法创建的列表显示出更高的归一化折现累积增益,而且从质量上来说,展示的内容更加多样化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Recommendation systems with user and item profiles based on symbolic modal data

Recommendation systems with user and item profiles based on symbolic modal data

Most recommendation systems are implemented using numerical or categorical data, that is, traditional data. This type of data can be a limiting factor when used to model complex concepts where there is internal variability or internal structure in the data. To overcome these limitations, symbolic data is used, where data can be represented by different types of values, such as intervals, lists, or histograms. This work introduces a single approach to constructing recommendation systems based on content or based on collaborative filtering using modal variables for users and items. In the content-based system, user profiles and item profiles are created from modal representations of their features, and a list of items is matched against a user profile. For collaborative filtering, user profiles are built, and users are grouped to form a neighborhood, products rated by users of this neighborhood are recommended based on the similarity between the neighbor and the user who will receive the recommendation. Experiments are carried out, using a movie domain dataset, to evaluate the effectiveness of the proposed approach. The outcomes suggest our ability to generate ranked lists of superior quality compared to previous methods utilizing symbolic data. Specifically, the lists created through the proposed method exhibit higher normalized discounted cumulative gain and, in qualitative terms, showcase more diverse content.

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