Analysis of Meta-Features in the Context of Adaptive Hybrid Recommendation Systems

D. Varela, José Aguilar, J. Monsalve-Pulido, E. Montoya
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Abstract

The difficulty in finding the most suitable recommendation algorithm for all requests is a common challenge in the recommendation system context, regardless of the domain. Although the combination of multiple techniques in a hybrid approach is often a good solution, the majority of implementations follow a static hybridization scheme, which does not consider the available data, the user specificities at a given time, or the changing environment. Thus, another challenge is the definition of adaptive hybrid recommenders that are capable to adjust the combination of the recommendation algorithms based on the properties of the dynamic inputs. For that purpose, it is necessary to define meta-features that contain information to effectively differentiate recommendation algorithm behaviors over time, and capture how properties of the user/items are related to their performance. This work studies these meta-features in order to analyze their characteristics, relevance, behavior, redundancy and their abilities to represent the system dynamics over time. The paper presents several experiments that can be used as a meta-feature’s evaluation guide, and briefly propose its utilization in a hybrid fuzzy system for recommendation.
自适应混合推荐系统中的元特征分析
在推荐系统上下文中,无论在哪个领域,为所有请求找到最合适的推荐算法都是一个常见的挑战。虽然混合方法中多种技术的组合通常是一个很好的解决方案,但大多数实现遵循静态混合方案,它不考虑可用数据、给定时间的用户特性或不断变化的环境。因此,另一个挑战是自适应混合推荐器的定义,它能够根据动态输入的属性调整推荐算法的组合。为此,有必要定义包含信息的元特征,以有效区分推荐算法随时间的行为,并捕获用户/项目的属性如何与其性能相关。这项工作研究这些元特征是为了分析它们的特征、相关性、行为、冗余以及它们随时间表示系统动态的能力。本文给出了几个可以作为元特征评价指南的实验,并简要介绍了其在混合模糊推荐系统中的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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