THE APPLICATION OF RECOMMENDER SYSTEMS TO DATA-DRIVEN DIGITAL MEMORY

Tingyu Luo, M. Nunes
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Abstract

Data-driven digital memory applications lack predefined navigation paths and strict hierarchical structures. They are based on large collections of memory items that can become overwhelming to users. Recommender systems can improve user experience through the proposal of personalized relevant items. However, very little academic literature has been dedicated to discussing this type of filtering of digital memory resources and the provision of customized contents to active users. In this paper, an architecture of a hybrid enhanced recommender (HER) system, which integrates collaborative filtering and content based filtering techniques and resolves most of the weaknesses of the individual approaches. This architecture also proposes an ontology to build semantic user profiles and represent memory items to mitigate the lack of semantics of traditional content-based method. Through combining those techniques, this architecture has the potential to cope with data sparsity problems, avoid overspecialization issues and partially resolve cold start problems.
推荐系统在数据驱动数字存储器中的应用
数据驱动的数字存储器应用缺乏预定义的导航路径和严格的层次结构。它们基于大量的内存项集合,这些内存项对用户来说可能是压倒性的。推荐系统可以通过提出个性化的相关项目来改善用户体验。然而,很少有学术文献专门讨论这种类型的数字内存资源过滤和为活跃用户提供定制内容。本文提出了一种混合增强型推荐系统的体系结构,该系统集成了协同过滤和基于内容的过滤技术,并解决了单个方法的大部分缺点。该体系结构还提出了一个本体来构建语义用户档案和表示记忆项,以减轻传统基于内容的方法在语义上的不足。通过结合这些技术,该体系结构有可能处理数据稀疏性问题,避免过度专门化问题,并部分解决冷启动问题。
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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