A Framework for Feature Selection using Natural Language Processing for User Profile Learning for Recommendations of Healthcare Related Content

Pub Date : 2022-07-01 DOI:10.4018/ijban.292059
Mona Tanwar
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引用次数: 0

Abstract

This paper presents the work done on recommendations of healthcare related journal papers by understanding the semantics of terms from the papers referred by users in past. In other words, user profiles based on user interest within the healthcare domain are constructed from the kind of journal papers read by the users. Multiple user profiles are constructed for each user based on different categories of papers read by the users. The proposed approach goes to the granular level of extrinsic and intrinsic relationship between terms and clusters highly semantically related relevant domain terms where each cluster represents a user interest area. The semantic analysis of terms is done starting from co-occurrence analysis to extract the intra-couplings between terms and then the inter-couplings are extracted from the intra-couplings and then finally clusters of highly related terms are formed. The experiments showed improved precision for the proposed approach as compared to the state-of-the-art technique with a mean reciprocal rank of 0.76.
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使用自然语言处理的特征选择框架,用于用户概要学习,以推荐医疗相关内容
本文通过了解用户过去引用的论文中术语的语义,介绍了在医疗保健相关期刊论文推荐方面所做的工作。换句话说,基于用户在医疗保健领域的兴趣的用户配置文件是根据用户阅读的期刊论文类型构建的。根据用户阅读的不同类别的论文,为每个用户构建多个用户配置文件。该方法深入到术语和高度语义相关的领域术语之间的外在和内在关系的颗粒级,其中每个集群代表一个用户感兴趣的区域。术语的语义分析从共现分析开始,提取术语之间的内耦合,再从内耦合中提取相互耦合,最后形成高度相关的术语聚类。实验表明,与平均倒数0.76的最先进技术相比,所提出的方法的精度得到了提高。
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