基于PU学习方法的图书馆推荐代理中图书馆资源分类

S. B. Shirude, S. Kolhe
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引用次数: 4

摘要

提出了一种基于Agent的图书馆推荐系统,目的是为了有效、智能地利用图书馆资源,找到合适的图书、相关的研究期刊论文和文章。该体系结构由配置文件代理和库推荐代理组成。图书馆推荐代理的主要任务是过滤和提供推荐。图书馆资源包括有目录的图书记录、有摘要的期刊文章、关键词。通过目录和摘要获得丰富的关键词集来计算相似度。在ACM计算分类系统2012 (ACM CCS)中,将图书馆资源分为14类。已标识的类别提供了一种获取库资源的语义相关关键字的方法。本文提出了使用NB (Naïve贝叶斯)分类器实现PU (Positive Unlabeled)学习方法对图书馆资源进行分类的任务。通过对图书馆资源的分类,提高了系统推荐的准确性。推荐系统的新特点是使用ACM CCS 2012作为本体,语义相似度计算,隐式自动更新用户配置文件,以及评价用户的多样性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classifying library resources in Library Recommender Agent using PU learning approach
Agent based Library Recommender System is proposed with the objective to provide effective and intelligent use of library resources such as finding right book/s, relevant research journal papers and articles. The architecture consists of profile agent and library recommender agent. The main task of Library recommender agent is filtering and providing recommendations. Library resources include book records having table of contents, journal articles including abstract, keywords. Rich set of keywords are obtained to compute similarity via table of contents and abstracts. The library resources are classified into fourteen categories specified in ACM computing classification system 2012 (ACM CCS). The identified category provides a way to obtain semantically related keywords for the library resources. This paper provides the task of library resources classification using PU (Positive Unlabeled) learning approach implemented using NB (Naïve Bayes) Classifier. Recommendation accuracy of the system is improved by library resources classification. The novel features of the recommender system are use of ACM CCS 2012 as ontology, semantic similarity computation, implicit auto update of user profiles, and variety of users in evaluation.
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