Recommendation system for documentary classification

M. Hmimida, M. Ankoud
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引用次数: 0

Abstract

In the context of the NAR project “Miipa-doc”, we develop a new type of Knowledge Organization System (KOS) called Hypertagging based on the tagging of electronic documents and the principles of faceted classification. It was designed to simplify the tasks of information management for the organizations' staff. In this paper, we propose a new recommendation model and algorithm which are based on a faceted classification by level in the aim to facilitate the documents' indexing. This approach exploits the user trace indexing of his/her documents to learn about the user preferences and then to produce their recommendations. Consequently, these recommendations will provide a kind of knowledge base aiming at improving document ranking and highlight most relevant information that meeting user needs. This model is based on a statistical method called Association Rules (AR) using an Apriori algorithm to generate the recommendations.
文献分类推荐系统
在NAR项目“Miipa-doc”的背景下,我们基于电子文档的标注和分面分类原则,开发了一种新型的知识组织系统(KOS),称为Hypertagging。它的目的是简化各组织工作人员的信息管理任务。本文提出了一种基于层次分面的推荐模型和算法,以方便文献的索引。这种方法利用他/她的文档的用户跟踪索引来了解用户首选项,然后生成他们的建议。因此,这些建议将提供一种知识库,旨在改进文件排序并突出显示满足用户需要的最相关信息。该模型基于一种称为关联规则(AR)的统计方法,使用Apriori算法生成推荐。
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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