面向文物的语义推荐系统:以Draa-Tafilalet地区为例

Fouad Nafis, Khalid Al Fararni, Ali Yahyaouy, Badraddine Aghoutane
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引用次数: 0

摘要

在大数据时代,大量的功能和应用被创造出来。直接的后果是用户由于难以获得相关信息而损失了时间,因此对所提供服务的有用性提出了质疑。推荐系统(RS)旨在帮助潜在用户根据他们的个人资料和偏好推荐最合适的产品,基于协同过滤的RSs,或基于内容甚至混合过滤的RSs都显示出有趣的结果,值得探索解决遇到的问题。但仍有一些限制尚未解决,这些限制主要与这些技术是否能够构建一个健壮而完整的系统有关,该系统能够形成用户档案的完整概念,然后向他们推荐最合适的报价。因此,使用基于数据网和语义网技术,特别是本体的语义RSs的优势。本文对文化遗产领域现有的语义RSs进行了比较研究,以期对摩洛哥塔菲拉莱德(dra - tafilalet)地区的科学文化遗产进行完整的RS。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards a semantic recommender system for cultural objects: Case study Draa-Tafilalet region
In the Big data era, a large number of functionalities and applications are created. The immediate consequence is the loss of time for the user due to the difficulty of accessing relevant information, and therefore a questioning of the usefulness of the services offered. Recommender system (RS) aims to help potential users by recommending the most suitable offers according to their profiles and preferences, RSs based on collaborative filtering, or those based on content or even hybrid filtering have shown interesting results to be explored for the resolution of the problems encountered. But some limits remain unresolved which are mainly related to the ability of these techniques to build a robust and complete system capable of forming a complete idea of the user profile and then recommend them the most suitable offers. Hence, the advantage of using semantic RSs based on data web and semantic web technologies, specifically the ontologies. This paper offers a comparative study of existing semantic RSs in the field of cultural heritage in order to extract a complete vision of a RS for the scientific cultural heritage of the region of Drâa-Tafilalet in Morocco.
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