基于关联开放数据的社会文化推荐

A. D. Angelis, Fabio Gasparetti, A. Micarelli, G. Sansonetti
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引用次数: 18

摘要

本文描述了一个文化遗产领域的推荐系统(RS),该系统考虑了目标用户及其朋友在社交媒体上的活动。为此,该系统还利用了链接开放数据(LOD)。更具体地说,拟议的RS (i)通过分析用户生成的内容及其社交网络中包含的内容,从社交网络(例如Facebook)中提取信息;(ii)通过LOD工具执行消歧任务;(iii)将用户作为社交图谱进行剖析;(iv)将协同过滤算法与利用DBpedia、Europeana等LOD源的语义技术相结合,为实际用户提供个性化的艺术文化资源建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Social Cultural Recommender based on Linked Open Data
This article describes a recommender system (RS) in the cultural heritage area, which takes into account the activities on social media performed by the target user and her friends. For this purpose, the system exploits linked open data (LOD) as well. More specifically, the proposed RS (i) extracts information from social networks (e.g., Facebook) by analyzing content generated by users and those included in their social networks; (ii) performs disambiguation tasks through LOD tools; (iii) profiles the user as a social graph; (iv) provides the actual user with personalized suggestions of artistic and cultural resources by integrating collaborative filtering algorithms with semantic technologies for leveraging LOD sources such as DBpedia and Europeana.
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