面向媒体监控的新闻推荐系统

F. Barile, F. Ricci, M. Tkalcic, B. Magnini, Roberto Zanoli, A. Lavelli, Manuela Speranza
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引用次数: 6

摘要

媒体监控服务允许他们的客户,主要是公司,每天从大众媒体收到一份文件清单,这些文件讨论了与公司相关的话题。然而,媒体监控服务通常通过使用关键字过滤技术生成这些列表,这会引入许多误报。因此,在最终用户(即公司的员工)可以查阅这些列表并查找相关文档之前,人工编辑必须检查关键字过滤的文档并删除误报。这是一项耗时的工作。在本文中,我们提出了一个推荐系统,旨在减少编辑每天需要检查的文档数量。提出的解决方案使用包含编辑过去行为(即去除误报)的数据训练的技术对文档进行分类(用TF-IDF和嵌入特征表示)。所提出的技术被证明能够正确地预测真正的阳性结果,从而减少了编辑每天需要检查的文档数量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A News Recommender System for Media Monitoring
Media monitoring services allow their customers, mostly companies, to receive, on a daily basis, a list of documents from mass media that discuss topics relevant to the company. However, media monitoring services often generate these lists by using keyword-filtering techniques, which introduce many false positives. Hence, before the end users, i.e., the employees of the company, may consult these lists and find relevant documents, a human editor must inspect the keyword-filtered documents and remove the false positives. This is a time consuming job. In this paper we present a recommender system that aims at reducing the number of documents that the editor needs to inspect every day. The proposed solution classifies documents (represented with TF-IDF and embeddings features) using techniques trained on data containing the editors’ past actions (i.e. the removals of false positives). The proposed technique is shown to be able to correctly predict the true positives, thus reducing the number of documents that the editor needs to inspect every day.
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