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Ranking events based on user relevant query

机译:根据用户相关查询对事件进行排名

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摘要

Given a collection of event-related documents, event ranking generates a list of ranked events based on the input query. Ranking news events, which takes event related news documents for the generation of ranked events, is both an essential research issue and important component for many security oriented applications, such as public event monitoring, retrieval, detection and mining. Previous related work solely relies on queries of event relevant aspects, and user relevant aspects of queries that are critical for security applications are totally ignored. In this paper, we deal with the problem of news ranking by incorporating user relevant information into the input query, from the cluster of relevant new documents and comments. Given an input query, which contains event related objective aspects(e.g. actors, locations, date) and user related subjective aspects(e.g. public attention and opinion polarity), we develop a Learning-to-Rank framework to integrate aspect-level correlation between query and event. Experiments on a crawled large news corpus show the effectiveness of our proposed approach compared to several baseline models.
机译:给定事件相关文档的集合,事件排名将基于输入查询生成已排名事件的列表。排名新闻事件需要事件相关的新闻文档来生成排名事件,对于许多面向安全的应用程序(例如公共事件监视,检索,检测和挖掘),它既是必不可少的研究问题,也是重要的组成部分。先前的相关工作仅依赖于事件相关方面的查询,而对于安全应用程序至关重要的用户相关方面的查询将被完全忽略。在本文中,我们通过从相关的新文档和注释的群集中将用户相关信息合并到输入查询中来解决新闻排名问题。给定一个输入查询,其中包含事件相关的客观方面(例如,演员,位置,日期)和用户相关的主观方面(例如,公众关注度和舆论极性),我们将开发一个“学习到排名”框架以整合查询之间的方面级别相关性和事件。在经过爬网的大型新闻语料库上进行的实验表明,与几种基准模型相比,我们提出的方法的有效性。

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