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Multiple Models for Recommending Temporal Aspects of Entities

机译:推荐实体时间方面的多种模型

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摘要

Entity aspect recommendation is an emerging task in semantic search that helps users discover serendipitous and prominent information with respect to an entity, of which salience (e.g., popularity) is the most important factor in previous work. However, entity aspects are temporally dynamic and often driven by events happening over time. For such cases, aspect suggestion based solely on salience features can give unsatisfactory results, for two reasons. First, salience is often accumulated over a long time period and does not account for recency. Second, many aspects related to an event entity are strongly time-dependent. In this paper, we study the task of temporal aspect recommendation for a given entity, which aims at recommending the most relevant aspects and takes into account time in order to improve search experience. We propose a novel event-centric ensemble ranking method that learns from multiple time and type-dependent models and dynamically trades off salience and recency characteristics. Through extensive experiments on real-world query logs, we demonstrate that our method is robust and achieves better effectiveness than competitive baselines.
机译:实体方面推荐是语义搜索中的一项新兴任务,它可以帮助用户发现与实体有关的偶然和突出信息,其中显着性(例如,知名度)是先前工作中最重要的因素。但是,实体方面在时间上是动态的,并且通常由随时间发生的事件驱动。在这种情况下,仅基于显着特征的方面建议可能会给出不令人满意的结果,这有两个原因。首先,显着性通常是在很长一段时间内累积的,不能说明新近度。其次,与事件实体相关的许多方面都与时间密切相关。在本文中,我们研究给定实体的时间方面推荐任务,该任务旨在推荐最相关的方面,并考虑时间以改善搜索体验。我们提出了一种新颖的以事件为中心的整体排名方法,该方法可从多个时间和类型相关的模型中学习,并动态权衡显着性和新近度特征。通过在现实世界中查询日志的大量实验,我们证明了我们的方法是可靠的,并且比竞争基准具有更好的有效性。

著录项

  • 来源
    《The semantic web》|2018年|462-480|共19页
  • 会议地点 Crete(GR)
  • 作者单位

    L3S Research Center/Leibniz Universitat Hannover, Hannover, Germany;

    NTENT Espafia, Barcelona, Spain;

    L3S Research Center/Leibniz Universitat Hannover, Hannover, Germany;

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  • 正文语种 eng
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