A Method to Estimate Entity Performance from Mentions to Related Entities in Texts on the Web

V. Sampaio, Renato Fileto, D. D. J. D. Macedo
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引用次数: 1

Abstract

Publications on the Web can influence the public opinion about certain entities (e.g., politicians, institutions). At the same time, a variety of indicators can be extracted from these publications and used to estimate entity performance (e.g., popularity, votes share). This work proposes an automatic method that employs state-of-the-art natural language processing tools to extract indicators about entities mentioned in texts, for estimating the performance of these entities or semantically related ones. Our method calculates performance metrics from performance indicators consolidated for semantically related entities, assess correlations of these consolidated metrics with ground true performance, and uses these metrics to predict certain fluctuations in entity performance. Experimental results in a case study on politics show that consolidated metrics for several interrelated entities are better correlated to observed real performance measures of some target entities and lead to better predictions, than metrics for just one entity.
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一种基于Web文本中提及到相关实体的实体性能评估方法
网络上的出版物可以影响公众对某些实体(如政治家、机构)的看法。同时,可以从这些出版物中提取各种指标并用于估计实体绩效(例如,受欢迎程度,投票份额)。这项工作提出了一种自动方法,该方法采用最先进的自然语言处理工具来提取文本中提到的实体的指标,用于估计这些实体或语义相关实体的性能。我们的方法根据语义相关实体的综合性能指标计算性能指标,评估这些综合指标与实际性能的相关性,并使用这些指标来预测实体性能的某些波动。政治案例研究的实验结果表明,与仅针对一个实体的指标相比,针对多个相互关联实体的综合指标与观察到的某些目标实体的实际绩效指标之间的相关性更好,并能产生更好的预测。
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