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Homicidal Event Forecasting and Interpretable Analysis Using Hierarchical Attention Model

机译:使用分层注意模型的酸性事件预测和可解释分析

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Crime and violence have always imposed significant societal threats across the world. Understanding the underlying causes behind them and making early predictions can help mitigate such occurrences to some extent. We propose a hierarchical attention-based mechanism that utilizes the temporal nature of event incidents obtained from news articles to extract information indicative of future events and make predictions accordingly. Our approach serves two important purposes: a) It models sequential information within the news articles and the sentences that comprise them to learn contextual information using Recurrent Neural Networks, b) The use of attention mechanism ensures that informative sentences and articles are selected for predicting future events and provides an analysis of precursors of the events. Through quantitative and qualitative evaluation, we show that our model can successfully make predictions while also being interpretable, which in turn can help make more informed decisions for social analysis.
机译:犯罪和暴力始终征收全世界的大量社会威胁。了解它们背​​后的潜在原因并提前预测可以帮助减轻这种事件在某种程度上。我们提出了一种基于分层关注的机制,利用从新闻文章获得的事件事件的时间性性质提取指示未来事件的信息并相应地进行预测。我们的方法提供了两个重要的目的:a)它模拟了新闻文章中的顺序信息和包括使用经常性神经网络学习上下文信息的句子,B)使用注意力机制确保为预测未来选择信息性句子和文章事件并提供事件前体的分析。通过定量和定性评估,我们表明我们的模型可以成功地制作预测,同时也是可解释的,这反过来可以帮助为社会分析做出更明智的决定。

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