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Enhancing Collective Filtering with Causal Representation

机译:用因果表示增强集体过滤

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In this paper, we propose to enhance the practice of web-based collective filtering with the addition of a causality linking module. Causality lies at the foundations of human understanding, when presented in visual form, is especially suited to the task as it is intuitive to understand and to use. But in its simplicity, causality could provide a semantic network over the filtering tool, connecting representations of real world facts.
机译:在本文中,我们建议通过添加因果关系链接模块来增强基于Web的集体过滤的实践。因果关系是人类理解的基础,当以视觉形式呈现时,因果关系易于理解和使用,因此特别适合该任务。但是因果关系可以简单地在过滤工具上提供语义网络,从而连接现实世界中的事实表示。

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