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A Joint Information Model for n-best Ranking

机译:n最佳排名的联合信息模型

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In this paper, we present a method for modeling joint information when generating n-best lists. We apply the method to a novel task of characterizing the similarity of a group of terms where only a small set of many possible semantic properties may be displayed to a user. We demonstrate that considering the results jointly, by accounting for the information overlap between results, generates better n-best lists than considering them independently. We propose an information theoretic objective function for modeling the joint information in an n-best list and show empirical evidence that humans prefer the result sets produced by our joint model. Our results show with 95% confidence that the n-best lists generated by our joint ranking model are significantly different from a baseline independent model 50.0% ± 3.1% of the time, out of which they are preferred 76.6% ± 5.2% of the time.
机译:在本文中,我们提出了一种在生成n个最佳列表时对联合信息进行建模的方法。我们将该方法应用于表征一组术语的相似性的新颖任务,其中可能仅向用户显示许多可能的语义属性中的一小部分。我们证明,通过考虑结果之间的信息重叠来共同考虑结果,比单独考虑它们会产生更好的n最佳列表。我们提出了一个信息理论目标函数,用于对n个最佳列表中的联合信息进行建模,并显示出经验证据表明人类更喜欢我们的联合模型产生的结果集。我们的结果有95%的置信度表明,我们的联合排名模型生成的n个最佳列表与基线独立模型的差异显着,有50.0%±3.1%的时间,其中有76.6%±5.2%的列表是首选的。

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