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Cross-Lingual Document Retrieval Using Regularized Wasserstein Distance

机译:使用正则化Wasserstein距离检索交叉语言文件检索

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Many information retrieval algorithms rely on the notion of a good distance that allows to efficiently compare objects of different nature. Recently, a new promising metric called Word Mover's Distance was proposed to measure the divergence between text passages. In this paper, we demonstrate that this metric can be extended to incorporate term-weighting schemes and provide more accurate and computationally efficient matching between documents using entropic regularization. We evaluate the benefits of both extensions in the task of cross-lingual document retrieval (CLDR). Our experimental results on eight CLDR problems suggest that the proposed methods achieve remarkable improvements in terms of Mean Reciprocal Rank compared to several baselines.
机译:许多信息检索算法依赖于距离的概念允许有效地比较不同性质的对象。最近,提出了一种称为Word Mover距离的新有前景的度量标准,以测量文本段落之间的发散。在本文中,我们证明可以扩展该度量以合并术语加权方案,并在使用熵正规提供文档之间的更准确和计算上的匹配。我们评估跨语明文件检索(CLDR)任务中的扩展的好处。我们八个CLDR问题的实验结果表明,与几个基线相比,所提出的方法在平均互核等级方面取得了显着的改进。

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