使用自动机器翻译改进文档聚类

Xiang Wang, B. Qian, I. Davidson
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引用次数: 15

摘要

随着统计机器翻译的发展,我们有了现成的工具,可以将文档从一种语言翻译成许多其他语言。这些翻译提供了同一组文档的不同但相关的视图。这就产生了一个有趣的问题:我们可以使用额外的信息来实现更好的文档聚类吗?最近关于多视图聚类的一些研究为这个问题提供了积极的答案。在这项工作中,我们提出了一种使用约束聚类框架来解决这个问题的替代方法。与传统的“必须链接”和“不能链接”约束不同,机器翻译生成的约束是密集但有噪声的。我们展示了如何结合这种类型的约束通过提出两种算法,一个参数和一个非参数。我们的算法易于实现,效率高,并且能够持续改进真实数据(即路透社RCV1/RCV2多语言数据集)的聚类。与现有的多视图聚类算法相比,我们的技术不需要兼容性或条件独立性假设,也不涉及精细的参数调优。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving document clustering using automated machine translation
With the development of statistical machine translation, we have ready-to-use tools that can translate documents from one language to many other languages. These translations provide different yet correlated views of the same set of documents. This gives rise to an intriguing question: can we use the extra information to achieve a better clustering of the documents? Some recent work on multiview clustering provided positive answers to this question. In this work, we propose an alternative approach to address this problem using the constrained clustering framework. Unlike traditional Must-Link and Cannot-Link constraints, the constraints generated from machine translation are dense yet noisy. We show how to incorporate this type of constraints by presenting two algorithms, one parametric and one non-parametric. Our algorithms are easy to implement, efficient, and can consistently improve the clustering of real data, namely the Reuters RCV1/RCV2 Multilingual Dataset. In contrast to existing multiview clustering algorithms, our technique does not need the compatibility or the conditional independence assumption, nor does it involve subtle parameter tuning.
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