基于局部标度和置信度的转导音素分类

Matan Orbach, K. Crammer
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引用次数: 5

摘要

我们将基于图的置信度转换算法TACO应用于音素分类。在最近的工作中,TACO在几个自然语言处理任务上优于两种最先进的转换学习算法。然而,尽管TACO是一种通用算法,但它尚未用于其他领域的任务,也未应用于具有数百万个顶点的图。我们通过对来自TIMIT语音语料库的数据进行转导音素分类来证明其有效性和可扩展性。此外,我们实验了两种图构建方法,包括局部缩放,以前用于无监督聚类。我们的研究结果表明,局部缩放结合TACO优于其他图构建方法和基于图的转换算法的组合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Transductive phoneme classification using local scaling and confidence
We apply a graph-based Transduction Algorithm with COnfidence named TACO to the task of phoneme classification. In recent work, TACO outperformed two state-of-the-art transductive learning algorithms on several natural language processing tasks. However, although TACO is a general-purpose algorithm, it has not yet been used for tasks in other domains, nor applied to graphs with millions of vertices. We show its effectiveness, as well as its scalability, by performing transductive phoneme classification on data from the TIMIT speech corpus. In addition, we experiment with two methods for graph construction, including local scaling, previously used for unsupervised clustering. Our results show that local scaling combined with TACO outperforms other combinations of graph construction methods and graph-based transductive algorithms.
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