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Exploiting local and global structures for TIMIT phone classification

机译:利用本地和全局结构进行Timit Phone Classification

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Using contextual information of phones is an effective way to improve the performance of phone classification tasks, but requires the use of dimensionality reduction. One of the disadvantages of Linear Discriminant Analysis (LDA), a popular dimensionality reduction method is that it is not able to account for local differences between the distributions of classes in the feature space. Newer methods, such as the Local Fisher Discriminant Analysis (LFDA), on the other hand, may overestimate the contribution of local distributions. In this paper, we propose to use a dimensionality reduction algorithm with an affinity matrix that allows finding the optimal trade-off between local and global information. Experiments on TIMIT show that both local and global information in the MFCC feature space are important for phone classification and that a substantial improvement can be achieved over both LDA and LFDA.
机译:使用手机的上下文信息是提高电话分类任务性能的有效方法,但需要使用维数减少。线性判别分析(LDA)的缺点之一,一种流行的维度降低方法是它无法解释特征空间中类的分布之间的局部差异。另一方面,诸如本地Fisher判别分析(LFDA)的新方法可能会高估当地分布的贡献。在本文中,我们建议使用具有亲和矩阵的维度缩小算法,允许在本地和全球信息之间找到最佳权衡。 Timit的实验表明,MFCC特征空间中的本地和全球信息对于电话分类很重要,并且可以在LDA和LFDA上实现大量改进。

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