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An Investigation on Initialization Schemes for Multilayer Perceptron Training Using Multilingual Data and Their Effect on ASR Performance

机译:基于多语言数据的多层感知器训练初始化方案及其对ASR性能影响的研究

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In this paper we present our latest investigation on initialization schemes for Multilayer Perceptron (MLP) training using multilingual data. We show that the overall performance of a MLP network improves significantly by initializing it with a multilingual MLP. We propose a new strategy called "open target language" MLP to train more flexible models for language adaptation, which is particularly suited for small amounts of training data. Furthermore, by applying Bottle-Neck feature (BN) initialized with multilingual MLP the ASR performance increases for both, the languages which were used for multilingual MLP training, and the new language. Our experiments show a word error rate improvements of up to 16.9% relative on a range of tasks for different target languages (Creole and Vietnamese) with manual and automatic transcribed training data.
机译:在本文中,我们介绍了我们对使用多语言数据的多层感知器(MLP)训练的初始化方案的最新研究。我们显示,通过使用多语言MLP进行初始化,MLP网络的整体性能得到了显着改善。我们提出了一种称为“开放目标语言” MLP的新策略,以针对语言适应性训练更加灵活的模型,该模型特别适用于少量的训练数据。此外,通过应用用多语言MLP初始化的Bottle-Neck功能(BN),用于多语言MLP训练的语言和新语言的ASR性能都会提高。我们的实验显示,使用手动和自动转录训练数据,针对不同目标语言(克里奥尔语和越南语)的一系列任务,相对于最高的单词错误率提高了16.9%。

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