Publication Details
Further Investigation into Multilingual Training and Adaptation of Stacked Bottle-neck Neural Network Structure
Egorova Ekaterina, Ing., Ph.D.
Karafiát Martin, Ing., Ph.D. (DCGM)
multilingual training, neural networks, stacked bottle-neck, neural network adaptation
This article is about further investigation into multilingual training and adaptation of stacked Bottle-neck Neural Network Structure.
Multilingual training of neural networks for ASR is widely studied these days. It has been shown that languages with little training data can benefit largely from multilingual resources. We have evaluated possible ways of adaptation of multilingual stacked bottle-neck hierarchy to target domain. This paper extends our latest work and focuses on the impact certain aspects have on the performance of an adapted neural network feature extractor. First, the performance of adapted multilingual networks preliminarily trained on different languages is studied. Next, the effect of different target units - phonemes vs. triphone states - used for multilingual NN training is evaluated. Then the impact of an increasing number of languages used for multilingual NN training is investigated. Here the condition of constant amount of data is added to separately control the influence of larger language variability and larger amount of data. The effect of adding languages from a different domain is also evaluated. Finally a study is performed where a language with the phonetic structure similar to the target’s one is added to multilingual training data.
@inproceedings{BUT111502,
author="František {Grézl} and Ekaterina {Egorova} and Martin {Karafiát}",
title="Further Investigation into Multilingual Training and Adaptation of Stacked Bottle-neck Neural Network Structure",
booktitle="Proceedings of 2014 Spoken Language Technology Workshop",
year="2014",
pages="48--53",
publisher="IEEE Signal Processing Society",
address="South Lake Tahoe, Nevada",
doi="10.1109/SLT.2014.7078548",
isbn="978-1-4799-7129-9",
url="https://www.fit.vut.cz/research/publication/10798/"
}