Text normalization using memory augmented neural networks

May 31, 2018 ยท Declared Dead ยท ๐Ÿ› Speech Communication

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Authors Subhojeet Pramanik, Aman Hussain arXiv ID 1806.00044 Category cs.CL: Computation & Language Citations 29 Venue Speech Communication Last Checked 4 months ago
Abstract
We perform text normalization, i.e. the transformation of words from the written to the spoken form, using a memory augmented neural network. With the addition of dynamic memory access and storage mechanism, we present a neural architecture that will serve as a language-agnostic text normalization system while avoiding the kind of unacceptable errors made by the LSTM-based recurrent neural networks. By successfully reducing the frequency of such mistakes, we show that this novel architecture is indeed a better alternative. Our proposed system requires significantly lesser amounts of data, training time and compute resources. Additionally, we perform data up-sampling, circumventing the data sparsity problem in some semiotic classes, to show that sufficient examples in any particular class can improve the performance of our text normalization system. Although a few occurrences of these errors still remain in certain semiotic classes, we demonstrate that memory augmented networks with meta-learning capabilities can open many doors to a superior text normalization system.
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