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Capitalization Normalization for Language Modeling with an Accurate and Efficient Hierarchical RNN Model

Authors :
Zhang, Hao
Cheng, You-Chi
Kumar, Shankar
Huang, W. Ronny
Chen, Mingqing
Mathews, Rajiv
Zhang, Hao
Cheng, You-Chi
Kumar, Shankar
Huang, W. Ronny
Chen, Mingqing
Mathews, Rajiv
Publication Year :
2022

Abstract

Capitalization normalization (truecasing) is the task of restoring the correct case (uppercase or lowercase) of noisy text. We propose a fast, accurate and compact two-level hierarchical word-and-character-based recurrent neural network model. We use the truecaser to normalize user-generated text in a Federated Learning framework for language modeling. A case-aware language model trained on this normalized text achieves the same perplexity as a model trained on text with gold capitalization. In a real user A/B experiment, we demonstrate that the improvement translates to reduced prediction error rates in a virtual keyboard application. Similarly, in an ASR language model fusion experiment, we show reduction in uppercase character error rate and word error rate.<br />Comment: arXiv admin note: substantial text overlap with arXiv:2108.11943

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1333751353
Document Type :
Electronic Resource