DocumentCode :
3744828
Title :
Personalizing universal recurrent neural network language model with user characteristic features by social network crowdsourcing
Author :
Bo-Hsiang Tseng;Hung-yi Lee;Lin-Shan Lee
Author_Institution :
National Taiwan Univeristy
fYear :
2015
Firstpage :
84
Lastpage :
91
Abstract :
With the popularity of mobile devices, personalized speech recognizer becomes more realizable today and highly attractive. Each mobile device is primarily used by a single user, so it´s possible to have a personalized recognizer well matching to the characteristics of individual user. Although acoustic model personalization has been investigated for decades, much less work have been reported on personalizing language model, probably because of the difficulties in collecting enough personalized corpora. Previous work used the corpora collected from social networks to solve the problem, but constructing a personalized model for each user is troublesome. In this paper, we propose a universal recurrent neural network language model with user characteristic features, so all users share the same model, except each with different user characteristic features. These user characteristic features can be obtained by crowdsouring over social networks, which include huge quantity of texts posted by users with known friend relationships, who may share some subject topics and wording patterns. The preliminary experiments on Facebook corpus showed that this proposed approach not only drastically reduced the model perplexity, but offered very good improvement in recognition accuracy in n-best rescoring tests. This approach also mitigated the data sparseness problem for personalized language models.
Keywords :
"Feature extraction","Social network services","Hidden Markov models","Training","Speech recognition","Encoding","Character recognition"
Publisher :
ieee
Conference_Titel :
Automatic Speech Recognition and Understanding (ASRU), 2015 IEEE Workshop on
Type :
conf
DOI :
10.1109/ASRU.2015.7404778
Filename :
7404778
Link To Document :
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