LGNENov 21, 2015

Online Sequence Training of Recurrent Neural Networks with Connectionist Temporal Classification

arXiv:1511.06841v59 citations
Originality Incremental advance
AI Analysis

This work addresses the problem of inefficient online learning and adaptation for RNNs in speech recognition, offering a domain-specific incremental improvement.

The authors tackled the memory and efficiency limitations of training recurrent neural networks with connectionist temporal classification by introducing an expectation-maximization based online algorithm, achieving a 20.7% phoneme error rate on concatenated TIMIT test sequences and a 4.5% relative word error rate increase on WSJ with reduced unrolling.

Connectionist temporal classification (CTC) based supervised sequence training of recurrent neural networks (RNNs) has shown great success in many machine learning areas including end-to-end speech and handwritten character recognition. For the CTC training, however, it is required to unroll (or unfold) the RNN by the length of an input sequence. This unrolling requires a lot of memory and hinders a small footprint implementation of online learning or adaptation. Furthermore, the length of training sequences is usually not uniform, which makes parallel training with multiple sequences inefficient on shared memory models such as graphics processing units (GPUs). In this work, we introduce an expectation-maximization (EM) based online CTC algorithm that enables unidirectional RNNs to learn sequences that are longer than the amount of unrolling. The RNNs can also be trained to process an infinitely long input sequence without pre-segmentation or external reset. Moreover, the proposed approach allows efficient parallel training on GPUs. For evaluation, phoneme recognition and end-to-end speech recognition examples are presented on the TIMIT and Wall Street Journal (WSJ) corpora, respectively. Our online model achieves 20.7% phoneme error rate (PER) on the very long input sequence that is generated by concatenating all 192 utterances in the TIMIT core test set. On WSJ, a network can be trained with only 64 times of unrolling while sacrificing 4.5% relative word error rate (WER).

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