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arxiv: 1602.06064 · v3 · pith:UWCVBJRCnew · submitted 2016-02-19 · 💻 cs.CL

On Training Bi-directional Neural Network Language Model with Noise Contrastive Estimation

classification 💻 cs.CL
keywords bi-directionalnnlmcontrastiveestimationlanguagemodelnetworkneural
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We propose to train bi-directional neural network language model(NNLM) with noise contrastive estimation(NCE). Experiments are conducted on a rescore task on the PTB data set. It is shown that NCE-trained bi-directional NNLM outperformed the one trained by conventional maximum likelihood training. But still(regretfully), it did not out-perform the baseline uni-directional NNLM.

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