Ph.D. Dissertation Proposal Defense "Slim Embedding Layers for Recurrent Neural Language Models" by Zhongliang Li

Tuesday, May 2, 2017, 10 am to Noon
Campus: 
Dayton
304 Russ
Audience: 
Current Students
Faculty

Ph.D. Committee:  Drs. Michael Raymer (advisor), Shaojun Wang, TK Prasad, Jack Jean, and Xinhui Zhang (BIE)

ABSTRACT:

Recurrent neural language models are the state-of-the-art models for language modeling.  When the vocabulary size is large, the space taken to store the model parameters becomes the bottleneck for the use of recurrent neural language models. In this paper, we introduce a simple space compression method that randomly shares the structured parameters at both the input and output embedding layers of the recurrent neural language models to significantly reduce the size of model parameters, but still compactly represent the original input and output embedding layers.  The method is easy to implement and tune. Experiments on several data sets show that the new method can get similar perplexity and BLEU score results while only using a very tiny fraction of parameters.

For information, contact
Log in to submit a correction for this event (subject to moderation).