Structured Sparsification of Gated Recurrent Neural Networks

11/13/2019
by   Ekaterina Lobacheva, et al.
0

Recently, a lot of techniques were developed to sparsify the weights of neural networks and to remove networks' structure units, e.g. neurons. We adjust the existing sparsification approaches to the gated recurrent architectures. Specifically, in addition to the sparsification of weights and neurons, we propose sparsifying the preactivations of gates. This makes some gates constant and simplifies LSTM structure. We test our approach on the text classification and language modeling tasks. We observe that the resulting structure of gate sparsity depends on the task and connect the learned structure to the specifics of the particular tasks. Our method also improves neuron-wise compression of the model in most of the tasks.

READ FULL TEXT

page 1

page 4

research
12/12/2018

Bayesian Sparsification of Gated Recurrent Neural Networks

Bayesian methods have been successfully applied to sparsify weights of n...
research
01/15/2018

Predicting Movie Genres Based on Plot Summaries

This project explores several Machine Learning methods to predict movie ...
research
02/26/2020

Refined Gate: A Simple and Effective Gating Mechanism for Recurrent Units

Recurrent neural network (RNN) has been widely studied in sequence learn...
research
05/21/2017

Recurrent Additive Networks

We introduce recurrent additive networks (RANs), a new gated RNN which i...
research
03/22/2017

Gate Activation Signal Analysis for Gated Recurrent Neural Networks and Its Correlation with Phoneme Boundaries

In this paper we analyze the gate activation signals inside the gated re...
research
06/17/2019

Structured Pruning of Recurrent Neural Networks through Neuron Selection

Recurrent neural networks (RNNs) have recently achieved remarkable succe...
research
05/16/2019

Gated Convolutional Neural Networks for Domain Adaptation

Domain Adaptation explores the idea of how to maximize performance on a ...

Please sign up or login with your details

Forgot password? Click here to reset