Fixed-Point Performance Analysis of Recurrent Neural Networks

12/04/2015
by   Sungho Shin, et al.
0

Recurrent neural networks have shown excellent performance in many applications, however they require increased complexity in hardware or software based implementations. The hardware complexity can be much lowered by minimizing the word-length of weights and signals. This work analyzes the fixed-point performance of recurrent neural networks using a retrain based quantization method. The quantization sensitivity of each layer in RNNs is studied, and the overall fixed-point optimization results minimizing the capacity of weights while not sacrificing the performance are presented. A language model and a phoneme recognition examples are used.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/06/2021

TENT: Efficient Quantization of Neural Networks on the tiny Edge with Tapered FixEd PoiNT

In this research, we propose a new low-precision framework, TENT, to lev...
research
11/01/2020

Abelian Complexity and Synchronization

We present a general method for computing the abelian complexity ρ^ ab_ ...
research
11/22/2017

Equivalence of Equilibrium Propagation and Recurrent Backpropagation

Recurrent Backpropagation and Equilibrium Propagation are algorithms for...
research
07/16/2019

Learning Multimodal Fixed-Point Weights using Gradient Descent

Due to their high computational complexity, deep neural networks are sti...
research
08/14/2016

Dynamic Hand Gesture Recognition for Wearable Devices with Low Complexity Recurrent Neural Networks

Gesture recognition is a very essential technology for many wearable dev...
research
11/10/2017

Quantized Memory-Augmented Neural Networks

Memory-augmented neural networks (MANNs) refer to a class of neural netw...

Please sign up or login with your details

Forgot password? Click here to reset