Reducing the Computational Cost of Deep Generative Models with Binary Neural Networks

10/26/2020
by   Thomas Bird, et al.
0

Deep generative models provide a powerful set of tools to understand real-world data. But as these models improve, they increase in size and complexity, so their computational cost in memory and execution time grows. Using binary weights in neural networks is one method which has shown promise in reducing this cost. However, whether binary neural networks can be used in generative models is an open problem. In this work we show, for the first time, that we can successfully train generative models which utilize binary neural networks. This reduces the computational cost of the models massively. We develop a new class of binary weight normalization, and provide insights for architecture designs of these binarized generative models. We demonstrate that two state-of-the-art deep generative models, the ResNet VAE and Flow++ models, can be binarized effectively using these techniques. We train binary models that achieve loss values close to those of the regular models but are 90 smaller in size, and also allow significant speed-ups in execution time.

READ FULL TEXT
research
04/25/2023

Discovering Graph Generation Algorithms

We provide a novel approach to construct generative models for graphs. I...
research
07/12/2023

Deep Generative Models for Physiological Signals: A Systematic Literature Review

In this paper, we present a systematic literature review on deep generat...
research
07/06/2021

A Multi-Objective Approach for Sustainable Generative Audio Models

In recent years, the deep learning community has largely focused on the ...
research
10/07/2020

High-Capacity Expert Binary Networks

Network binarization is a promising hardware-aware direction for creatin...
research
10/05/2020

Winning Lottery Tickets in Deep Generative Models

The lottery ticket hypothesis suggests that sparse, sub-networks of a gi...
research
12/14/2021

Deep Generative Models for Vehicle Speed Trajectories

Generating realistic vehicle speed trajectories is a crucial component i...
research
07/06/2021

Provable Lipschitz Certification for Generative Models

We present a scalable technique for upper bounding the Lipschitz constan...

Please sign up or login with your details

Forgot password? Click here to reset