Emergent Quantized Communication

11/04/2022
by   Boaz Carmeli, et al.
0

The field of emergent communication aims to understand the characteristics of communication as it emerges from artificial agents solving tasks that require information exchange. Communication with discrete messages is considered a desired characteristic, for both scientific and applied reasons. However, training a multi-agent system with discrete communication is not straightforward, requiring either reinforcement learning algorithms or relaxing the discreteness requirement via a continuous approximation such as the Gumbel-softmax. Both these solutions result in poor performance compared to fully continuous communication. In this work, we propose an alternative approach to achieve discrete communication – quantization of communicated messages. Using message quantization allows us to train the model end-to-end, achieving superior performance in multiple setups. Moreover, quantization is a natural framework that runs the gamut from continuous to discrete communication. Thus, it sets the ground for a broader view of multi-agent communication in the deep learning era.

READ FULL TEXT

page 6

page 11

research
02/24/2021

Learning Emergent Discrete Message Communication for Cooperative Reinforcement Learning

Communication is a important factor that enables agents work cooperative...
research
02/02/2022

Adaptive Discrete Communication Bottlenecks with Dynamic Vector Quantization

Vector Quantization (VQ) is a method for discretizing latent representat...
research
03/18/2018

Detection under One-Bit Messaging over Adaptive Networks

This work studies the operation of multi-agent networks engaged in binar...
research
06/30/2022

Towards Human-Agent Communication via the Information Bottleneck Principle

Emergent communication research often focuses on optimizing task-specifi...
research
06/06/2023

Inductive Bias for Emergent Communication in a Continuous Setting

We study emergent communication in a multi-agent reinforcement learning ...
research
04/12/2022

An Analysis of Discretization Methods for Communication Learning with Multi-Agent Reinforcement Learning

Communication is crucial in multi-agent reinforcement learning when agen...
research
02/12/2020

Connectivity-driven Communication in Multi-agent Reinforcement Learning through Diffusion Processes on Graphs

We discuss the problem of learning collaborative behaviour in multi-agen...

Please sign up or login with your details

Forgot password? Click here to reset