Network Classifiers With Output Smoothing

10/30/2019
by   Elsa Rizk, et al.
0

This work introduces two strategies for training network classifiers with heterogeneous agents. One strategy promotes global smoothing over the graph and a second strategy promotes local smoothing over neighbourhoods. It is assumed that the feature sizes can vary from one agent to another, with some agents observing insufficient attributes to be able to make reliable decisions on their own. As a result, cooperation with neighbours is necessary. However, due to the fact that the feature dimensions are different across the agents, their classifier dimensions will also be different. This means that cooperation cannot rely on combining the classifier parameters. We instead propose smoothing the outputs of the classifiers, which are the predicted labels. By doing so, the dynamics that describes the evolution of the network classifier becomes more challenging than usual because the classifier parameters end up appearing as part of the regularization term as well. We illustrate performance by means of computer simulations.

READ FULL TEXT
research
12/17/2021

Learning from Heterogeneous Data Based on Social Interactions over Graphs

This work proposes a decentralized architecture, where individual agents...
research
05/29/2018

Learning Under Distributed Features

This work studies the problem of learning under both large data and larg...
research
06/07/2020

Consistency Regularization for Certified Robustness of Smoothed Classifiers

A recent technique of randomized smoothing has shown that the worst-case...
research
01/14/2021

Should the government reward cooperation? Insights from an agent-based model of wealth redistribution

In our multi-agent model agents generate wealth from repeated interactio...
research
10/23/2020

Network Classifiers Based on Social Learning

This work proposes a new way of combining independently trained classifi...
research
08/17/2016

Simulation of an Optional Strategy in the Prisoner's Dilemma in Spatial and Non-spatial Environments

This paper presents research comparing the effects of different environm...
research
03/19/2020

Adjust Planning Strategies to Accommodate Reinforcement Learning Agents

In agent control issues, the idea of combining reinforcement learning an...

Please sign up or login with your details

Forgot password? Click here to reset