Interpretable Diversity Analysis: Visualizing Feature Representations In Low-Cost Ensembles

02/12/2023
by   Tim Whitaker, et al.
0

Diversity is an important consideration in the construction of robust neural network ensembles. A collection of well trained models will generalize better if they are diverse in the patterns they respond to and the predictions they make. Diversity is especially important for low-cost ensemble methods because members often share network structure in order to avoid training several independent models from scratch. Diversity is traditionally analyzed by measuring differences between the outputs of models. However, this gives little insight into how knowledge representations differ between ensemble members. This paper introduces several interpretability methods that can be used to qualitatively analyze diversity. We demonstrate these techniques by comparing the diversity of feature representations between child networks using two low-cost ensemble algorithms, Snapshot Ensembles and Prune and Tune Ensembles. We use the same pre-trained parent network as a starting point for both methods which allows us to explore how feature representations evolve over time. This approach to diversity analysis can lead to valuable insights and new perspectives for how we measure and promote diversity in ensemble methods.

READ FULL TEXT

page 2

page 5

page 6

page 7

research
02/23/2022

Prune and Tune Ensembles: Low-Cost Ensemble Learning With Sparse Independent Subnetworks

Ensemble Learning is an effective method for improving generalization in...
research
12/26/2021

Efficient Diversity-Driven Ensemble for Deep Neural Networks

The ensemble of deep neural networks has been shown, both theoretically ...
research
11/04/2019

Ensembles of Locally Independent Prediction Models

Many ensemble methods encourage their constituent models to be diverse, ...
research
01/14/2021

DICE: Diversity in Deep Ensembles via Conditional Redundancy Adversarial Estimation

Deep ensembles perform better than a single network thanks to the divers...
research
03/04/2023

Multi-Symmetry Ensembles: Improving Diversity and Generalization via Opposing Symmetries

Deep ensembles (DE) have been successful in improving model performance ...
research
02/01/2005

Neural network ensembles: Evaluation of aggregation algorithms

Ensembles of artificial neural networks show improved generalization cap...
research
01/26/2022

Visualizing the diversity of representations learned by Bayesian neural networks

Explainable artificial intelligence (XAI) aims to make learning machines...

Please sign up or login with your details

Forgot password? Click here to reset