Deep Weighted Averaging Classifiers

11/06/2018
by   Dallas Card, et al.
4

Recent advances in deep learning have achieved impressive gains in classification accuracy on a variety of types of data, including images and text. Despite these gains, however, concerns have been raised about the interpretability of these models, as well as issues related to calibration and robustness. In this paper we propose a simple way to modify any conventional deep architecture to automatically provide more transparent explanations for classification decisions, as well as an intuitive notion of the credibility of each prediction. Specifically, we draw on ideas from nonparametric kernel regression, and propose to predict labels based on a weighted sum of training instances, where the weights are determined by distance in a learned instance-embedding space. Working within the framework of conformal methods, we propose a new measure of nonconformity suggested by our model, and experimentally validate the accompanying theoretical expectations, demonstrating improved transparency, controlled error rates, and robustness to out-of-domain data, without compromising on accuracy or calibration.

READ FULL TEXT
research
02/15/2022

Taking a Step Back with KCal: Multi-Class Kernel-Based Calibration for Deep Neural Networks

Deep neural network (DNN) classifiers are often overconfident, producing...
research
10/19/2020

Combining Ensembles and Data Augmentation can Harm your Calibration

Ensemble methods which average over multiple neural network predictions ...
research
09/12/2022

Model interpretation using improved local regression with variable importance

A fundamental question on the use of ML models concerns the explanation ...
research
05/20/2023

Distribution-Free Model-Agnostic Regression Calibration via Nonparametric Methods

In this paper, we consider the uncertainty quantification problem for re...
research
07/17/2022

Uncertainty Calibration in Bayesian Neural Networks via Distance-Aware Priors

As we move away from the data, the predictive uncertainty should increas...
research
11/14/2022

Robustifying Deep Vision Models Through Shape Sensitization

Recent work has shown that deep vision models tend to be overly dependen...

Please sign up or login with your details

Forgot password? Click here to reset