Identifying Spurious Correlations and Correcting them with an Explanation-based Learning

11/15/2022
by   Misgina Tsighe Hagos, et al.
0

Identifying spurious correlations learned by a trained model is at the core of refining a trained model and building a trustworthy model. We present a simple method to identify spurious correlations that have been learned by a model trained for image classification problems. We apply image-level perturbations and monitor changes in certainties of predictions made using the trained model. We demonstrate this approach using an image classification dataset that contains images with synthetically generated spurious regions and show that the trained model was overdependent on spurious regions. Moreover, we remove the learned spurious correlations with an explanation based learning approach.

READ FULL TEXT
research
08/02/2023

Unlearning Spurious Correlations in Chest X-ray Classification

Medical image classification models are frequently trained using trainin...
research
11/21/2022

Neural Dependencies Emerging from Learning Massive Categories

This work presents two astonishing findings on neural networks learned f...
research
09/11/2023

Distance-Aware eXplanation Based Learning

eXplanation Based Learning (XBL) is an interactive learning approach tha...
research
08/09/2022

SBPF: Sensitiveness Based Pruning Framework For Convolutional Neural Network On Image Classification

Pruning techniques are used comprehensively to compress convolutional ne...
research
11/03/2020

MACE: Model Agnostic Concept Extractor for Explaining Image Classification Networks

Deep convolutional networks have been quite successful at various image ...
research
03/12/2021

Interleaving Learning, with Application to Neural Architecture Search

Interleaving learning is a human learning technique where a learner inte...
research
05/26/2021

Predict then Interpolate: A Simple Algorithm to Learn Stable Classifiers

We propose Predict then Interpolate (PI), a simple algorithm for learnin...

Please sign up or login with your details

Forgot password? Click here to reset