Introspective Learning : A Two-Stage Approach for Inference in Neural Networks
Abstract
In this paper, we advocate for two stages in a neural network's decision making process. The first is the existing feed-forward inference framework where patterns in given data are sensed and associated with previously learned patterns. The second stage is a slower reflection stage where we ask the network to reflect on its feed-forward decision by considering and evaluating all available choices. Together, we term the two stages as introspective learning. We use gradients of trained neural networks as a measurement of this reflection. A simple three-layered Multi Layer Perceptron is used as the second stage that predicts based on all extracted gradient features. We perceptually visualize the post-hoc explanations from both stages to provide a visual grounding to introspection. For the application of recognition, we show that an introspective network is 4% more robust and 42% less prone to calibration errors when generalizing to noisy data. We also illustrate the value of introspective networks in downstream tasks that require generalizability and calibration including active learning, out-of-distribution detection, and uncertainty estimation. Finally, we ground the proposed machine introspection to human introspection for the application of image quality assessment.
Cite
Text
Prabhushankar and AlRegib. "Introspective Learning : A Two-Stage Approach for Inference in Neural Networks." Neural Information Processing Systems, 2022.Markdown
[Prabhushankar and AlRegib. "Introspective Learning : A Two-Stage Approach for Inference in Neural Networks." Neural Information Processing Systems, 2022.](https://mlanthology.org/neurips/2022/prabhushankar2022neurips-introspective/)BibTeX
@inproceedings{prabhushankar2022neurips-introspective,
title = {{Introspective Learning : A Two-Stage Approach for Inference in Neural Networks}},
author = {Prabhushankar, Mohit and AlRegib, Ghassan},
booktitle = {Neural Information Processing Systems},
year = {2022},
url = {https://mlanthology.org/neurips/2022/prabhushankar2022neurips-introspective/}
}