Ablation Studies in Artificial Neural Networks
Richard Meyes, Melanie Lu, Constantin Waubert de Puiseau, Tobias, Meisen

TL;DR
This paper explores the use of ablation studies in artificial neural networks to understand their internal representations, robustness, and recovery capabilities, drawing parallels with neuroscience methods.
Contribution
It demonstrates that ablation studies can reveal how features are represented and redundancies exist in ANNs, aiding understanding of their robustness and resilience.
Findings
Features are selectively represented in specific network parts.
Some representations are redundant, enhancing robustness.
Damaged networks can recover through recovery training.
Abstract
Ablation studies have been widely used in the field of neuroscience to tackle complex biological systems such as the extensively studied Drosophila central nervous system, the vertebrate brain and more interestingly and most delicately, the human brain. In the past, these kinds of studies were utilized to uncover structure and organization in the brain, i.e. a mapping of features inherent to external stimuli onto different areas of the neocortex. considering the growth in size and complexity of state-of-the-art artificial neural networks (ANNs) and the corresponding growth in complexity of the tasks that are tackled by these networks, the question arises whether ablation studies may be used to investigate these networks for a similar organization of their inner representations. In this paper, we address this question and performed two ablation studies in two fundamentally different ANNs…
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Taxonomy
TopicsNeural Networks and Applications · Neurobiology and Insect Physiology Research
