| Literature DB >> 33519390 |
Hyojin Bae1, Sang Jeong Kim2, Chang-Eop Kim1.
Abstract
One of the central goals in systems neuroscience is to understand how information is encoded in the brain, and the standard approach is to identify the relation between a stimulus and a neural response. However, the feature of a stimulus is typically defined by the researcher's hypothesis, which may cause biases in the research conclusion. To demonstrate potential biases, we simulate four likely scenarios using deep neural networks trained on the image classification dataset CIFAR-10 and demonstrate the possibility of selecting suboptimal/irrelevant features or overestimating the network feature representation/noise correlation. Additionally, we present studies investigating neural coding principles in biological neural networks to which our points can be applied. This study aims to not only highlight the importance of careful assumptions and interpretations regarding the neural response to stimulus features but also suggest that the comparative study between deep and biological neural networks from the perspective of machine learning can be an effective strategy for understanding the coding principles of the brain.Entities:
Keywords: biological neural networks; deep neural networks; neural coding; neural feature; shortcut learning; systems neuroscience
Year: 2021 PMID: 33519390 PMCID: PMC7843526 DOI: 10.3389/fnsys.2020.615129
Source DB: PubMed Journal: Front Syst Neurosci ISSN: 1662-5137