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Recent Advances at the Interface of Neuroscience and Artificial Neural Networks

Yarden Cohen, Tatiana A. Engel, Christopher Langdon, Grace W. Lindsay, Torben Ott, Megan A. K. Peters, James M. Shine, Vincent Breton‐Provencher, Srikanth Ramaswamy

2022Journal of Neuroscience34 citationsDOIOpen Access PDF

Abstract

Biological neural networks adapt and learn in diverse behavioral contexts. Artificial neural networks (ANNs) have exploited biological properties to solve complex problems. However, despite their effectiveness for specific tasks, ANNs are yet to realize the flexibility and adaptability of biological cognition. This review highlights recent advances in computational and experimental research to advance our understanding of biological and artificial intelligence. In particular, we discuss critical mechanisms from the cellular, systems, and cognitive neuroscience fields that have contributed to refining the architecture and training algorithms of ANNs. Additionally, we discuss how recent work used ANNs to understand complex neuronal correlates of cognition and to process high throughput behavioral data.

Topics & Concepts

Computer scienceFlexibility (engineering)Artificial neural networkComputational neuroscienceCognitionAdaptabilityArtificial intelligenceCognitive neuroscienceCognitive scienceSystems neuroscienceNeuroscienceNervous system network modelsInterface (matter)PsychologyRecurrent neural networkTypes of artificial neural networksBiologyBubbleOligodendrocyteMyelinMaximum bubble pressure methodCentral nervous systemEcologyMathematicsStatisticsParallel computingNeural dynamics and brain functionNeural Networks and ApplicationsCell Image Analysis Techniques
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