Reinforcement Learning in Neuroimaging

Sarakam, Bhuvan Chandra (2025) Reinforcement Learning in Neuroimaging. International Journal of Innovative Science and Research Technology, 10 (6): 25jun172. pp. 123-132. ISSN 2456-2165

Abstract

Support learning (RL) offers a promising methodology for breaking down complex neuroimaging information and up- grading how brain function can be understood through adaptive algorithms. This paper explores the integration of reinforcement learning (RL) methods within neuroimaging frameworks, demon- strating how RL can be used to model and interpret high- dimensional datasets, such as functional MRI. By leveraging sci-kit-learn’s machine learning tools, potential applications of RL in neuroimaging are illustrated, including the classification and prediction of neural responses to stimuli. The discoveries propose that RL could be instrumental in recognizing designs and directing neuroimaging research, progressing customized clinical methodologies in mental and neurological wellbeing.

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