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Main Author: Taranath, Jayanth R
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2503.06374
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author Taranath, Jayanth R
author_facet Taranath, Jayanth R
contents One of the central aims of neuroscience is to reliably predict the behavioral response of an organism using its neural activity. If possible, this implies we can causally manipulate the neural response and design brain-computer-interface systems to alter behavior, and vice-versa. Hence, predictions play an important role in both fundamental neuroscience and its applications. Can we predict the neural and behavioral states of an organism at any given time? Can we predict behavioral states using neural states, and vice-versa, and is there a memory-component required to reliably predict such states? Are the predictions computable within a given timescale to meaningfully stimulate and make the system reach the desired states? Through a series of mathematical treatments, such conjectures and questions are discussed. Answering them might be key for future developments in understanding intelligence and designing brain-computer-interfaces.
format Preprint
id arxiv_https___arxiv_org_abs_2503_06374
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle On Questions of Predictability and Control of an Intelligent System Using Probabilistic State-Transitions
Taranath, Jayanth R
Neurons and Cognition
One of the central aims of neuroscience is to reliably predict the behavioral response of an organism using its neural activity. If possible, this implies we can causally manipulate the neural response and design brain-computer-interface systems to alter behavior, and vice-versa. Hence, predictions play an important role in both fundamental neuroscience and its applications. Can we predict the neural and behavioral states of an organism at any given time? Can we predict behavioral states using neural states, and vice-versa, and is there a memory-component required to reliably predict such states? Are the predictions computable within a given timescale to meaningfully stimulate and make the system reach the desired states? Through a series of mathematical treatments, such conjectures and questions are discussed. Answering them might be key for future developments in understanding intelligence and designing brain-computer-interfaces.
title On Questions of Predictability and Control of an Intelligent System Using Probabilistic State-Transitions
topic Neurons and Cognition
url https://arxiv.org/abs/2503.06374