Reinforcement learning for adaptive threshold control of restorative brain-computer interfaces: a Bayesian simulation

Restorative brain-computer interfaces (BCI) are increasingly used to provide feedback of neuronal states in a bid to normalize pathological brain activity and achieve behavioral gains. However, patients and healthy subjects alike often show a large variability, or even inability, of brain self-regul...

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Main Authors: Robert eBauer, Alireza eGharabaghi
Format: Article
Language:English
Published: Frontiers Media S.A. 2015-02-01
Series:Frontiers in Neuroscience
Subjects:
Online Access:http://journal.frontiersin.org/Journal/10.3389/fnins.2015.00036/full
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spelling doaj-87e98a633d6e43eaac91fbb632a1bb082020-11-24T20:55:11ZengFrontiers Media S.A.Frontiers in Neuroscience1662-453X2015-02-01910.3389/fnins.2015.00036111255Reinforcement learning for adaptive threshold control of restorative brain-computer interfaces: a Bayesian simulationRobert eBauer0Robert eBauer1Alireza eGharabaghi2Alireza eGharabaghi3University Hospital TuebingenEberhard Karls University TuebingenUniversity Hospital TuebingenEberhard Karls University TuebingenRestorative brain-computer interfaces (BCI) are increasingly used to provide feedback of neuronal states in a bid to normalize pathological brain activity and achieve behavioral gains. However, patients and healthy subjects alike often show a large variability, or even inability, of brain self-regulation for BCI control, known as BCI illiteracy. Although current co-adaptive algorithms are powerful for assistive BCIs, their inherent class switching clashes with the operant conditioning goal of restorative BCIs. Moreover, due to the treatment rationale, the classifier of restorative BCIs usually has a constrained feature space, thus limiting the possibility of classifier adaptation.In this context, we applied a Bayesian model of neurofeedback and reinforcement learning for different threshold selection strategies to study the impact of threshold adaptation of a linear classifier on optimizing restorative BCIs. For each feedback iteration, we first determined the thresholds that result in minimal action entropy and maximal instructional efficiency. We then used the resulting vector for the simulation of continuous threshold adaptation. We could thus show that threshold adaptation can improve reinforcement learning, particularly in cases of BCI illiteracy. Finally, on the basis of information-theory, we provided an explanation for the achieved benefits of adaptive threshold setting.http://journal.frontiersin.org/Journal/10.3389/fnins.2015.00036/fullNeurofeedbackNeurorehabilitationreinforcement learningBrain-Computer-InterfaceBrain-Machine-Interface (BMI)reinforcement learning model
collection DOAJ
language English
format Article
sources DOAJ
author Robert eBauer
Robert eBauer
Alireza eGharabaghi
Alireza eGharabaghi
spellingShingle Robert eBauer
Robert eBauer
Alireza eGharabaghi
Alireza eGharabaghi
Reinforcement learning for adaptive threshold control of restorative brain-computer interfaces: a Bayesian simulation
Frontiers in Neuroscience
Neurofeedback
Neurorehabilitation
reinforcement learning
Brain-Computer-Interface
Brain-Machine-Interface (BMI)
reinforcement learning model
author_facet Robert eBauer
Robert eBauer
Alireza eGharabaghi
Alireza eGharabaghi
author_sort Robert eBauer
title Reinforcement learning for adaptive threshold control of restorative brain-computer interfaces: a Bayesian simulation
title_short Reinforcement learning for adaptive threshold control of restorative brain-computer interfaces: a Bayesian simulation
title_full Reinforcement learning for adaptive threshold control of restorative brain-computer interfaces: a Bayesian simulation
title_fullStr Reinforcement learning for adaptive threshold control of restorative brain-computer interfaces: a Bayesian simulation
title_full_unstemmed Reinforcement learning for adaptive threshold control of restorative brain-computer interfaces: a Bayesian simulation
title_sort reinforcement learning for adaptive threshold control of restorative brain-computer interfaces: a bayesian simulation
publisher Frontiers Media S.A.
series Frontiers in Neuroscience
issn 1662-453X
publishDate 2015-02-01
description Restorative brain-computer interfaces (BCI) are increasingly used to provide feedback of neuronal states in a bid to normalize pathological brain activity and achieve behavioral gains. However, patients and healthy subjects alike often show a large variability, or even inability, of brain self-regulation for BCI control, known as BCI illiteracy. Although current co-adaptive algorithms are powerful for assistive BCIs, their inherent class switching clashes with the operant conditioning goal of restorative BCIs. Moreover, due to the treatment rationale, the classifier of restorative BCIs usually has a constrained feature space, thus limiting the possibility of classifier adaptation.In this context, we applied a Bayesian model of neurofeedback and reinforcement learning for different threshold selection strategies to study the impact of threshold adaptation of a linear classifier on optimizing restorative BCIs. For each feedback iteration, we first determined the thresholds that result in minimal action entropy and maximal instructional efficiency. We then used the resulting vector for the simulation of continuous threshold adaptation. We could thus show that threshold adaptation can improve reinforcement learning, particularly in cases of BCI illiteracy. Finally, on the basis of information-theory, we provided an explanation for the achieved benefits of adaptive threshold setting.
topic Neurofeedback
Neurorehabilitation
reinforcement learning
Brain-Computer-Interface
Brain-Machine-Interface (BMI)
reinforcement learning model
url http://journal.frontiersin.org/Journal/10.3389/fnins.2015.00036/full
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