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Prescriptive analytics for impulsive behaviour prevention using real-time biometrics

The present biometric market segment has been captured by compact, lightweight sensors which are capable of reading the biometric fluctuations of a user in real-time. This biometric market segment has further facilitated rise of a new ecosystem of wearable devices helpful in tracking the real-time p...

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Autores principales: Raychaudhuri, Soumya Jyoti, Manjunath, Soumya, Srinivasan, Chithra Priya, Swathi, N., Sushma, S., Nitin Bhushan, K. N., Narendra Babu, C.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Springer Berlin Heidelberg 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7787132/
http://dx.doi.org/10.1007/s13748-020-00229-9
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author Raychaudhuri, Soumya Jyoti
Manjunath, Soumya
Srinivasan, Chithra Priya
Swathi, N.
Sushma, S.
Nitin Bhushan, K. N.
Narendra Babu, C.
author_facet Raychaudhuri, Soumya Jyoti
Manjunath, Soumya
Srinivasan, Chithra Priya
Swathi, N.
Sushma, S.
Nitin Bhushan, K. N.
Narendra Babu, C.
author_sort Raychaudhuri, Soumya Jyoti
collection PubMed
description The present biometric market segment has been captured by compact, lightweight sensors which are capable of reading the biometric fluctuations of a user in real-time. This biometric market segment has further facilitated rise of a new ecosystem of wearable devices helpful in tracking the real-time physiological data for Healthcare-related analysis. However, the devices in the smart-wearable ecosystem are limited to capturing and displaying the biometrics without any prescriptive analytics. This paper addresses this gap to analyse the human emotion space based on an individual’s state of mind over the past 60 min and employs Deep Learning and Bayesian prediction techniques to predict the possibility of an impulsive outburst within upcoming few minutes. A lightweight smart processing device mounted with sensors captures the biometrics of the user and calibrate the same to the mental state of the user on a scale of zero to hundred. The results reveal that the deep learning algorithm along with the Bayesian probability module can predict the future mood fluctuations of the user with lower error than the other contemporary models. The predicted mood fluctuations has matched with the actual mood changes of the experimental subject within [Formula: see text]  min of the predicted time index in 93% of the cases and within [Formula: see text]  min in 82% of the cases.
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spelling pubmed-77871322021-01-07 Prescriptive analytics for impulsive behaviour prevention using real-time biometrics Raychaudhuri, Soumya Jyoti Manjunath, Soumya Srinivasan, Chithra Priya Swathi, N. Sushma, S. Nitin Bhushan, K. N. Narendra Babu, C. Prog Artif Intell Regular Paper The present biometric market segment has been captured by compact, lightweight sensors which are capable of reading the biometric fluctuations of a user in real-time. This biometric market segment has further facilitated rise of a new ecosystem of wearable devices helpful in tracking the real-time physiological data for Healthcare-related analysis. However, the devices in the smart-wearable ecosystem are limited to capturing and displaying the biometrics without any prescriptive analytics. This paper addresses this gap to analyse the human emotion space based on an individual’s state of mind over the past 60 min and employs Deep Learning and Bayesian prediction techniques to predict the possibility of an impulsive outburst within upcoming few minutes. A lightweight smart processing device mounted with sensors captures the biometrics of the user and calibrate the same to the mental state of the user on a scale of zero to hundred. The results reveal that the deep learning algorithm along with the Bayesian probability module can predict the future mood fluctuations of the user with lower error than the other contemporary models. The predicted mood fluctuations has matched with the actual mood changes of the experimental subject within [Formula: see text]  min of the predicted time index in 93% of the cases and within [Formula: see text]  min in 82% of the cases. Springer Berlin Heidelberg 2021-01-06 2021 /pmc/articles/PMC7787132/ http://dx.doi.org/10.1007/s13748-020-00229-9 Text en © Springer-Verlag GmbH Germany, part of Springer Nature 2021 This article is made available via the PMC Open Access Subset for unrestricted research re-use and secondary analysis in any form or by any means with acknowledgement of the original source. These permissions are granted for the duration of the World Health Organization (WHO) declaration of COVID-19 as a global pandemic.
spellingShingle Regular Paper
Raychaudhuri, Soumya Jyoti
Manjunath, Soumya
Srinivasan, Chithra Priya
Swathi, N.
Sushma, S.
Nitin Bhushan, K. N.
Narendra Babu, C.
Prescriptive analytics for impulsive behaviour prevention using real-time biometrics
title Prescriptive analytics for impulsive behaviour prevention using real-time biometrics
title_full Prescriptive analytics for impulsive behaviour prevention using real-time biometrics
title_fullStr Prescriptive analytics for impulsive behaviour prevention using real-time biometrics
title_full_unstemmed Prescriptive analytics for impulsive behaviour prevention using real-time biometrics
title_short Prescriptive analytics for impulsive behaviour prevention using real-time biometrics
title_sort prescriptive analytics for impulsive behaviour prevention using real-time biometrics
topic Regular Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7787132/
http://dx.doi.org/10.1007/s13748-020-00229-9
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