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Active Learning To Minimize The Possible Risk Of Future Epidemics Kc Santosh

  • SKU: BELL-53773952
Active Learning To Minimize The Possible Risk Of Future Epidemics Kc Santosh
$ 31.00 $ 45.00 (-31%)

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Active Learning To Minimize The Possible Risk Of Future Epidemics Kc Santosh instant download after payment.

Publisher: Springer
File Extension: PDF
File size: 2.89 MB
Pages: 107
Author: KC Santosh, Suprim Nakarmi
ISBN: 9789819974412, 9819974410
Language: English
Year: 2024

Product desciption

Active Learning To Minimize The Possible Risk Of Future Epidemics Kc Santosh by Kc Santosh, Suprim Nakarmi 9789819974412, 9819974410 instant download after payment.

Future epidemics are inevitable, and it takes months and even years to collect fully annotated data. The sheer magnitude of data required for machine learning algorithms, spanning both shallow and deep structures, raises a fundamental question: how big data is big enough to effectively tackle future epidemics? In this context, active learning, often referred to as human or expert-in-the-loop learning, becomes imperative, enabling machines to commence learning from day one with minimal labeled data. In unsupervised learning, the focus shifts toward constructing advanced machine learning models like deep structured networks that autonomously learn over time, with human or expert intervention only when errors occur and for limited data—a process we term mentoring. In the context of Covid-19, this book explores the use of deep features to classify data into two clusters (0/1: Covid-19/non-Covid-19) across three distinct datasets: cough sound, Computed Tomography(CT) scan, and chest x-ray (CXR). Not to be confused, our primary objective is to provide a strong assertion on how active learning could potentially be used to predict disease from any upcoming epidemics. Upon request (education/training purpose), GitHub source codes are provided.

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