Fundamentals and Methods of Machine and Deep Learning. Pradeep Singh
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Название: Fundamentals and Methods of Machine and Deep Learning

Автор: Pradeep Singh

Издательство: John Wiley & Sons Limited

Жанр: Программы

Серия:

isbn: 9781119821885

isbn:

СКАЧАТЬ Intelligence Applications in Computer Engineering: Real Word AI Systems with Applications in eHealth, HCI, Information Retrieval and Pervasive Technologies, The Netherlands, 2007.

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      1 * Corresponding author: [email protected]

      2 † Corresponding author: [email protected]

      3 ‡ Corresponding author: [email protected]

      4 § Corresponding author: [email protected]

      2

      Zonotic Diseases Detection Using Ensemble Machine Learning Algorithms

       Bhargavi K.

       Department of Computer Science and Engineering, Siddaganga Institute of Technology, Tumakuru, India

       Abstract

      Keywords: Zonotic disease, ensemble machine learning, Bayes optimal classifier, bagging, boosting, Bayesian model averaging, Bayesian model combination, stacking

      Zonotic diseases are a kind of infectious disease which spreads from animals to human beings; the disease usually spreads from infectious agents like virus, prion, virus, and bacteria. The human being who gets affected first will, in turn, spread that disease to other human beings likewise the chain of disease builds. The zonotic disease gets transferred in two different mode of transmission, one is direct transmission in which disease get transferred from animal to human being, and the other is intermediate transmission in which the disease get transferred via intermediate species that carry the disease pathogen. The emergence of zonotic diseases usually happens in large regional, global, political, economic, national, and social forces levels. There are eight most common zonotic diseases which spread from animal to humans on a wider geographical area which include zonotic influenza, salmonellosis, West Nile virus, plague, corona viruses, rabies, brucellosis, and lyme disease. Early identification of such infectious disease is very much necessary which can be done using ensemble machine learning techniques [1, 2].

      The identification and controlling of spread of zonotic disease is challenging due to several issues which includes no proper symptoms, signs of zoonoses are very much similar, improper vaccination of animals, poor knowledge among the peoples about animal health, costly to control the world wide spread of the disease, not likely to change the habits of people, prioritization of symptoms of disease is difficult, lack of proper clothing, sudden raise in morbidity of the humans, consumption of spoiled or contaminated СКАЧАТЬ