editedbook

A COMPARITIVE STUDY OF MACHINE LEARNING ALGORITHMS FOR DETECTION OF PARKINSON’S DIEAESE AT AN EARLY STAGE

Area/Stream: Computing Technologies and Data Sciences,
Authors: Dr. Anil Kumar D
Keywords: Machine learning Algorithms, Parkinson's dieaese
Book Name /series: A COMPARITIVE STUDY OF MACHINE LEARNING ALGORITHMS FOR DETECTION OF PARKINSON’S DIEAESE AT AN EARLY STAGE
Publication: IIP Proceedings

Year: 2022,
Month: November

Page No: 267-277,
ISSN/ISBN: 978-81-959356-3-5,
DOI/Link: https://rsquarel.org/assets/docupload/rsl2023343CC87043A0ED6.pdf


Abstract:

Parkinson's disease (PD) is one among many leading public health diseases in the world. This disese has impacted many people and is alarmingly increasing. Thus, it is very important to predict it at an early stage and has been a difficult task among researchers as the symptoms of the disease are evident in either mid or late stages. Thus, this chapter concentrates on the symptoms of speech articulation difficulty of persons with PD and formulates the model using various machine learning like support vector machine, decision tree, random decision forest, and linear regression, adaptive boosting, bagging, neural networks. The performance of these graders is assessed through various measurements, e.g. Accuracy, receptor operating characteristics (ROC) curve, sensitivity, Precision, as well as specificity. Finally, xgboost is used to find the most important features of any feature to predict Parkinson's disease.

Cite this: Dr. Anil Kumar D,"A COMPARITIVE STUDY OF MACHINE LEARNING ALGORITHMS FOR DETECTION OF PARKINSON’S DIEAESE AT AN EARLY STAGE", A COMPARITIVE STUDY OF MACHINE LEARNING ALGORITHMS FOR DETECTION OF PARKINSON’S DIEAESE AT AN EARLY STAGE, November, 2022, 267-277, 978-81-959356-3-5, https://rsquarel.org/assets/docupload/rsl2023343CC87043A0ED6.pdf
Views: 4164 Download File
News

Index your research paper @ RSquareL

Call for research papers evaluation 

Get listed your profile under listing based on your RSquareL Value

Registration for Indexing Author Journal Publisher Conference Organizer
Research Recognition & Listing Young Researcher Young Achiever Research Excellence

Contact Us

RSquareL is the indexing platform developed by Global Academicians & Researchers Network (GARNet.). RSquareL is the abstract database of peer-reviewed scientific journals, books, and conference proceedings that covers research topics across all scientific, technical, and medical disciplines.

Contact Details

Contact Email: publish@rsquarel.org
Write to Us: Click Here
Counter Start Date: 27-12-2021 Flag Counter

© 2024 RSquareL