Scopus Indexed Publications

Paper Details


Title
Comparative Analysis to identify the best Classifier for Parkinson Prediction
Author
F.M. Javed Mehedi Shamrat, Ahbab Hossain, Shohag Kumar Bhowmik, Zakia Sultana,
Email
Abstract
Parkinson disease has become one of the most common diseases among people over the age of 65. Neurodegenerative disease affects movement, speech and other cognitive abilities. Among patients, the symptoms vary at a different rate, for which diagnosis of the disease sometimes takes years by when treatment is no longer an option. However, using machine learning algorithms to classify the symptoms among patients, it is possible for early detection of the disease. İn this paper, the performance of machine learning algorithms are measures that can detect Parkinson disease. Three different datasets are used for the study. Each dataset goes through various feature selection techniques. Machine learning classifiers such as KNN, LDA, NB, LR, SVM, DT, RT, RF and ANN are implemented on the datasets and their performance is measured. It is observed that SVM has a high accuracy rate of prediction over all the feature selection techniques in all the datasets.
Keywords
Parkinson detection , Feature selection , Machine learning Classifier , SVM , Performance measure , Accuracy
Journal or Conference Name
2021 2nd International Conference on Smart Electronics and Communication (ICOSEC)
Publication Year
2021
Indexing
scopus