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2020 | OriginalPaper | Chapter

Classification and Prediction Analysis of Diseases and Other Datasets Using Machine Learning

Authors : Junaid Nasir, Alishba Ahsan, Nadeem Sarwar, Wajid Rafique, Sameer Malik, Syed Zeeshan Hussain Shah, Sarousha Nasir, Asma Irshad

Published in: Intelligent Technologies and Applications

Publisher: Springer Singapore

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Abstract

Classification is one of the most used machine learning technique especially in the prediction of daily life things. Its first step is grouping, dividing, categorizing, and separation of datasets based on future vectors. Classification procedure has many algorithms, some of them are Random Forest, Naïve Bayes, Decision Tree and Support Vector Machine. Before the implementation of every technique, the model is created and then training of dataset has been made on that model. Learning the algorithm-generated model must be fit for both the input dataset and forecast the records of class label. Many models are available for prediction of a class label from unknown records. In this paper, different classifiers such as Linear SVM, Ensemble, the Decision tree has been applied and their accuracy and time analyzed on different datasets. The Liver Patient, Wine Quality, Breast Cancer and Bupa Liver Disorder datasets are used for calculating the performance and accuracy by using 10 cross-fold validation technique. In the end, all the applied algorithm results have been calculated and compared in the terms of accuracy and execution time.

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Metadata
Title
Classification and Prediction Analysis of Diseases and Other Datasets Using Machine Learning
Authors
Junaid Nasir
Alishba Ahsan
Nadeem Sarwar
Wajid Rafique
Sameer Malik
Syed Zeeshan Hussain Shah
Sarousha Nasir
Asma Irshad
Copyright Year
2020
Publisher
Springer Singapore
DOI
https://doi.org/10.1007/978-981-15-5232-8_37

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