Title of article
Cancer detection from textual data using a combination of machine learning approach
Author/Authors
Salmanpoursohi ، Bita Department of Information Technology Management - Islamic Azad University, Science and Research Branch , Daneshvar ، Amir Department of Industrial Management - Islamic Azad University, Science and Research Branch , Salmanpoursohi ، Shakiba Department of Information Technology Management - Islamic Azad University, Tehran North Branch , Pourghader Chobar ، Adel Department of Industrial Engineering - Faculty of Industrial and Mechanical Engineering - Islamic Azad University, Qazvin Branch , Salahi ، Fariba Department of Industrial Management - Islamic Azad University, Tehran South Branch
From page
1001
To page
1014
Abstract
Recently, cancer has become one of the main diseases and causes of death of people all over the world. For this purpose, extensive research has been done on the prediction and early detection of this disease in the body of patients in different fields. Artificial intelligence and data mining approaches are among the methods that have helped researchers in diagnosing this disease. In this research, a machine learning approach for early and timely diagnosis of cancer disease is presented. For this purpose, it uses logistic regression techniques, Naive Bayes, two versions of Random Forest and Support Vector Machine, which work in parallel with each other. As a result of the integration of the techniques, the proposed system achieves higher accuracy and reduces errors compared to the basic methods. The performance of the proposed method was evaluated using different criteria and showed superior results compared to traditional methods.
Keywords
Logistic regression , Naive Bayes , Random forest , Support vector machine , Cancer Detection
Journal title
Iranian Journal of Management Studies (IJMS)
Journal title
Iranian Journal of Management Studies (IJMS)
Record number
2772044
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