Litcius/Paper detail

Medical image prediction for diagnosis of breast cancer disease comparing the machine learning algorithms: SVM, KNN, logistic regression, random forest and decision tree to measure accuracy

Paidipati Dinesh, A. S. Vickram, P. Kalyanasundaram

2024AIP conference proceedings59 citationsDOI

Abstract

The study's primary objective is to compare the efficacy of the state-of-the-art SVM method for image prediction with that of KNN, Logistic Regression, Random Forest, and Decision Tree. The UCI Machine Learning Laboratory provides a total of 569 samples. Groups like SVM, KNN, Decision Tree, Random Forest, and Logistic Regression are used to the samples after they have been separated into benign and malignant cells so that their respective performances may be compared. G power calculation is used to determine how many samples are needed for this analysis. The maximum acceptable error is set at 0.5, and the minimum power of analysis is set at 0.8. Predictions made using Logistic Regression appear to have a higher accuracy(95%) than those made using SVM, KNN, Decision Tree, or Random Forest(92%,90%,85%, and 91%). This proposed system has a probability importance of 0.55. The Wisconsin dataset was used to compare Logistic Regression against SVM, KNN, Decision Tree, and Random Forest for the detection of breast cancer.

Topics & Concepts

Random forestSupport vector machineDecision treeLogistic regressionLogistic model treeArtificial intelligenceComputer scienceMachine learningDecision tree learningTree (set theory)StatisticsPattern recognition (psychology)MathematicsData miningMathematical analysisScientific and Engineering Research TopicsSmart Systems and Machine LearningDigital Imaging for Blood Diseases