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Performance Analysis of Averaged Perceptron Machine Learning Classifier for Breast Cancer Detection

Vijay Birchha, Bhawna Nigam

2023Procedia Computer Science22 citationsDOIOpen Access PDF

Abstract

Breast cancer is the primary cause of women's death due to cancer; if detected in the early stage, it is a curable disease. Machine learning classification techniques are helpful in breast cancer detection. The research aims to investigate the averaged-perceptron machine-learning classifier performance on the Wisconsin original breast cancer dataset (WBC); the work has focused on two points; first, does the averaged-perceptron classifier has the quality to gain a higher accuracy than the other classifiers? Second, does it help to reduce false-negative or false-positive breast cancer predictions? The averaged-perceptron model recorded an accuracy score of 0.984 with zero false-negative predictions. The investigation has also signified the effect of threshold on false-negative or false-positive prediction. Applying the averaged-perceptron classifier in a computer-aided-diagnosis system can improve breast cancer recognition accuracy with zero false-positive or false-negative forecasts.

Topics & Concepts

Artificial intelligenceComputer sciencePerceptronBreast cancerClassifier (UML)Multilayer perceptronMachine learningPattern recognition (psychology)Artificial neural networkCancerMedicineInternal medicineAI in cancer detectionNeural Networks and ApplicationsGene expression and cancer classification
Performance Analysis of Averaged Perceptron Machine Learning Classifier for Breast Cancer Detection | Litcius