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A Statistical Classification of the Benign and Malignant Neoplasm using Ensemble Learning and Classification Algorithms | IEEE Conference Publication | IEEE Xplore

A Statistical Classification of the Benign and Malignant Neoplasm using Ensemble Learning and Classification Algorithms


Abstract:

Detection of Breast Cancer is the introductory stage of a cancer diagnosis. Therefore, it is essential to identify whether the tumor is cancerous or non-cancerous. The go...Show More

Abstract:

Detection of Breast Cancer is the introductory stage of a cancer diagnosis. Therefore, it is essential to identify whether the tumor is cancerous or non-cancerous. The goal of the paper is to recognize the benignancy and malignancy of the cancerous cell precisely. The paper examines two machine learning algorithms and proposes a novel ensemble learning approach using a blend of classification algorithms namely ℌk-nearest neighbors (k-NN) with Neighborhood components analysis, and Support-vector machine classifier (SVM)ℍ. The proposed unification was examined on the Wisconsin Diagnostic Breast Cancer dataset, provided on the DCI machine learning repository. The suggested approach exhibits a better performance of 99.29% (10- fold CV), 98.41 % (10- fold CV), and 98.85% (10-fold CV) for k-nearest neighbors (NCA), Support-vector machine, and Ensemble method respectively.
Date of Conference: 06-08 July 2021
Date Added to IEEE Xplore: 03 November 2021
ISBN Information:
Conference Location: Kharagpur, India
Department of Computer Science and Engineering, Babaria Institute of Technology (BITS Edu Campus), Vadodara, India

Department of Computer Science and Engineering, Babaria Institute of Technology (BITS Edu Campus), Vadodara, India

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