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A Machine Learning-Based Approach for Efficient Brain Tumour Classifications

Published: 17 September 2024 Publication History

Abstract

This journal paper deals with data-Mining striving as emerging technique which plays the vital role in digging out the significant appropriate information from the vast stream of data collection. The present research focusses on the diagnosis of the brain tumours and the predictions of disease distinguishing the healthy individuals and the patients. To accomplish this predictions, machine learning algorithm Multinomial-Naive-Bayes algorithm in the classification technique to prediction of the results in relevance with the brain tumors disease. The proposed research consists of Collection of dataset, pre-processing technique, Feature-selection method, and organisation of the data in the normalised form, classification implementation and in the generation of the predicted results. These depicted results were subjected to the comparative analysis of the existing previous predictive models with the present proposed work which is superior to them.

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            Published In

            cover image International Journal of Sociotechnology and Knowledge Development
            International Journal of Sociotechnology and Knowledge Development  Volume 16, Issue 1
            Apr 2024
            158 pages

            Publisher

            IGI Global

            United States

            Publication History

            Published: 17 September 2024

            Author Tags

            1. Correlation
            2. Machine-Learning
            3. Accuracy
            4. Brain Tumours Classifications
            5. Diagnosis
            6. Data-set

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