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Abnormalities and fraud electric meter detection using hybrid support vector machine & genetic algorithm
Published 2023Conference Paper -
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Logistic regression methods for classification of imbalanced data sets
Published 2012“…Classification of imbalanced data sets is one of the important researches in Data Mining community, since the data sets in many real-world problems mostly are imbalanced class distribution. This thesis aims to develop the simple and effective imbalanced classification algorithms by previously improving the algorithms performance of general classifiers i.e. …”
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Support vector machine in precision agriculture: a review
Published 2021“…The Support Vector Machine (SVM) is a Machine Learning (ML) algorithm which may be used for acquiring solutions towards better crop management. …”
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Lightning Fault Classification for Transmission Line Using Support Vector Machine
Published 2024Conference Paper -
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Spectral discrimination and index development of roofing materials and conditions using field spectroscopy and worldview-3 satellite image
Published 2016“…Comparatively, overall accuracy obtained from GA, SVM and RF algorithms are fairly high in percentage with GA and SVM both produced 96.3%, while RF yield 97.53% accuracy. …”
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Support vector machine and neural network based model for monthly stream flow forecasting
Published 2023Article -
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Fault classification in smart distribution network using support vector machine
Published 2023Article -
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Fine-scale predictive modeling of Aedes mosquito abundance and dengue risk indicators using machine learning algorithms with microclimatic variables
Published 2025“…ANN consistently outperformed RF and SVM in predicting the Aedes Index (e.g., Ae. aegypti: MAE = 0.175, RMSE = 0.248), while RF and SVM demonstrated superior performance in DPTI predictions for Ae. aegypti and Ae. albopictus, respectively. …”
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