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Random Oversampling-Based Diabetes Classification via Machine Learning Algorithms
Published 2024-11-01“…The proposed approach considers ML algorithms such as random forest, gradient boosting models, light gradient boosting classifiers, and decision trees, as they are widely used classification algorithms for diabetes prediction. …”
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Assessing the Effect of Data Augmentation on Occluded Frontal Faces Using DWT-PCA/SVD Recognition Algorithm
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Soft detection model of corrosion leakage risk based on KNN and random forest algorithms
Published 2024-09-01Get full text
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A Hybrid Strategy Two‐Dimensional Concrete Aggregate Filling Algorithm
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Machine Learning Algorithms Performance Evaluation for Intrusion Detection
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Predicting diabetes using supervised machine learning algorithms on E-health records
Published 2025-03-01“…Methods: This study investigates the early detection and management of diabetes by applying machine learning techniques to electronic health records. The research explores the effectiveness of three supervised machine learning algorithms: logistic regression, Random Forest, and k-nearest neighbors (KNN), in developing predictive models for diabetes. …”
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Network Congestion Tracking and Detection in Banking Industry Using Machine Learning Models
Published 2024-09-01“…It addresses the challenge of congestion management through machine learning (ML) models, aiming to enhance network performance and service quality. This research evaluates various ML algorithms, including Support Vector Machines, Decision Trees, and Random Forests, to identify the most effective approach for congestion detection. …”
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CMIP6 multi-model ensemble projection of reference evapotranspiration using machine learning algorithms
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Algorithm for Calculating Noise Immunity of Cognitive Dynamic Systems in the State Space
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The impact of rainfall and slope on hillslope runoff and erosion depending on machine learning
Published 2025-04-01“…To address this gap, this study, based on machine learning methods, explores the effects of rainfall type, rainfall amount, maximum 30-min rainfall intensity (I30), and slope on hillslope runoff depth (H) and erosion-induced sediment yield (S), and unveils the interactions among these factors.MethodsThe K-means clustering algorithm was used to classify 43 rainfall events into three types: A-type, B-type, and C-type. …”
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Research on vehicle scheduling for forest fires in the northern Greater Khingan Mountains
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Machine Learning-Based Approaches and Comparisons for Estimating Missing Meteorological Data and Determining the Optimum Data Set in Nuclear Energy Applications
Published 2025-01-01“…The first motivation of the study was to define the estimation of missing data in the meteorological data set and its usability in the nuclear energy industry by using Machine Learning (ML)-based Linear Regression (LR), Decision Trees (DT) and Random Forest (RF) algorithms. Its second motivation is to determine the optimum set/number of meteorological data required for nuclear energy projects using the best-performing ML algorithm. …”
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