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Post-hoc Evaluation of Sample Size in a Regional Digital Soil Mapping Project
Published 2025-03-01Get full text
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102
Wetland Gain and Loss in the Mississippi River Bird‐Foot Delta
Published 2025-06-01Get full text
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Improving Attack Detection in IoV with Class Balancing and Feature Selection
Published 2025-03-01“…The ensemble algorithms evaluated in this research comprise Random Forest, Gradient Boosting, and XGBoost. …”
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Unveiling shadows: A data-driven insight on depression among Bangladeshi university students
Published 2025-01-01“…After rigorous analysis, Random Forest emerged as the best-performing algorithm, exhibiting remarkable accuracy (87%), precision (78%), recall (95%), and f1-score (86%). …”
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Using machine learning for the assessment of ecological status of unmonitored waters in Poland
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108
Integrating Handcrafted Features with Machine Learning for Hate Speech Detection in Albanian Social Media
Published 2024-12-01Get full text
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109
AN INTELLIGENT POSTOPERATIVE CHRONIC PAIN PREDICTION SYSTEM (I-POCPP)
Published 2022-07-01Get full text
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110
Comparative Analysis of Facial Expression Recognition Methods
Published 2025-05-01“… This paper aimed to investigate human emotion recognition through the analysis of facial expressions, using both classical machine learning methods and advanced techniques based on deep neural networks. The research compares the performance of classical machine learning algorithms (such as K-Nearest Neighbors, Gaussian Naive Bayes, Support Vector Machines, Adaptive Boosting, Decision Tree, and Random Forest) with the modern deep learning methods (such as Convolutional Neural Networks, Deep Neural Networks, and Recursive Neural Networks) using standardized datasets. …”
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An optimization based framework for water quality assessment and pollution source apportionment employing GIS and machine learning techniques for smart surface water governance
Published 2025-08-01“…In addition, the study area's hydro-chemical facies were examined, and machine learning models’ hyperparameters such as Random Forest (RF), Borda Scoring Algorithm (BSA), Decision Tree (DT), Multilayer Perception (MLP), and Naïve Bayes (NB), were executed before, to training and testing the samples of surface water. …”
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113
Modeling Flood Susceptibility Utilizing Advanced Ensemble Machine Learning Techniques in the Marand Plain
Published 2025-03-01Get full text
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114
Combined L-Band Polarimetric SAR and GPR Data to Develop Models for Leak Detection in the Water Pipeline Networks
Published 2025-04-01“…The model features are selected with the Boruta wrapper algorithm based on the SAOCOM-1A images after pre-processing, and the SSRDC values at sampling locations within the research area are calculated with the reflected wave method based on the GPR data. …”
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Machine Learning for Prediction of Relapses in Multiple Drug Resistant Tuberculosis Patients
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Enhancing Tire Condition Monitoring through Weightless Neural Networks Using MEMS-Based Vibration Signals
Published 2024-01-01Get full text
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A Machine Learning-Based Parameterized Tropical Cyclone Precipitation Model
Published 2024-12-01Get full text
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