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34111 |
Prediction of surface runoff quality and quantity using an integrated model and machine learning under climate change conditions Enthalten in Stochastic environmental research and risk assessment Bd. 39, 19.1.2025, Nr. 3, date:3.2025: 1015-1037
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34112 |
Prediction of tablet disintegration time based on formulations properties via artificial intelligence by comparing machine learning models and validation Enthalten in Scientific reports Bd. 15, 21.4.2025, Nr. 1, date:12.2025: 1-11
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34113 |
Prediction of the academic performance of slow learners using efficient machine learning algorithm Enthalten in Advances in computational intelligence Bd. 1, 3.7.2021, Nr. 4, date:8.2021: 1-12
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34114 |
Prediction of the acceptance of telemedicine among rheumatic patients: a machine learning-powered secondary analysis of German survey data Enthalten in Rheumatology international Bd. 44, 11.1.2024, Nr. 3, date:3.2024: 523-534
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34115 |
Prediction of the Axial Bearing Compressive Capacities of CFST Columns Based on Machine Learning Methods Enthalten in International journal of steel structures Bd. 24, 27.1.2024, Nr. 1, date:2.2024: 81-94
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34116 |
Prediction of the axial compression capacity of ECC-CES columns using adaptive sampling and machine learning techniques Enthalten in Scientific reports Bd. 15, 4.2.2025, Nr. 1, date:12.2025: 1-18
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34117 |
Prediction of the axial compression capacity of stub CFST columns using machine learning techniques Enthalten in Scientific reports Bd. 14, 5.2.2024, Nr. 1, date:12.2024: 1-14
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34118 |
Prediction of the Composition and Hardness of High-Entropy Alloys by Machine Learning Enthalten in JOM Bd. 71, 30.7.2019, Nr. 10, date:10.2019: 3433-3442
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34119 |
Prediction of the Composition of the Wide Light Hydrocarbon Fraction by Methods of Machine Learning in Pipeline Transportation Enthalten in Optoelectronics, instrumentation and data processing Bd. 58, 8.7.2022, Nr. 1, date:2.2022: 85-90
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34120 |
Prediction of the Consolidation Coefficient of Soft Soil Based on Machine Learning Models Enthalten in Soil mechanics and foundation engineering Bd. 61, 30.7.2024, Nr. 3, date:7.2024: 223-229
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