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13931 |
What do users in a polycystic ovary syndrome (PCOS) forum think about the treatments they tried: Analysing treatment sentiment using machine learning Enthalten in Physical and engineering sciences in medicine Bd. 48, 14.4.2025, Nr. 2, date:6.2025: 723-741
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13932 |
What do we want to know about MOOCs? Results from a machine learning approach to a systematic literature mapping review Enthalten in International journal of educational technology in higher education Bd. 19, 14.10.2022, Nr. 1, date:12.2022: 1-22
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13933 |
What factors preventing the older adults in China from living longer: a machine learning study Enthalten in BMC geriatrics Bd. 24, 22.7.2024, Nr. 1, date:12.2024: 1-11
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13934 |
WHAT IDENTIFIES A WHALE BY ITS FLUKE? ON THE BENEFIT OF INTERPRETABLE MACHINE LEARNING FOR WHALE IDENTIFICATION Enthalten in ISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences Bd. V-2-2020, 2020: 1005-1012
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13935 |
What is the impact of national public expenditure and its allocation on neonatal and child mortality? A machine learning analysis Enthalten in BMC public health Bd. 23, 28.4.2023, Nr. 1, date:12.2023: 1-11
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13936 |
What we can do with one qubit in quantum machine learning: ten classical machine learning problems that can be solved with a single qubit Enthalten in Quantum machine intelligence Bd. 6, 12.11.2024, Nr. 2, date:12.2024: 1-24
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13937 |
When are they coming? Understanding and forecasting the timeline of arrivals at the FC Barcelona stadium on match days Enthalten in Machine learning Bd. 113, 26.3.2024, Nr. 5, date:5.2024: 2765-2794
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13938 |
When machine learning and neural networks marry real-time scheduling Enthalten in Real-time systems Bd. 61, 7.7.2025, Nr. 2, date:6.2025: 320-325
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13939 |
When not to use machine learning: A perspective on potential and limitations Enthalten in Materials Research Society: MRS bulletin Bd. 47, 21.10.2022, Nr. 9, date:9.2022: 968-974
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13940 |
When physics meets machine learning: a survey of physics-informed machine learning Enthalten in Machine learning for computational science and engineering Bd. 1, 7.5.2025, Nr. 1, date:6.2025: 1-23
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