Deep learning-based gait phase detection using shank-mounted IMU data: Classification approach. [PDF]
Choi W, Choi MT.
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Diabetic retinopathy as the primary predictor of mild cognitive impairment in type 2 diabetes: Insights from machine learning models. [PDF]
Rhmari Tlemçani FZ +7 more
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A Holistic Nursing Surveillance Decision Support System for Postoperative Pulmonary Complications After Abdominal Surgery: A Retrospective Cohort Study. [PDF]
Kim SY, Lim DH, Kim DH, Jeong OR.
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scMarkerGene: an interpretable neural network framework for cell-type-specific marker gene discovery. [PDF]
Zhang J, Kou SH, Zhao J, Li X, Zhao Y.
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The Use of Machine Learning Models with Optuna in Disease Prediction
Effectively and equitably allocating medical resources, particularly for minority groups, is a critical issue that warrants further investigation in rural hospitals. Machine learning techniques have gained significant traction and demonstrated strong performance across various fields in recent years.
Ying-Lei Lin +2 more
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Predicting scour depth in the presence of aprons using XGBoost-Optuna
Applied Soft Computing JournalChonoor Abdi Chooplou +2 more
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LSTM with forget gates optimized by Optuna for lithofacies prediction
2022One of major technical competitions in energy industry relates to how optimally deep-learning architectures we can design. Optimization of hyperparameters is treated as labor-intensive. However, it is important to tune the parameters especially when we deal with relatively small targets, yet high-impact consequences can be resulted.
Yohei Nishitsuji, Jalil Nasseri
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Automating hyperparameter optimization in geophysics with Optuna: A comparative study
Geophysical ProspectingAbstractDeep learning has gained attraction amongst geophysicists for solving complex longstanding problems. Nevertheless, proper hyperparameter optimization methodologies remain critically underexplored in geophysical deep learning research. This paper attempts to first highlight the importance of hyperparameter optimization and then showcase two ...
Hussain Almarzooq, Umair Bin Waheed
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We can now create an efficient model using the techniques that were discussed in the previous chapters. Bayesian optimization goes a long way in finding hyperparameters. This chapter provides an overview of the Optuna framework and discusses further the role of hyperparameter optimization in automated machine learning.
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