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"counting method" » "coupling method" (Expand Search), "casting method" (Expand Search), "cooking method" (Expand Search)
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"counting method" » "coupling method" (Expand Search), "casting method" (Expand Search), "cooking method" (Expand Search)
"tuning method" » "mining method" (Expand Search), "pruning methods" (Expand Search), "sensing method" (Expand Search)
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121
Semantic segmentation with less annotation efforts
Published 2020“…To alleviate the content misalignment problem, two approaches are proposed in this thesis to regularize adversarial learning methods: the first is to embed the global structure knowledge into the feature-level adversarial learning step. …”
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Thesis-Doctor of Philosophy -
122
The analysis of teaching quality evaluation for the college sports dance by Convolutional Neural Network model and Deep Learning
Published 2024“…This study aims to comprehensively analyze and evaluate the quality of college physical dance education using Convolutional Neural Network (CNN) models and deep learning methods. The study introduces a teaching quality evaluation (TQE) model based on one-dimensional CNN, addressing issues such as subjectivity and inconsistent evaluation criteria in traditional assessment methods. …”
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123
Predicting drivers’ route trajectories in last-mile delivery using a pair-wise attention-based pointer neural network
Published 2024“…Results from an extensive case study on real operational data from Amazon’s last-mile delivery operations in the US show that our proposed method can significantly outperform traditional optimization-based approaches and other machine learning methods (such as the Long Short-Term Memory encoder–decoder and the original pointer network) in finding stop sequences that are closer to high-quality routes executed by experienced drivers in the field. …”
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124
Computational Approaches for Understanding and Redesigning Enzyme Catalysis
Published 2025“…The approach combined statistical mechanical path sampling algorithms and machine learning methods to identify the structural characteristics of enzyme-substrate complexes primed for successful conversion of substrate to product, which were then energetically stabilized by mutating KARI. …”
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Thesis -
125
Transforming kernel-based learners to incorporate domain knowledge from climate science
Published 2024“…<p>In the face of persistent modelling and observational challenges in climate science, which hinder our understanding of the climate system, statistical machine learning has emerged as a potential ally in recent years. Modern machine learning methods promise to leverage the vast volumes of data from climate model simulations, satellite imagery, or in-situ measurements to advance our understanding of the climate system and, thereby, our ability to anticipate the adverse consequences of climate change. …”
Thesis -
126
Transferring a deep learning model from healthy subjects to stroke patients in a motor imagery brain-computer interface
Published 2024“…Motor imagery (MI) brain-computer interfaces (BCIs) based on electroencephalogram (EEG) have been developed primarily for stroke rehabilitation, however, due to limited stroke data, current deep learning methods for cross-subject classification rely on healthy data. …”
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Journal Article -
127
Self-supervised Self2Self denoising strategy for OCT speckle reduction with a single noisy image
Published 2024“…Results compared with those of the existing methods demonstrate that S2Snet not only outperforms those existing self-supervised deep learning methods but also achieves better performances than those non-deep learning ones in different cases. …”
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Journal Article -
128
Building occupant sensing : occupancy prediction and behavior recognition
Published 2018“…To achieve these goals in smart buildings, it is necessary to study the problem of occupant sensing by leveraging machine learning methods to understand occupants based on sensor signals. …”
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Thesis -
129
Distinctive antibody responses to Mycobacterium tuberculosis in pulmonary and brain infection
Published 2024“…Antibody studies included analysis of immunoglobulin isotypes (IgG, IgM, IgA) and subclass levels (IgG1–4) and the capacity of <i>M. tuberculosis</i>-specific antibodies to bind to Fc receptors or C1q and to activate innate immune effector functions (complement and natural killer cell activation; monocyte or neutrophil phagocytosis). Machine learning methods were applied to characterize serum and CSF responses in TBM, identify prognostic factors associated with disease severity, and define the key antibody features that distinguish TBM from pulmonary TB. …”
Journal article -
130
Microbial communities: network reconstruction and control
Published 2024“…It proposes adaptive learning methods and experimental design rules to transform PAG-inferred structures into fully identified causal models, thus enhancing our understanding of microbial dynamics and providing a systematic approach for future research in causal inference within complex biological systems. …”
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131
Measuring the predictability of life outcomes with a scientific mass collaboration
Published 2021“…Despite using a rich dataset and applying machine-learning methods optimized for prediction, the best predictions were not very accurate and were only slightly better than those from a simple benchmark model. …”
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132
Feature extraction from EEG signals and regularization for brain-computer interface
Published 2020“…The goal of this research is to improve feature extraction and regularization of EEG signals using machine learning methods and hence achieve better results during the classification of the signals for motor imagery BCI (MI-BCI). …”
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Thesis-Doctor of Philosophy -
133
Natural robustness of machine learning in the open world
Published 2023“…Secondly, classic machine learning methods are built on the i.i.d. assumption that training and testing data are independent and identically distributed. …”
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Thesis-Doctor of Philosophy -
134
Sensor-based human activity recognition via zero-shot learning
Published 2019“…For problems under this problem setting, as there are no labeled training instances belonging to the unseen classes, the zero-shot learning methods are used. We focus on three problems under this setting. …”
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Thesis -
135
Offline eLearning for undergraduates in health professions : a systematic review of the impact on knowledge, skills, attitudes and satisfaction
Published 2019“…To inform investments in offline eLearning, we need to establish its effectiveness in terms of gaining knowledge and skills, students’ satisfaction and attitudes towards eLearning. Methods: We conducted a systematic review of offline eLearning for students enrolled in undergraduate, health–related university degrees. …”
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Journal Article -
136
Digital problem-based learning in health professions : systematic review and meta-analysis by the digital health education collaboration
Published 2019“…We included studies that compared the effectiveness of DPBL with traditional learning methods or other forms of digital education in improving health professionals’ knowledge, skills, attitudes, and satisfaction. …”
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137
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138
Brain computer interface for post-stroke motor rehabilitation
Published 2021“…Moving ahead, we analyze the classification performance of proposed and baseline deep learning architectures and traditional machine learning methods for MI detection in 25 chronic stroke patients undergoing three different BCI-based motor rehabilitation interventions for 2/4 weeks. …”
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Thesis-Doctor of Philosophy -
139
Fabrication and characterization of Algan/Gan high electron mobility transistors on silicon
Published 2016“…Therefore, the current experimental studies suggest that the Ge doping approach is more suitable as a VTH tuning method. Although the fabrication cost of GaN-based devices can be reduced significantly through the incorporation with Si technology, there are several challenges which impede the incorporation of GaN-based devices with Si technology. …”
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Thesis -
140