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"cleaving methods" » "learning methods" (Expand Search), "annealing methods" (Expand Search), "teaching methods" (Expand Search)
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"learning method" » "learning methods" (Expand Search)
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81
Exploring disease axes as an alternative to distinct clusters for characterizing sepsis heterogeneity
Published 2023“…The top-down transfer learning method (model trained on cohorts with greater severity was transferred to cohorts with lower severity score) had a higher NMI value than the bottom-up approach (median [Q1, Q3]: 0.64 [0.49, 0.78] vs. 0.23 [0.2, 0.31], p < 0.001). …”
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Article -
82
A Non‐Intrusive Machine Learning Framework for Debiasing Long‐Time Coarse Resolution Climate Simulations and Quantifying Rare Events Statistics
Published 2024“…Here, the scope is to formulate a learning method that allows for correction of dynamics and quantification of extreme events with longer return period than the training data. …”
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83
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84
Transfer-recursive-ensemble learning for multi-day COVID-19 prediction in India using recurrent neural networks
Published 2023“…Each of the four models then gives 7-day ahead predictions using the recursive learning method for the Indian test data. The final prediction comes from an ensemble of the predictions of the different models. …”
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Journal Article -
85
Visual event recognition in videos by learning from web data
Published 2013“…Second, we propose a new transfer learning method, referred to as Adaptive Multiple Kernel Learning (A-MKL), in order to 1) fuse the information from multiple pyramid levels and features (i.e., space-time features and static SIFT features) and 2) cope with the considerable variation in feature distributions between videos from two domains (i.e., web video domain and consumer video domain). …”
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Journal Article -
86
Enhanced intrusion detection model based on principal component analysis and variable ensemble machine learning algorithm
Published 2024“…This paper proposes a variable ensemble machine learning method to solve the problem and achieve a low variance model with high accuracy and low false alarm. …”
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Article -
87
Speeding up deep neural network training with decoupled and analytic learning
Published 2021“…A fully decoupled learning method using delayed gradients (FDG) is first proposed which addresses all the three lockings. …”
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Thesis-Doctor of Philosophy -
88
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 -
89
High cycle fatigue characterisation and modelling of 316L stainless steel processed by laser powder bed fusion
Published 2020“…Lastly, considering the numerous influencing factors arising from the process and the associated failure behaviours, a neuro-fuzzy-based machine learning method was applied to provide an effective unifying approach for high cycle fatigue life prediction. …”
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Thesis-Doctor of Philosophy -
90
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 -
91
Topics in Bayesian machine learning for finance
Published 2024“…Further, we estimate an approximation to epistemic uncertainty via a pseudo-Bayesian deep learning method. This work demonstrates the utility of the model output for deciding the relative allocation of risk capital across trades. …”
Thesis -
92
Learning-enabled decision-making for autonomous driving: framework and methodology
Published 2023“…The personalized cost learning method outperforms general cost modeling methods, leading to a more human-like driving experience. …”
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Thesis-Doctor of Philosophy -
93
Conflict-free urban air mobility planning with an airspace-resource-centric approach
Published 2024“…Motivated by the absence of a precise power consumption model that can be applied to multiple eVTOL aircraft types, we use the ensemble learning method to model the power consumption of eVTOL aircraft. …”
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Thesis-Doctor of Philosophy -
94
Geometry guided supervised representation learning for classification
Published 2020“…However, the AE-based representation learning method, FAE-LG, is trained iteratively by using back-propagation (BP) that requires a significant amount of training time. …”
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Thesis-Doctor of Philosophy -
95
Structured sparse representations for supervised and unsupervised learning
Published 2020“…It is demonstrated that the proposed graph learning method, termed Adaptive Locality-constrained Clustering (ALC), generates more structured graph compared with predefined ones and provides better clustering performance on benchmark datasets. …”
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Thesis-Doctor of Philosophy -
96
Graph representation learning
Published 2022“…Besides different techniques used in graph representation learning, according to the fineness of the objects for embedding, the graph representation learning methods can be mainly divided into node-level, edge-level, and graph-level representation learning methods. …”
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Thesis-Doctor of Philosophy -
97
Descriptor learning using convex optimisation
Published 2012“…Both of these problems use large margin discriminative learning methods. The third contribution is a new method of obtaining the positive and negative training data in a weakly supervised manner. …”
Conference item -
98
Deep learning with constrained data resource
Published 2022“…The method can achieve a better accuracy compared to simple full-supervised learning methods, especially the problem becomes to a one-shotting problem.…”
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Final Year Project (FYP) -
99
Machine learning for mathematical question difficulty classification
Published 2019“…The same 4 machine learning methods were then again used to classify the difficulty of each question using the vectorized question and predicted topic. …”
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Final Year Project (FYP) -
100
Genetic algorithm based deep learning model adaptation for improvising the motor imagery classification
Published 2024“…Deep learning methods have proved a promising performance for electroencephalography-based brain-computer interfaces (EEG-BCI). …”
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Journal Article