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4821
Rule-based ai system for early paediatric diabetes diagnosis using backward chaining and certainty factors
Published 2025-01-01“…Future work includes expanding the dataset and integrating machine learning for improved adaptability.…”
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4822
Application, opportunities, and challenges of digital technologies in the decarbonizing shipping industry: a bibliometric analysis
Published 2025-01-01“…Ultimately, it examines research gaps in speed optimization, emission prediction, and autonomous ships by integrating keyword co-occurrence analysis with the content of recent publications, and then proposes prospective research options.DiscussionsFuture studies on ship speed optimization could benefit from adopting multi-objective optimization methods, combining more machine-learning techniques with the FCP model, etc. Concerning emission prediction, future research efforts could focus on integrating more diverse external data sources into emission prediction models, adopting emerging technology applications, such as ship-based carbon capture (SBCC), introducing blockchain into smart emission monitoring systems, etc. …”
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4823
Optimizing hypertension prediction using ensemble learning approaches.
Published 2024-01-01“…A multi-faceted feature selection approach was employed, incorporating Boruta, Lasso Regression, Forward and Backward Selection, and Random Forest feature importance, and found 13 common features that were considered for prediction. Five machine learning (ML) models such as logistic regression (LR), artificial neural network (ANN), random forest (RF), extreme gradient boosting (XGB), light gradient boosting machine (LGBM), and a stacking ensemble model were trained using selected features to predict HTN. …”
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4824
The Influence of Personality Traits and Domain Knowledge on the Quality of Decision-Making in Engineering Design
Published 2025-01-01“…The analysis of personality traits was carried out utilizing the complete Big Five model, while the estimate of the structural equation model was executed by employing partial least squares structural equation modeling (PLS-SEM) and a machine learning model for quality estimation. The available empirical research indicates that individuals who have a lower degree of extraversion and agreeableness, and higher levels of conscientiousness and openness, are more likely to make decisions of higher quality. …”
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4825
Capsule network approach for monkeypox (CAPSMON) detection and subclassification in medical imaging system
Published 2025-01-01“…Addressing the shortcomings of traditional Machine Learning and Deep Learning models, our ESACN model utilizes the dynamic routing and spatial hierarchy capabilities of CapsNets to differentiate complex patterns such as those seen in monkeypox, chickenpox, measles, and normal skin presentations. …”
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4826
Data on battery health and performance: Analysing Samsung INR21700-50E cells with advanced feature engineering
Published 2025-04-01“…This dataset is particularly valuable for advanced machine learning applications, enabling accurate battery state-of-health estimation and predictive maintenance. …”
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4827
An Incremental Learning Ensemble Strategy for Industrial Process Soft Sensors
Published 2019-01-01“…The ability to handle large amounts of data incrementally and efficiently is indispensable for modern machine learning (ML) algorithms. According to the characteristics of industrial production process, we address an ILES (incremental learning ensemble strategy) that incorporates incremental learning to extract information efficiently from constantly incoming data. …”
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4828
A Review of Characterization Approaches for Smallholder Farmers: Towards Predictive Farm Typologies
Published 2019-01-01“…Characterization of smallholder farmers has been conducted in various researches by using machine learning algorithms, participatory and expert-based methods. …”
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4829
Majority or Minority: Data Imbalance Learning Method for Named Entity Recognition
Published 2025-01-01“…Data imbalance presents a significant challenge in various machine learning (ML) tasks, particularly named entity recognition (NER) within natural language processing (NLP). …”
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4830
A SuperLearner-based pipeline for the development of DNA methylation-derived predictors of phenotypic traits.
Published 2025-02-01“…<h4>Conclusions</h4>We introduce a novel method for the development of DNAm-based predictors that combines the improved reliability conferred by training on principal components with advanced ensemble-based machine learning. Coupling SuperLearner with PCA in the predictor development process may be especially relevant for studies with longitudinal designs utilizing multiple array types, as well as for the development of predictors of more complex phenotypic traits.…”
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4831
Predicting accrual success for better clinical trial resource allocation
Published 2025-01-01“…We built predictive models for accrual failure using state-of-the-art supervised machine learning protocols and methods. Models resulted in good predictive performance that was stable over a 10-year time period, with predictive performance of cross-validation AUC = 0.744 (+/-0.018) and prospective validation AUC = 0.737 (+/-0.038). …”
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4832
ElectroCom61: A multiclass dataset for detection of electronic componentsMendeley Data
Published 2025-04-01“…We ensured that these images reflect real-world conditions, incorporating varied lighting, backgrounds, distances, and camera angles to bolster the potential machine learning model's robustness. We also divided the dataset into training, validation, and test sets to facilitate deep learning model development. …”
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4833
Features to Text: A Comprehensive Survey of Deep Learning on Semantic Segmentation and Image Captioning
Published 2021-01-01“…Specifically, image captioning has become an attractive focal direction for most machine learning experts, which includes the prerequisite of object identification, location, and semantic understanding. …”
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4834
A 20 m spatial resolution peatland extent map of Alaska
Published 2025-02-01“…Ground-data were used to train machine learning classifiers to detect peatlands using a fusion of Sentinel-1 (Dual-polarized Synthetic Aperture Radar), Sentinel-2 (Multi-Spectral Imager), and derivatives from the Arctic Digital Elevation Model (ArcticDEM), that were spatially constrained by a peatland suitability model. …”
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4835
An Optimized Hyperparameter Tuning for Improved Hate Speech Detection with Multilayer Perceptron
Published 2024-08-01“…The superior perform ance of Optuna highlights its potential for broader application in other machine learning tasks requiring hyperparameter optimization. …”
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4836
A Feature-Extraction-Based Lightweight Convolutional and Recurrent Neural Networks Adaptive Computing Model for Container Terminal Liner Handling Volume Forecasting
Published 2021-01-01“…The abovementioned two deep learning experimental performances with FEB-LCR-ACM are so far ahead of the forecasting results by the classical machine learning algorithm that is similar to Gaussian support vector machine. …”
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4837
Leveraging deep learning for robust EEG analysis in mental health monitoring
Published 2025-01-01“…Conventional methods for EEG-based mental health evaluation often depend on manually crafted features or basic machine learning approaches, like support vector classifiers or superficial neural networks. …”
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4838
Decoding Sentiment in Online Communication: A Social Media Analysis of Fashion Companies
Published 2024-12-01“…Analysis was performed at sentence, document, and aspect levels, employing both lexicon-based methods and machine learning. Findings: The results showed a preponderance of strong positive sentiment among the messages seen on the social media channels of the companies analyzed. …”
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4839
Physics-Informed Denoising Model for Dynamic Data Recovery of Power Systems
Published 2025-01-01“…In light of the poor interpretability exhibited by traditional machine learning (ML) methods in denoising, a physics-informed denoising model (PIDM) for dynamic data recovery is proposed. …”
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4840
Mapping fruit tree dynamics using phenological metrics from optimal Sentinel-2 data and Deep Neural Network
Published 2023-11-01“…However, the heterogeneity and complexity of the study area—composed of smallholder mixed cropping systems with overlapping spectra—constituted an obstacle to the application of optical pixel-based classification using machine learning (ML) classifiers. Given the socio-economic importance of fruit tree crops, the research sought to map the phenological dynamics of these crops using deep neural network (DNN) and optical Sentinel-2 data. …”
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