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Spatiotemporal dynamics and key drivers of carbon emissions in regional construction sectors: Insights from a Random Forest Model
Published 2025-03-01“…This research utilizes the Random Forest Model, a sophisticated machine learning method, to examine the determinants of carbon emissions in China's construction sector at the regional scale. …”
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A Multi-Stage Feature Selection and Explainable Machine Learning Framework for Forecasting Transportation CO<sub>2</sub> Emissions
Published 2025-08-01“…The transportation sector is a major consumer of primary energy and is a significant contributor to greenhouse gas emissions. …”
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Classification Based on the Support Vector Machine for Determining Operational Targets for Controlling Electricity Usage With Conventional Meters: A Case Study of Industrial and Bu...
Published 2025-01-01“…This research aims to improve the detection of electricity theft through a machine learning-based model utilizing the Support Vector Machine (SVM) classification technique. …”
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Integrating routine blood biomarkers and artificial intelligence for supporting diagnosis of silicosis in engineered stone workers
Published 2024-11-01“…The percentage of lymphocytes, the angiotensin‐converting enzyme, and lactate dehydrogenase indexes were revealed, among others, as blood biomarkers with significant cumulative importance for the machine learning models. Our study reveals that these biomarkers could detect a chronic inflammatory status and potentially serve as a supportive tool for the diagnosis, monitoring, and early detection of the progression of silicosis.…”
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Comparative Analysis of a Quantum SVM With an Optimized Kernel Versus Classical SVMs
Published 2025-01-01“…Support Vector Machine (SVM) is a widely used algorithm for classification, valued for its flexibility with kernels that effectively handle non-linear problems and high-dimensional data. …”
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An explainable machine learning framework for railway predictive maintenance using data streams from the metro operator of Portugal
Published 2025-07-01“…Abstract The public transportation sector generates large volumes of sensor data that, if analyzed adequately, can help anticipate failures and initiate maintenance actions, thereby enhancing quality and productivity. …”
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Crop yield prediction in agriculture: A comprehensive review of machine learning and deep learning approaches, with insights for future research and sustainability
Published 2024-12-01“…The research paper also examines the algorithms frequently utilized in the machine learning domain, including Random Forest (RF), Artificial Neural Networks (ANN), and Support Vector Machine (SVM). …”
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Early Prediction Detection of Retail and Corporate Credit Risks Using Machine Learning Algorithms
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Servitization on the primary sector – coffee plantations case
Published 2023-05-01“…However, the characteristics of rural properties seem to affect the number of services associated with machine suppliers. The results support managers in this sector to identify service offerings and widen the discussion about servitization by covering a barely explored sector. …”
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Komparasi Algoritma Support Vector Machines dengan Algoritma Artificial Neural Network untuk Memprediksi Nilai Persetujuan Kredit Modal Kerja yang Diberikan Bank Umum
Published 2019-03-01“…Working capital credit approval provided by commercial bank need to predict because it has increased of credit provision provided by commercial bank that can be used as measurement of economic growth and country stability or as measurement of economic growth indicator from monetary sector by Bank of Indonesia. In this research will conducted working capital credit value approval prediction will be provided by commercial bank using support vector machine algorithm that is compared with artificial neutral network algorithm. …”
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Automated System for OEE Management in the Industrial Sector
Published 2025-07-01Get full text
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Advancing tourism demand forecasting in Sri Lanka: evaluating the performance of machine learning models and the impact of social media data integration
Published 2025-05-01“…Purpose – This study explores the pioneering approach of utilising machine learning (ML) models and integrating social media data for predicting tourist arrivals in Sri Lanka. …”
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Clustering and Vectorizing Acoustic Emission Events of Large Infrastructures’ Normal Operation
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Comparison of Rating-based and Inset Lexicon-based Labeling in Sentiment Analysis using SVM (Case Study: GoBiz Application Reviews on Google Play Store)
Published 2025-03-01“…It compares two labeling methods—Rating-Based and Inset Lexicon—and evaluates them using the Support Vector Machine (SVM) algorithm. The analysis process includes data selection, text preprocessing, data transformation using TF-IDF, SVM implementation with 10-fold cross-validation, and result visualization through word clouds. …”
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Dynamic Workload Management System in the Public Sector: A Comparative Analysis
Published 2025-03-01“…Using a dataset encompassing public/private sector experience, educational history, and age, we evaluate the effectiveness of seven machine learning algorithms: Linear Regression, Artificial Neural Networks (ANNs), Adaptive Neuro-Fuzzy Inference System (ANFIS), Support Vector Machine (SVM), Gradient Boosting Machine (GBM), Bagged Decision Trees, and XGBoost in predicting employee capability and optimizing task allocation. …”
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Harnessing automation techniques for supporting sustainability in agriculture
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Obstetrical ultrasound training of and practise by general practitioners in the private sector, Free State
Published 2004-07-01“…Background: The aim of the study was to determine the level of obstetrical ultrasound training and practice of general practitioners in the Free State private sector. Methods: In this descriptive study, questionnaires were mailed to all general practitioners in the Free State private sector. …”
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