专题:Imbalanced Data Classification Techniques

This cluster of papers focuses on the challenges and techniques for handling imbalanced data in classification problems. It covers methods such as SMOTE, ROC analysis, cost-sensitive learning, ensemble methods, and their applications in fraud detection. The cluster also discusses the use of precision-recall and boosting algorithms, as well as the effectiveness of random forest in addressing imbalanced datasets.
最新文献
Securing Tomorrow: The Intersection of AI, Data, and Analytics in Fraud Prevention

article Full Text OpenAlex

Large language model ChatGPT versus small deep learning models for self‐admitted technical debt detection: Why not together?

article Full Text OpenAlex

Unraveling the Impact of Class Imbalance on Deep-Learning Models for Medical Image Classification

article Full Text OpenAlex

Early prediction models and crucial factor extraction for first-year undergraduate student dropouts

article Full Text OpenAlex

Data mining-based decision support system for educational decision makers: Extracting rules to enhance academic efficiency

article Full Text OpenAlex

Explainable AI: Machine Learning Interpretation in Blackcurrant Powders

article Full Text OpenAlex

Bagging Vs. Boosting in Ensemble Machine Learning? An Integrated Application to Fraud Risk Analysis in the Insurance Sector

article Full Text OpenAlex

The Impact of SMOTE and ADASYN on Random Forest and Advanced Gradient Boosting Techniques in Telecom Customer Churn Prediction

article Full Text OpenAlex

Automated Detection of AI-Obfuscated Plagiarism in Modeling Assignments

article Full Text OpenAlex

A big data analytics method for assessing creditworthiness of SMEs: fuzzy equifinality relationships analysis

article Full Text OpenAlex

近5年高被引文献
Interpreting Black-Box Models: A Review on Explainable Artificial Intelligence

review Full Text OpenAlex 1082 FWCI276.38920443

Learning From Noisy Labels With Deep Neural Networks: A Survey

article Full Text OpenAlex 975 FWCI172.49876068

A survey on missing data in machine learning

article Full Text OpenAlex 810 FWCI73.37385908

The Matthews correlation coefficient (MCC) is more reliable than balanced accuracy, bookmaker informedness, and markedness in two-class confusion matrix evaluation

article Full Text OpenAlex 805 FWCI90.02408095

From Prediction to Precision: Leveraging LLMs for Equitable and Data-Driven Writing Placement in Developmental Education

preprint Full Text OpenAlex 723 FWCI506.07324037

Comparative performance analysis of K-nearest neighbour (KNN) algorithm and its different variants for disease prediction

article Full Text OpenAlex 594 FWCI194.76763641

Effect of Data Scaling Methods on Machine Learning Algorithms and Model Performance

article Full Text OpenAlex 575 FWCI102.84344337

Classification Model Evaluation Metrics

article Full Text OpenAlex 504 FWCI82.16446682

The emerging graph neural networks for intelligent fault diagnostics and prognostics: A guideline and a benchmark study

article Full Text OpenAlex 485 FWCI40.92003679

Intelligent fault diagnosis of machines with small & imbalanced data: A state-of-the-art review and possible extensions

review Full Text OpenAlex 483 FWCI49.01534339