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

review Full Text OpenAlex 1739 FWCI280.925

Learning From Noisy Labels With Deep Neural Networks: A Survey

article Full Text OpenAlex 1132 FWCI129.6089

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

preprint Full Text OpenAlex 739 FWCI211.0525

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

article Full Text OpenAlex 696 FWCI165.4002

Accurate predictions on small data with a tabular foundation model

article Full Text OpenAlex 631 FWCI1050.1679

Recent advances in decision trees: an updated survey

article Full Text OpenAlex 534 FWCI63.5555

DeepSMOTE: Fusing Deep Learning and SMOTE for Imbalanced Data

article Full Text OpenAlex 533 FWCI48.028

The Matthews correlation coefficient (MCC) should replace the ROC AUC as the standard metric for assessing binary classification

article Full Text OpenAlex 513 FWCI83.037

Can Open Large Language Models Catch Vulnerabilities?

preprint Full Text OpenAlex 489 FWCI1094.0594

A review of ensemble learning and data augmentation models for class imbalanced problems: Combination, implementation and evaluation

review Full Text OpenAlex 462 FWCI74.6333