Research Topic
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.
Works
36,303
Citations
586,550
Domain
Physical Sciences
Field
Computer Science
Subfield
Artificial Intelligence
OpenAlex ID
T11652
Taxonomy Context
Physical Sciences / Computer Science / Artificial Intelligence
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