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
From "Reading Lines" to Board-State Evaluation: A Hybrid LLM-deep learning Architecture for Intuitive Recognition of Organizational Health

preprint Full Text OpenAlex

DriftShield: Autonomous Fraud Detection via Actor-Critic Reinforcement Learning with Dynamic Feature Reweighting

article Full Text OpenAlex

Integrating Machine Learning into Financial Forensics for Smarter Fraud Prevention

article Full Text OpenAlex

Hepatitis C Prediction Applying Different ML Classification Algorithms

book-chapter Full Text OpenAlex

Understanding the Black Box: A Deep Empirical Dive into Shapley Value Approximations for Tabular Data

article Full Text OpenAlex

An oversampling method based on adaptive artificial immune network and SMOTE

article Full Text OpenAlex

Random Forest Variable Importance-Based Selection Algorithm in Class Imbalance Problem

article Full Text OpenAlex

Enhancing Real Time-Fraud Detection in Banking Transactions using Recurrent Neural Networks (RNNs)

article Full Text OpenAlex

Detection of AI Deepfake and Fraud in Online Payments Using GAN-Based Models

article Full Text OpenAlex

Benchmarking Variants of Recursive Feature Elimination: Insights from Predictive Tasks in Education and Healthcare

article Full Text OpenAlex

近5年高被引文献
Learning From Noisy Labels With Deep Neural Networks: A Survey

article Full Text OpenAlex 794 FWCI85.401

Interpreting Black-Box Models: A Review on Explainable Artificial Intelligence

review Full Text OpenAlex 697 FWCI37.703

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 681 FWCI64.481

A survey on missing data in machine learning

article Full Text OpenAlex 652 FWCI52.495

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

article Full Text OpenAlex 474 FWCI80.704

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

article Full Text OpenAlex 462 FWCI114.676

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

review Full Text OpenAlex 412 FWCI12.02

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

article Full Text OpenAlex 357 FWCI29.188

Approximating XGBoost with an interpretable decision tree

article Full Text OpenAlex 356 FWCI27.968

A comparison of machine learning algorithms for diabetes prediction

article Full Text OpenAlex 351 FWCI66.908