Machine Learning Classifier
Machine learning classifiers are algorithms that categorize data into predefined classes, aiming to achieve high accuracy and robustness. Current research emphasizes improving classifier performance through advanced architectures like convolutional neural networks (CNNs) and ensemble methods (e.g., Random Forest, boosting), as well as addressing challenges like adversarial attacks, data imbalance, and bias mitigation. These advancements have significant implications across diverse fields, from healthcare diagnostics and fraud detection to environmental monitoring and transportation safety, by enabling more accurate and reliable automated decision-making. A growing focus is on enhancing the trustworthiness and explainability of classifiers to build confidence in their predictions and ensure responsible deployment.
Papers
Don't guess what's true: choose what's optimal. A probability transducer for machine-learning classifiers
K. Dyrland, A. S. Lundervold, P. G. L. Porta Mana
Does the evaluation stand up to evaluation? A first-principle approach to the evaluation of classifiers
K. Dyrland, A. S. Lundervold, P. G. L. Porta Mana