Support Vector Machine
Support Vector Machines (SVMs) are powerful machine learning algorithms aiming to find optimal hyperplanes that maximize the margin between different data classes. Current research focuses on improving SVM efficiency and robustness, particularly for large datasets and noisy data, through advancements in model architectures like Twin SVMs and the exploration of novel loss functions (e.g., guardian loss, wave loss, p-norm hinge loss). These improvements enhance SVM applicability across diverse fields, including medical diagnosis, image classification, and fault detection, by increasing accuracy and scalability while mitigating overfitting and sensitivity to outliers.
Papers
FastMapSVM: Classifying Complex Objects Using the FastMap Algorithm and Support-Vector Machines
Malcolm C. A. White, Kushal Sharma, Ang Li, T. K. Satish Kumar, Nori Nakata
Optimization Models and Interpretations for Three Types of Adversarial Perturbations against Support Vector Machines
Wen Su, Qingna Li, Chunfeng Cui