Publications

1 Result

Search results

Jump to search filters

Classification Using Support Vector Machines with Uncertainty Quantification

Taylor, Sofia N.; Neal, Kyle D.; Acquesta, Erin C.S.

Binary classification using machine learning is needed to address engineering problems such as identifying passing/failing parts based on measured features from aging hardware. In these classifications, providing the uncertainty of each prediction is essential to support engineering decision making. One popular classifier is the support vector machine (SVM). There are many variations, with the simplest being a linear division between two classes with a hyperplane. Kernel methods can be implement

More Details
1 Result
1 Result