Katragadda, Sai Prathyush2022-08-052022-08-052022-08-04vt_gsexam:35378http://hdl.handle.net/10919/111467Active learning is a practical field of machine learning as labeling data or determining which data to label can be a time consuming and inefficient task. Active learning automates the process of selecting which data to label, but current methods are heavily model reliant. This has led to the inability of sampled data to be transferred to new models as well as issues with sampling bias. Both issues are of crucial concern in machine learning deployment. We propose active learning methods utilizing Combinatorial Coverage to overcome these issues. The proposed methods are data-centric, and through our experiments we show that the inclusion of coverage in active learning leads to sampling data that tends to be the best in transferring to different models and has a competitive sampling bias compared to benchmark methods.ETDenIn CopyrightActive LearningCombinatorial Interaction TestingCombinatorial CoverageActive Learning with Combinatorial CoverageThesis