Paper ID: 2206.09004
Towards Efficient Active Learning of PDFA
Franz Mayr, Sergio Yovine, Federico Pan, Nicolas Basset, Thao Dang
We propose a new active learning algorithm for PDFA based on three main aspects: a congruence over states which takes into account next-symbol probability distributions, a quantization that copes with differences in distributions, and an efficient tree-based data structure. Experiments showed significant performance gains with respect to reference implementations.
Submitted: Jun 17, 2022