Interpreting Finite Automata for Sequential Data
Abstract
Automaton models are often seen as interpretable models. Interpretability itself is not well defined: it remains unclear what interpretability means without first explicitly specifying objectives or desired attributes. In this paper, we identify the key properties used to interpret automata and propose a modification of a state-merging approach to learn variants of finite state automata. We apply the approach to problems beyond typical grammar inference tasks. Additionally, we cover several use-cases for prediction, classification, and clustering on sequential data in both supervised and unsupervised scenarios to show how the identified key properties are applicable in a wide range of contexts.
Cite
@article{arxiv.1611.07100,
title = {Interpreting Finite Automata for Sequential Data},
author = {Christian Albert Hammerschmidt and Sicco Verwer and Qin Lin and Radu State},
journal= {arXiv preprint arXiv:1611.07100},
year = {2016}
}
Comments
Presented at NIPS 2016 Workshop on Interpretable Machine Learning in Complex Systems