Quantitative Semantics for Jumping Automata
Abstract
Jumping automata are finite automata that read their input in a non-sequential manner, by allowing a reading head to ``jump'' between positions on the input, consuming a permutation of the input word. We argue that allowing the head to jump should incur some cost. To this end, we propose four quantitative semantics for jumping automata, whereby the jumps of the head in an accepting run define the cost of the run. The four semantics correspond to different interpretations of jumps: the absolute distance semantics counts the distance the head jumps, the reversal semantics counts the number of times the head changes direction, the Hamming distance measures the number of letter-swaps the run makes, and the maximum jump semantics counts the maximal distance the head jumps in a single step, We study these measures, with the main focus being the boundedness problem: given a jumping automaton, decide whether its (quantitative) language is bounded by some given number k. We establish the decidability and complexity for this problem under several variants.
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