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Automata Learning of Preferences over Temporal Logic Formulas from Pairwise Comparisons

Automata Learning of Preferences over Temporal Logic Formulas from Pairwise Comparisons

来源:Arxiv_logoArxiv
英文摘要

Many preference elicitation algorithms consider preference over propositional logic formulas or items with different attributes. In sequential decision making, a user's preference can be a preorder over possible outcomes, each of which is a temporal sequence of events. This paper considers a class of preference inference problems where the user's unknown preference is represented by a preorder over regular languages (sets of temporal sequences), referred to as temporal goals. Given a finite set of pairwise comparisons between finite words, the objective is to learn both the set of temporal goals and the preorder over these goals. We first show that a preference relation over temporal goals can be modeled by a Preference Deterministic Finite Automaton (PDFA), which is a deterministic finite automaton augmented with a preorder over acceptance conditions. The problem of preference inference reduces to learning the PDFA. This problem is shown to be computationally challenging, with the problem of determining whether there exists a PDFA of size smaller than a given integer $k$, consistent with the sample, being NP-Complete. We formalize the properties of characteristic samples and develop an algorithm that guarantees to learn, given a characteristic sample, the minimal PDFA equivalent to the true PDFA from which the sample is drawn. We present the method through a running example and provide detailed analysis using a robotic motion planning problem.

Hazhar Rahmani、Jie Fu

自动化基础理论

Hazhar Rahmani,Jie Fu.Automata Learning of Preferences over Temporal Logic Formulas from Pairwise Comparisons[EB/OL].(2025-05-23)[2025-07-09].https://arxiv.org/abs/2505.18030.点此复制

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