Temporally Extended Goal Recognition in Fully Observable Non-Deterministic Domain Models

Ramon Fraga Pereira, Francesco Fuggitti, Felipe Meneguzzi, Giuseppe De Giacomo

Research output: Working paperPreprint

Abstract

Goal Recognition is the task of discerning the correct intended goal that an agent aims to achieve, given a set of goal hypotheses, a domain model, and a sequence of observations (i.e., a sample of the plan executed in the environment). Existing approaches assume that goal hypotheses comprise a single conjunctive formula over a single final state and that the environment dynamics are deterministic, preventing the recognition of temporally extended goals in more complex settings. In this paper, we expand goal recognition to temporally extended goals in Fully Observable Non-Deterministic (FOND) planning domain models, focusing on goals on finite traces expressed in Linear Temporal Logic (LTLf) and Pure Past Linear Temporal Logic (PLTLf). We develop the first approach capable of recognizing goals in such settings and evaluate it using different LTLf and PLTLf goals over six FOND planning domain models. Empirical results show that our approach is accurate in recognizing temporally extended goals in different recognition settings.
Original languageEnglish
PublisherArXiv
Number of pages18
DOIs
Publication statusPublished - 14 Jun 2023

Bibliographical note

arXiv admin note: substantial text overlap with arXiv:2103.11692
This work has been partially supported by the EU H2020 project AIPlan4EU (No. 101016442), the ERC Advanced Grant WhiteMech (No. 834228), the EU ICT48 2020 project TAILOR (No. 952215), the PRIN project RIPER (No. 20203FFYLK), and the PNRR MUR project FAIR (No. PE0000013).

Keywords

  • cs.AI

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