In this work we present an empirical study where we demonstrate the possibility of developing an artificial agent that is capable to autonomously explore an experimental scenario. During the exploration, the agent is able to discover and learn interesting options allowing to interact with the environment without any pre-assigned goal, then abstract and reuse the acquired knowledge to solve possible tasks assigned ex-post. We test the system in the so-called Treasure Game domain described in the recent literature and we empirically demonstrate that the discovered options can be abstracted in an probabilistic symbolic planning model (using the PPDDL language), which allowed the agent to generate symbolic plans to achieve extrinsic goals.

Option Discovery for Autonomous Generation of Symbolic Knowledge

Gabriele Sartor
First
;
2022-01-01

Abstract

In this work we present an empirical study where we demonstrate the possibility of developing an artificial agent that is capable to autonomously explore an experimental scenario. During the exploration, the agent is able to discover and learn interesting options allowing to interact with the environment without any pre-assigned goal, then abstract and reuse the acquired knowledge to solve possible tasks assigned ex-post. We test the system in the so-called Treasure Game domain described in the recent literature and we empirically demonstrate that the discovered options can be abstracted in an probabilistic symbolic planning model (using the PPDDL language), which allowed the agent to generate symbolic plans to achieve extrinsic goals.
2022
https://arxiv.org/abs/2206.01815
Gabriele Sartor; Davide Zollo; Marta Cialdea Mayer; Angelo Oddi; Riccardo Rasconi; Vieri Giuliano Santucci
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2318/1885234
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