Home » Publication » 29206

Dettaglio pubblicazione

2024, ECAI 2024. Proceedings of the 27th European Conference on Artificial Intelligence, 19–24 October 2024, Santiago de Compostela, Spain. Including 13th Conference on Prestigious Applications of Intelligent Systems (PAIS 2024), Pages 3055-3062 (volume: 392)

Neural reward machines (04b Atto di convegno in volume)

Umili Elena, Argenziano Francesco, Capobianco Roberto

Non-markovian Reinforcement Learning (RL) tasks are very hard to solve, because agents must consider the entire history of state-action pairs to act rationally in the environment. Most works use symbolic formalisms (as Linear Temporal Logic or automata) to specify the temporally-extended task. These approaches only work in finite and discrete state environments or continuous problems for which a mapping between the raw state and a symbolic interpretation is known as a symbol grounding (SG) function. Here, we define Neural Reward Machines (NRM), an automata-based neurosymbolic framework that can be used for both reasoning and learning in non-symbolic non-markovian RL domains, which is based on the probabilistic relaxation of Moore Machines. We combine RL with semisupervised symbol grounding (SSSG) and we show that NRMs can exploit high- level symbolic knowledge in non-symbolic environments without any knowledge of the SG function, outperforming Deep RL methods which cannot incorporate prior knowledge. Moreover, we advance the research in SSSG, proposing an algorithm for analysing the groundability of temporal specifications, which is more efficient than baseline techniques of a factor 10^3.
ISBN: 978-1-64368-548-9
keywords
© Università degli Studi di Roma "La Sapienza" - Piazzale Aldo Moro 5, 00185 Roma