Ir arriba
Información del capítulo de libro

Learning to act and observe in partially observable domains

T. Bolander, N. Gierasimczuk, A. Occhipinti Liberman

En el libro Dick de Jongh on Intuitionistic and Provability Logics

Springer, Cham, Suiza


Resumen:

We consider a learning agent in a partially observable environment, with which the agent has never interacted before, and about which it learns both what it can observe and how its actions affect the environment. The agent can learn about this domain from experience gathered by taking actions in the domain and observing their results. We present learning algorithms capable of learning as much as possible (in a well-defined sense) both about what is directly observable and about what actions do in the domain, given the learner’s observational constraints. We differentiate the level of domain knowledge attained by each algorithm, and characterize the type of observations required to reach it. The algorithms use dynamic epistemic logic (DEL) to represent the learned domain information symbolically. Our work continues that of Bolander and Gierasimczuk (2015), which developed DEL-based learning algorithms based to learn domain information in fully observable domains.


ISBN: 978-3-031-47920-5

DOI: DOI icon https://doi.org/10.1007/978-3-031-47921-2_11

Publicado: 2024



Cita:
T. Bolander, N. Gierasimczuk, A. Occhipinti Liberman, Learning to act and observe in partially observable domains, en Dick de Jongh on Intuitionistic and Provability Logics. Ed. Springer. Cham, Suiza, 2024.

pdf Solicitar el capítulo a los autores