Skip to Main Content (Press Enter)

Logo UNIBS
  • ×
  • Home
  • People
  • Organizations
  • Expertise & Skills
  • Outputs
  • Jobs
  • Degrees
  • Courses
  • Third Mission

Expertise & Skills
Logo UNIBS

|

Expertise & Skills

unibs.it
  • ×
  • Home
  • People
  • Organizations
  • Expertise & Skills
  • Outputs
  • Jobs
  • Degrees
  • Courses
  • Third Mission
  1. Outputs

Assessing the Robustness of Intelligence-Driven Reinforcement Learning

Conference Paper
Publication Date:
2023
Abstract:
Robustness to noise is of utmost importance in reinforcement learning systems, particularly in military contexts where high stakes and uncertain environments prevail. Noise and uncertainty are inherent features of military operations, arising from factors such as incomplete information, adversarial actions, or unpredictable battlefield conditions. In RL, noise can critically impact decision-making, mission success, and the safety of personnel. Reward machines offer a powerful tool to express complex reward structures in RL tasks, enabling the design of tailored reinforcement signals that align with mission objectives. This paper considers the problem of the robustness of intelligence-driven reinforcement learning based on reward machines. The preliminary results presented suggest the need for further research in evidential reasoning and learning to harden current state-of-the-art reinforcement learning approaches prior to being mission-critical-ready.
CRIS type:
4.1 Contributo in Atti di convegno
Keywords:
artificial intelligence; intelligence gathering; reinforcement learning
List of contributors:
Nodari, L.; Cerutti, F.
Authors of the University:
CERUTTI Federico
NODARI LORENZO
Handle:
https://iris.unibs.it/handle/11379/613466
Book title:
2023 IEEE International Workshop on Technologies for Defense and Security, TechDefense 2023 - Proceedings
  • Support
  • Privacy
  • Use of cookies
  • Legal notes

Powered by VIVO | Designed by Cineca | 26.5.2.0