English

Factorized Machine Self-Confidence for Decision-Making Agents

Machine Learning 2019-01-10 v2 Artificial Intelligence Computers and Society Human-Computer Interaction Robotics

Abstract

Algorithmic assurances from advanced autonomous systems assist human users in understanding, trusting, and using such systems appropriately. Designing these systems with the capacity of assessing their own capabilities is one approach to creating an algorithmic assurance. The idea of `machine self-confidence' is introduced for autonomous systems. Using a factorization based framework for self-confidence assessment, one component of self-confidence, called `solver-quality', is discussed in the context of Markov decision processes for autonomous systems. Markov decision processes underlie much of the theory of reinforcement learning, and are commonly used for planning and decision making under uncertainty in robotics and autonomous systems. A `solver quality' metric is formally defined in the context of decision making algorithms based on Markov decision processes. A method for assessing solver quality is then derived, drawing inspiration from empirical hardness models. Finally, numerical experiments for an unmanned autonomous vehicle navigation problem under different solver, parameter, and environment conditions indicate that the self-confidence metric exhibits the desired properties. Discussion of results, and avenues for future investigation are included.

Keywords

Cite

@article{arxiv.1810.06519,
  title  = {Factorized Machine Self-Confidence for Decision-Making Agents},
  author = {Brett W Israelsen and Nisar R Ahmed and Eric Frew and Dale Lawrence and Brian Argrow},
  journal= {arXiv preprint arXiv:1810.06519},
  year   = {2019}
}

Comments

title change, leaving as stand-alone tech report

R2 v1 2026-06-23T04:40:17.463Z