Information-Theoretic Aggregation of Ethical Attributes in Simulated-Command
Taylan Akay, Harrison Tolley, Hussein Abbass

TL;DR
This paper proposes an information-theoretic method to dynamically weight ethical attributes in AI simulations, enabling large-scale ethical scenario exploration without human judgment during each decision.
Contribution
It introduces a novel approach using entropy-based methods to automatically determine ethical attribute weights during AI simulations, reducing human involvement.
Findings
Entropy-based weighting effectively aggregates ethical attributes.
The method enables scalable ethical scenario testing.
Automates ethical decision weighting during simulations.
Abstract
In the age of AI, human commanders need to use the computational powers available in today's environment to simulate a very large number of scenarios. Within each scenario, situations occur where different decision design options could have ethical consequences. Making these decisions reliant on human judgement is both counter-productive to the aim of exploring very large number of scenarios in a timely manner and infeasible when considering the workload needed to involve humans in each of these choices. In this paper, we move human judgement outside the simulation decision cycle. Basically, the human will design the ethical metric space, leaving it to the simulated environment to explore the space. When the simulation completes its testing cycles, the testing environment will come back to the human commander with a few options to select from. The human commander will then exercise…
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Taxonomy
TopicsEthics and Social Impacts of AI · Military Strategy and Technology · Innovation, Sustainability, Human-Machine Systems
