Understanding Agent Incentives using Causal Influence Diagrams. Part I: Single Action Settings
February 26, 2019 Β· Declared Dead Β· + Add venue
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Authors
Tom Everitt, Pedro A. Ortega, Elizabeth Barnes, Shane Legg
arXiv ID
1902.09980
Category
cs.AI: Artificial Intelligence
Cross-listed
cs.LG
Citations
0
Last Checked
4 months ago
Abstract
Agents are systems that optimize an objective function in an environment. Together, the goal and the environment induce secondary objectives, incentives. Modeling the agent-environment interaction using causal influence diagrams, we can answer two fundamental questions about an agent's incentives directly from the graph: (1) which nodes can the agent have an incentivize to observe, and (2) which nodes can the agent have an incentivize to control? The answers tell us which information and influence points need extra protection. For example, we may want a classifier for job applications to not use the ethnicity of the candidate, and a reinforcement learning agent not to take direct control of its reward mechanism. Different algorithms and training paradigms can lead to different causal influence diagrams, so our method can be used to identify algorithms with problematic incentives and help in designing algorithms with better incentives.
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