The Delta-L problem refers to a challenge in decision theory and artificial intelligence, particularly in the context of designing agents that can make decisions in uncertain environments. It arises from the need to specify a utility function that accurately reflects the preferences of an agent when it is trying to optimize outcomes. The term "Delta-L" specifically comes from a scenario where an agent must choose actions that maximize a utility function over time, but the utility function may not be fully known or may be subject to change.
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