Paper: Agentic Abstention: Do Agents Know When to Stop Instead of Act?
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Problem
LLM agents are increasingly being used to tackle complex tasks, often involving multiple steps and interactions with external tools like web browsers or terminals. However, not every task is well-defined or even solvable within the available environment. This paper addresses a critical but largely overlooked problem: how do these agents decide when not to act – specifically, when to abstain from further action because continued attempts are unlikely to yield results? The authors term this “Agentic Abstention.” Current evaluation of LLM abstention often focuses on single-turn decisions; this work looks at the sequential decision making over multiple interactions.



