Entry
AI-Augmented Strategic Decision-Making Under Time Constraints: An Experimental Study on Mental Representations and Strategic Foresight
Tim Kanis, Justus Emanuel Mann, Jutta Stumpf-Wollersheim
Experimental study (N=348); LLM use broadens representation breadth but decreases depth and increases information overload, without improving foresight.
·strategic decision-making ·mental representations ·LLM ·time constraints ·foresight
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