期货是可计算的吗?奈特不确定性 与 人工智能

Are the Futures Computable? Knightian Uncertainty and Artificial Intelligence

Academy of Management Review · 2024
被引 101 · 同刊同年前 5%
人大 A+FT50UTD24ABS 4*

中文导读

研究了人工智能工具在创业中应对奈特不确定性的局限性,指出AI的预测能力受制于计算不可约性,对创业者和AI开发者有参考价值。

Abstract

The growing sophistication of artificial intelligence (AI) tools in entrepreneurship is transforming how new ventures identify, gather, analyze, and utilize information from their internal and external operating environments to automate critical choices, decisions, and tasks. For many startups and corporate ventures, prior research suggests that AI provides significant task performance advantages to entrepreneurs in addressing the problem of uncertainty, in part, through enhanced predictive capabilities. What is less clear, however, is whether AI tools enable entrepreneurs to manage the problems of “Knightian uncertainty”—a fundamental type of uncertainty that manifests in entrepreneurship through a cascading set of four interrelated problems: actor ignorance, practical indeterminism, agentic novelty, and competitive recursion. In this study, we argue that the predictive capabilities and task performance advantages of AI are contingent upon the ability of these systems to grapple with the problems of Knightian uncertainty. We investigate the logic of this approach through an in-depth analysis of the limits of foundational and emerging types of AI to address these problems, identifying fundamental areas of computational irreducibility where the manifestation of these problems limits the use of AI in entrepreneurship.

人工智能奈特不确定性创业决策计算不可约性