直觉
互补性(分子生物学)
计算机科学
人工智能
机器学习
计量经济学
经济
心理学
认知科学
遗传学
生物
作者
Ajay Agrawal,John McHale,Alexander Oettl
出处
期刊:Research Policy
[Elsevier BV]
日期:2024-03-23
卷期号:53 (5): 104989-104989
被引量:14
标识
DOI:10.1016/j.respol.2024.104989
摘要
We model a key step in the innovation process, hypothesis generation, as the making of predictions over a vast combinatorial space. Traditionally, scientists and innovators use theory or intuition to guide their search. Increasingly, however, they use artificial intelligence (AI) instead. We model innovation as resulting from sequential search over a combinatorial design space, where the prioritization of costly tests is achieved using a predictive model. The predictive model's ranked output is represented as a hazard function. Discrete survival analysis is used to obtain the main innovation outcomes of interest – the probability of innovation, expected search duration, and expected profit. We describe conditions under which shifting from the traditional method of hypothesis generation, using theory or intuition, to instead using AI that generates higher fidelity predictions, results in a higher likelihood of successful innovation, shorter search durations, and higher expected profits. We then explore the complementarity between hypothesis generation and hypothesis testing; potential gains from AI may not be realized without significant investment in testing capacity. We discuss the policy implications.
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