Abstract
AbstractIntelligence scholars are drawing on behavioural decision theory to improve decision-making under risk and uncertainty in intelligence and counterintelligence. Such an undertaking is essentially lacking without the Austrian school’s concepts of knowledge, discovery, (entrepreneurial) judgement, ignorance, rational calculation and, more generally, its analysis of human action in the face of true uncertainty. Decision theory, both orthodox and behavioural, depicts decision rather narrowly as a prioritisation task undertaken within a delineated problem space where the probabilities “sum to one”. From such a perspective, certain perennial challenges in intelligence and counterintelligence appear resolvable when in fact they are not, at least not when approached from the usual direction. We explain how Austrian concepts can complement efforts to improve intelligence decision-making. We conclude that the future strategic value of intelligence analysis is located beyond information acquisition, however fast and however vast. Intelligence agencies have no price signals to help them determine how much intelligence to produce. And governments have no price signals to moderate their appetites for the intelligence product. Ultimately, those agencies that recognise the implications of intelligence agencies as non-price institutions and adapt their decision-making processes may find that they have the upper hand over their rivals.
Funder
University of Southern Queensland
Publisher
Springer Science and Business Media LLC
Subject
General Economics, Econometrics and Finance
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