Converging for effective exploration : how to learn across unique successes
Author(s)
Fu, Carolyn J.
Download1200234902-MIT.pdf (3.383Mb)
Alternative title
How to learn across unique successes
Other Contributors
Sloan School of Management.
Advisor
Ray Reagans.
Terms of use
Metadata
Show full item recordAbstract
Organizations are often advised to engage heavily in exploration in order to succeed - casting a wide net for diverse solutions that are superior to what it currently exploits. However, what is the organization to do when the fruits of its exploration are not commensurate with one another? If all solutions appear beneficial, but each recommends differenth decisions for the same organizational choice, how should an organization learn from them? Unfortunately, such a mixed bag of learning opportunities is likely to be the case on a rugged learning environment, where solutions succeed not because of specific individual choices, but due to the complementarities between these choices. By applying the learning mechanisms in March (1991) onto an NK landscape, this paper is able to show that such a challenge is surprisingly surmountable - with March's algorithm performing almost as well on a rugged landscape as it does on a smooth one. While the rugged learning opportunities may initially stymie the organization, March's inherent process of mutual learning enables explorations to grow progressively similar, so as to converge upon a smooth locality. On this smoothed locality, valuable explorations then become salient enough to learn from. The counterintuitive takeaway is thus that in order to capitalize on diverse explorations, an organization must first engage in convergence.
Description
Thesis: S.M. in Management Research, Massachusetts Institute of Technology, Sloan School of Management, May, 2020 Cataloged from PDF of thesis. Includes bibliographical references (pages 22-23).
Date issued
2020Department
Sloan School of ManagementPublisher
Massachusetts Institute of Technology
Keywords
Sloan School of Management.