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Published 2002 | public
Book Section - Chapter

EWA learning in bilateral call markets

Abstract

This paper is about learning in bilateral call markets. In these markets, a buyer and a seller are privately informed of their values and submit their bids anonymously. If the buyer's bid is (weakly) more than the seller's ask, they trade at the midpoint of their bids. Understanding learning in bilateral call markets serves as a foundation for studying learning in more complex market institutions such as posted offers and double auctions. It also forces a generalization of learning models developed for simpler games to environments in which learning contingent on one realized random variable, such as a buyer's valuation in one trial. Similarity-based generalization is a natural way to extend what is learned locally, which is undoubtedly important when people learn in very complex environments (which has not been thoroughly explored experimentally).

Additional Information

© 2002 Kluwer Academic Publishers. Thanks to James Walker and Terry Daniel for supplying data and to Amnon Rapoport for valuable comments on an earlier version of this manuscript. This research has been supported by NSF grant SBR 9730364 and a MacArthur Foundation Preferences Network postdoctoral fellowship to David Hsia.

Additional details

Created:
August 19, 2023
Modified:
October 23, 2023