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User Heterogeneity and its Impact on
Electronic Auction Market Design:
An Empirical Exploration
Ravi Bapna, Paulo Goes,
Alok Gupta, and Yiwei
Jin
Volume 28, Number 1
Abstract
While traditional information systems research emphasizes
understanding
of end users from perspectives such as cognitive fit and technology
acceptance,
it fails to consider the economic dimensions of their interactions with
a system. When viewed as economic agents who participate in
electronic
markets, it is easy to see that users’ preferences, behaviors,
personalities,
and ultimately their economic welfare are intricately linked to the
design
of information systems. We use a data-driven, inductive approach
to develop a taxonomy of bidding behavior in online auctions. Our
analysis indicates significant heterogeneity exists in the user base of
these representative electronic markets. Using online auction
data
from 1999 and 2000, we find a stable taxonomy of bidder behavior
containing
five types of bidding strategies. Bidders pursue different bidding
strategies
that, in aggregate, realize different winning likelihoods and consumer
surplus. We find that technological evolution has an impact on
bidders’
strategies. We demonstrate how the taxonomy of bidder behavior
can
be used to enhance the design of some types of information
systems.
These enhancements include developing user-centric bidding agents,
inferring
bidders’ underlying valuations to facilitate real-time auction
calibration,
and creating low-risk computational platforms for decision making.
Keywords:
Electronic markets, online auctions, bidding strategies, user behavior
taxonomy, smart agents, valuation discovery, calibration, simulation
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