E-loyalty networks in online auctions
Wolfgang Jank, Inbal Yahav

TL;DR
This paper introduces a novel network-based measure of e-loyalty in online auctions, analyzing its impact on auction outcomes using a large dataset and advanced statistical techniques to address clustering issues.
Contribution
It proposes a new measure of e-loyalty based on transaction networks and applies functional principal component analysis to summarize loyalty distributions.
Findings
Loyalty networks show distinct segments with varying loyalty levels.
High loyalty correlates with better auction outcomes.
Clustering affects statistical modeling of loyalty data.
Abstract
Creating a loyal customer base is one of the most important, and at the same time, most difficult tasks a company faces. Creating loyalty online (e-loyalty) is especially difficult since customers can ``switch'' to a competitor with the click of a mouse. In this paper we investigate e-loyalty in online auctions. Using a unique data set of over 30,000 auctions from one of the main consumer-to-consumer online auction houses, we propose a novel measure of e-loyalty via the associated network of transactions between bidders and sellers. Using a bipartite network of bidder and seller nodes, two nodes are linked when a bidder purchases from a seller and the number of repeat-purchases determines the strength of that link. We employ ideas from functional principal component analysis to derive, from this network, the loyalty distribution which measures the perceived loyalty of every individual…
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