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arxiv: 0805.0463 · v2 · submitted 2008-05-05 · 📊 stat.AP · stat.ME

Distance-based clustering of sparsely observed stochastic processes, with applications to online auctions

classification 📊 stat.AP stat.ME
keywords dataclusteringdistancedistance-basedlongitudinalonlineapplybidding
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We propose a distance between two realizations of a random process where for each realization only sparse and irregularly spaced measurements with additional measurement errors are available. Such data occur commonly in longitudinal studies and online trading data. A distance measure then makes it possible to apply distance-based analysis such as classification, clustering and multidimensional scaling for irregularly sampled longitudinal data. Once a suitable distance measure for sparsely sampled longitudinal trajectories has been found, we apply distance-based clustering methods to eBay online auction data. We identify six distinct clusters of bidding patterns. Each of these bidding patterns is found to be associated with a specific chance to obtain the auctioned item at a reasonable price.

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