Smoothing Sparse and Unevenly-Sampled Curves using Semiparametric Mixed Models: An Application to Online Auctions

TitleSmoothing Sparse and Unevenly-Sampled Curves using Semiparametric Mixed Models: An Application to Online Auctions
Publication TypeJournal Article
Year of Publication2008
AuthorsRettinger, F., W. Jank, G. Tutz, and G. Shmueli
JournalJournal of The Royal Statistical Society, Series C (Applied Statistics)
Volume57
Issue2
Pages127-148
Abstract

On-line auctions pose many challenges for the empirical researcher, one of which
is the effective and reliable modelling of price paths.We propose a novel way of modelling price paths in eBay’s on-line auctions by using functional data analysis.One of the practical challenges is that the functional objects are sampled only very sparsely and unevenly. Most approaches rely on smoothing to recover the underlying functional object from the data, which can be difficult if the data are irregularly distributed.We present a new approach that can overcome this challenge. The approach is based on the ideas of mixed models. Specifically, we propose a semiparametric mixed model with boosting to recover the functional object. As well as being able to handle sparse and unevenly distributed data, the model also results in conceptually more meaningful functional objects. In particular, we motivate our method within the framework of eBay’s on-line auctions. On-line auctions produce monotonic increasing price curves that are often correlated across auctions.The semiparametric mixed model accounts for this correlation in a parsimonious way. It also manages to capture the underlying monotonic trend in the data without imposing model constraints. Our application shows that the resulting functional objects are conceptually more appealing. Moreover, when used to forecast the outcome of an on-line auction, our approach also results in more accurate price predictions compared with standard approaches.We illustrate our model on a set of 183 closed auctions for Palm M515 personal digital assistants.

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