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Title Analyzing Metric Space Indexes: What For?
Authors Gonzalo Navarro
Publication date 2009
Abstract It has been a long way since the beginnings of metric space searching, where
people coming from algorithmics tried to apply their background to this
new paradigm, obtaining variable, but especially difficult to explain, success
or lack of it. Since then, some has been learned about the specifics of the
problem, in particular regarding key aspects such as the intrinsic
dimensionality, that were not well understood in the beginning. The inclusion
of those aspects in the picture has led to the most important developments in
the area.
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Similarly, researchers have tried to apply asymptotic analysis concepts to
understand and predict the performance of the data structures. Again, it was
soon clear that this was insufficient, and that the characteristics of the
metric space itself could not be neglected. Although some progress has been
made on understanding concepts such as the curse of dimensionality, modern
researchers seem to have given up in using asymptotic analysis. They rely on
experiments, or at best in detailed cost models that are good predictors but
do not explain why the data structures perform in the way they do.
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In this paper I will argue that this is a big loss. Even if the predictive
capability of asymptotic analysis is poor, it constitutes a great tool to
understand the algorithmic concepts behind the different data structures, and
gives powerful hints in the design of new ones. I will exemplify my view by
recollecting what is known on asymptotic analysis of metric indexes, and will
add some new results.
Pages 3-10
Conference name International Workshop on Similarity Search and Applications
Publisher IEEE Computer Society Press (Los Alamitos, CA, USA)
Reference URL View reference page