Authors
Alessandro Camerra, Themis Palpanas, Jin Shieh, Eamonn Keogh
Publication date
2010/12/13
Conference
2010 IEEE international conference on data mining
Pages
58-67
Publisher
IEEE
Description
There is an increasingly pressing need, by several applications in diverse domains, for developing techniques able to index and mine very large collections of time series. Examples of such applications come from astronomy, biology, the web, and other domains. It is not unusual for these applications to involve numbers of time series in the order of hundreds of millions to billions. However, all relevant techniques that have been proposed in the literature so far have not considered any data collections much larger than one-million time series. In this paper, we describe iSAX 2.0, a data structure designed for indexing and mining truly massive collections of time series. We show that the main bottleneck in mining such massive datasets is the time taken to build the index, and we thus introduce a novel bulk loading mechanism, the first of this kind specifically tailored to a time series index. We show how our method …
Total citations
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Scholar articles
A Camerra, T Palpanas, J Shieh, E Keogh - 2010 IEEE international conference on data mining, 2010