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Error-space representations for multi-dimensional data streams with temporal dependence

Research output: Contribution to journalArticlepeer-review

Abstract

In many application scenarios, data points are not only temporally dependent, but also expected in the form of a fast-moving stream. A broad selection of efficient learning algorithms exists which may be applied to data streams, but they typically do not take into account the temporal nature of the data. We motivate and design a method which creates an efficient representation of a data stream, where temporal information is embedded into each instance via the error space of forecasting models. Unlike many other methods in the literature, our approach can be rapidly initialized and does not require iterations over the full data sequence, thus it is suitable for a streaming scenario. This allows the application of off-the-shelf data-stream methods, depending on the application domain. In this paper, we investigate classification. We compare to a large variety of methods (auto-encoders, HMMs, basis functions, clustering methodologies, and PCA) and find that our proposed methods perform very competitively, and offers much promise for future work.

Original languageEnglish
Pages (from-to)1211-1220
Number of pages10
JournalPattern Analysis and Applications
Volume22
Issue number3
DOIs
Publication statusPublished - 1 Aug 2019

Keywords

  • Concept drift
  • Data streams
  • Feature representations
  • Multi-dimensional data
  • Time series

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