Dimensionality Reduction in Time Series:

Dimensionality Reduction in Time Series: A PLA-Block-Sorting Method

Bachir Boucheham

Department of Informatics, University of Skikda , Algeria

 

Abstract: We address the data reduction in time series problem through a combination of two newly developed algorithms. The first is a modified version of the Douglas-Peucker Algorithm (DPA) for short-term redundancy reduction. The second is an alternative to the classical statistic methods for long-term redundancy reduction and is based on block sorting. The block sorting technique is inspired from the quite recent Burrows and Wheeler Algorithm (BWA). The novel reduction scheme was applied to the ECG time series using the MITBIH public ECG database. Results show that the novel scheme is highly competitive with respect to the most performant existing techniques (SPIHT, TSVD, CCSP-ORD-VLC and others).

Keywords: Data reduction, time series, long-term compression,Douglas-Peucker algorithm, block sorting.

Received February 2, 2006; accepted April 16, 2006

Read 7659 times Last modified on Wednesday, 20 January 2010 02:48
Share

Upcoming courses

  • Diploma Courses
  • Business and Enterprise
  • Digital Literacy & IT
  • Health Literacy
  • Business Literacy

Free courses

Starting from Jun. 14 2016

the degree finder

in 3 easy steps
Top
We use cookies to improve our website. By continuing to use this website, you are giving consent to cookies being used. More details…