IEICE Transactions on Information and Systems
Online ISSN : 1745-1361
Print ISSN : 0916-8532
Regular Section
DTW-Distance Based Kernel for Time Series Data
Hiroyuki NARITAYasumasa SAWAMURAAkira HAYASHI
Author information
Keywords: DTW, SDP, SVM
JOURNAL FREE ACCESS

2009 Volume E92.D Issue 1 Pages 51-58

Details
Abstract
One of the advantages of the kernel methods is that they can deal with various kinds of objects, not necessarily vectorial data with a fixed number of attributes. In this paper, we develop kernels for time series data using dynamic time warping (DTW) distances. Since DTW distances are pseudo distances that do not satisfy the triangle inequality, a kernel matrix based on them is not positive semidefinite, in general. We use semidefinite programming (SDP) to guarantee the positive definiteness of a kernel matrix. We present neighborhood preserving embedding (NPE), an SDP formulation to obtain a kernel matrix that best preserves the local geometry of time series data. We also present an out-of-sample extension (OSE) for NPE. We use two applications, time series classification and time series embedding for similarity search, to validate our approach.
Content from these authors
© 2009 The Institute of Electronics, Information and Communication Engineers
Previous article Next article
feedback
Top