Clustering of biological time series by cepstral coefficients based distances

Savvides, A. and Promponas, V.J. and Fokianos, K. (2008) Clustering of biological time series by cepstral coefficients based distances. Pattern Recognition, 41 (7). pp. 2398-2412. ISSN 0031-3203

Full text not available from this repository.

Abstract

Clustering of stationary time series has become an important tool in many scientific applications, like medicine, finance, etc. Time series clustering methods are based on the calculation of suitable similarity measures which identify the distance between two or more time series. These measures are either computed in the time domain or in the spectral domain. Since the computation of time domain measures is rather cumbersome we resort to spectral domain methods. A new measure of distance is proposed and it is based on the so-called cepstral coefficients which carry information about the log spectrum of a stationary time series. These coefficients are estimated by means of a semiparametric model which assumes that the log-likelihood ratio of two or more unknown spectral densities has a linear parametric form. After estimation, the estimated cepstral distance measure is given as an input to a clustering method to produce the disjoint groups of data. Simulated examples show that the method yields good results, even when the processes are not necessarily linear. These cepstral-based clustering algorithms are applied to biological time series. In particular, the proposed methodology effectively identifies distinct and biologically relevant classes of amino acid sequences with the same physicochemical properties, such as hydrophobicity.

Item Type:
Journal Article
Journal or Publication Title:
Pattern Recognition
Uncontrolled Keywords:
/dk/atira/pure/subjectarea/asjc/1700/1707
Subjects:
?? EXPONENTIAL MODELLIKELIHOODDISTANCE MEASURESSPECTRAL ANALYSISPERIODOGRAMDATA MININGPROTEIN SEQUENCE ANALYSISARTIFICIAL INTELLIGENCESIGNAL PROCESSINGSOFTWARECOMPUTER VISION AND PATTERN RECOGNITION ??
ID Code:
127879
Deposited By:
Deposited On:
03 Oct 2018 08:12
Refereed?:
Yes
Published?:
Published
Last Modified:
18 Sep 2023 01:26