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Granular Analysis of Time Sequence Based on Quotient Space
Sydney Australia November 28-December 01
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/CIMCA.2006.112International Conference on Computati ...
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Liquan Zhao, University of Finance and Economics, China; Anhui University, China
Ling Zhang, Anhui University, China
Bo Zhang, Tsinghua University, China
This paper aims to carry out granular analysis of time sequence based on quotient space. Granular methods have long before been adopted to analyze time sequence, but the granularity was based on time, for example, day mean, month mean, year mean and so on in finance forecast. In this paper, the granularity is based on space and some significant results are obtained: we can, in certain circumstances, get characteristics of time sequence in an original space when carrying out granular analysis of it in its coarser-grain space; granular analysis of a Markov chain is equivalent to an hidden Markov model (HMM), contrarily, any HMM is equivalent to granular analysis of a Markov chain. These results deepened our understanding of HMM from the perspective of granular analysis. We can not only use the methods of HMM to study time sequence, but also use the methods of granular analysis based on quotient space theory to solve the problems of HMM.
Index Terms:
Quotient Space; Granular Computing; Markov Chain; HMM.
Citation:
Liquan Zhao, Ling Zhang, Bo Zhang, "Granular Analysis of Time Sequence Based on Quotient Space," cimca, pp.69, International Conference on Computational Inteligence for Modelling Control and Automation and International Conference on Intelligent Agents Web Technologies and International Commerce (CIMCA'06), 2006
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