Symbolic representation based on trend features for knowledge discovery in long time series

Hong YIN, Shu-qiang YANG, Xiao-qian ZHU, Shao-dong MA, Lu-min ZHANG

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Front. Inform. Technol. Electron. Eng ›› 2015, Vol. 16 ›› Issue (9) : 744-758. DOI: 10.1631/FITEE.1400376

Symbolic representation based on trend features for knowledge discovery in long time series

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Abstract

The symbolic representation of time series has attracted much research interest recently. The high dimensionality typical of the data is challenging, especially as the time series becomes longer. The wide distribution of sensors collecting more and more data exacerbates the problem. Representing a time series effectively is an essential task for decision-making activities such as classification, prediction, and knowledge discovery. In this paper, we propose a new symbolic representation method for long time series based on trend features, called trend feature symbolic approximation (TFSA). The method uses a two-step mechanism to segment long time series rapidly. Unlike some previous symbolic methods, it focuses on retaining most of the trend features and patterns of the original series. A time series is represented by trend symbols, which are also suitable for use in knowledge discovery, such as association rules mining. TFSA provides the lower bounding guarantee. Experimental results show that, compared with some previous methods, it not only has better segmentation efficiency and classification accuracy, but also is applicable for use in knowledge discovery from time series.

Keywords

Long time series / Segmentation / Trend features / Symbolic / Knowledge discovery

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Hong YIN, Shu-qiang YANG, Xiao-qian ZHU, Shao-dong MA, Lu-min ZHANG. Symbolic representation based on trend features for knowledge discovery in long time series. Front. Inform. Technol. Electron. Eng, 2015, 16(9): 744‒758 https://doi.org/10.1631/FITEE.1400376

References

[1]
Agrawal, R., Srikant, R., 1995. Mining sequential patterns. Proc. 11th Int. Conf. on Data Engineering, p.3―14. [
CrossRef Google scholar
[2]
André-Jönsson, H., Badal, D.Z., 1997. Using signature files for querying time-series data. Proc. 1st European Symp. On Principles of Data Mining and Knowledge Discovery, p.211―220. [
CrossRef Google scholar
[3]
Bao, D., Yang, Z., 2008. Intelligent stock trading system by turning point confirming and probabilistic reasoning. Expert Syst. Appl., 34(1): 620―627. [
CrossRef Google scholar
[4]
Borgelt, C., Kruse, R., 2002. Induction of association rules: apriori implementation. Proc. Computational Statistics, p.395―400. [
CrossRef Google scholar
[5]
Bu, Y., Chen, L., Fu, A.W.C., , 2009. Efficient anomaly monitoring over moving object trajectory streams. Proc. 15th ACM SIGKDD Int. Conf. on Knowledge Discovery and Data Mining, p.159―168. [
CrossRef Google scholar
[6]
Chan, K.P., Fu, A.W.C., 1999. Efficient time series matching by wavelets. Proc. 15th Int. Conf. on Data Engineering, p.126―133. [
CrossRef Google scholar
[7]
Dasgupta, D., Forrest, S., 1996. Novelty detection in time series data using ideas from immunology. Proc. 5th Int. Conf. on Intelligent Systems, p.82―87.
[8]
Esling, P., Agon, C., 2012. Time-series data mining. ACM Comput. Surv., 45(1), Article 12. [
CrossRef Google scholar
[9]
Faloutsos, C., Ranganathan, M., Manolopoulos, Y., 1994. Fast subsequence matching in time-series databases. Proc. ACM SIGMOD Int. Conf. on Management of Data, p.419―429. [
CrossRef Google scholar
[10]
Guimarães, G., Ultsch, A., 1999. A method for temporal knowledge conversion. Proc. 3rd Int. Symp. on Advances in Intelligent Data Analysis, p.369―380. [
CrossRef Google scholar
[11]
Guimarães, G., Peter, J.H., Penzel, T., , 2001. A method for automated temporal knowledge acquisition applied to sleep-related breathing disorders. Artif. Intell. Med., 23(3): 211―237. [
CrossRef Google scholar
[12]
Kadous, M.W., 1999. Learning comprehensible descriptions of multivariate time series. Proc. 16th Int. Conf. of Machine Learning, p.454―463.
[13]
Keogh, E., Chakrabarti, K., Pazzani, M., , 2001. Locally adaptive dimensionality reduction for indexing large time series databases. Proc. ACM SIGMOD Int. Conf. on Management of Data, p.151―162. [
CrossRef Google scholar
[14]
Kontaki, M., Papadopoulos, A.N., Manolopoulos, Y., 2005. Continuous trend-based classification of streaming time series. Proc. 9th East European Conf. on Advances in Databases and Information Systems, p.294―308. [
CrossRef Google scholar
[15]
Kontaki, M., Papadopoulos, A.N., Manolopoulos, Y., 2008. Continuous trend-based clustering in data streams. Proc. 10th Int. Conf. on Data Warehousing and Knowledge Discovery, p.251―262. [
CrossRef Google scholar
[16]
Korn, F., Jagadish, H.V., Faloutsos, C., 1997. Efficiently supporting ad hoc queries in large datasets of time sequences. Proc. ACM SIGMOD Int. Conf. on Management of Data, p.289―300. [
CrossRef Google scholar
[17]
Lavielle, M., Teyssière, G., 2006. Detection of multiple change-points in multivariate time series. Lithuan. Math. J., 46(3): 287―306. [
CrossRef Google scholar
[18]
Lin, J., Keogh, E., Lonardi, S., , 2003. A symbolic representation of time series, with implications for streaming algorithms. Proc. 8th ACM SIGMOD Workshop on Research Issues in Data Mining and Knowledge Discovery, p.2―11. [
CrossRef Google scholar
[19]
Manganaris, S., 1997. Supervised Classification with Temporal Data. PhD Thesis, Vanderbilt University, USA.
[20]
Mannila, H., Toivonen, H., 1996. Discovering generalized episodes using minimal occurrences. Proc. Int. Conf. on Knowledge Discovery and Data Mining, p.146―151.
[21]
Mellit, A., Pavan, A.M., Benghanem, M., 2013. Least squares support vector machine for short-term prediction of meteorological time series. Theor. Appl. Climatol., 111(1-2): 297―307. [
CrossRef Google scholar
[22]
Moody, G.B., Mark, R.G., 1983. A new method for detecting atrial fibrillation using RR intervals. Comput. Cardiol., 10: 227―230.
[23]
Phetking, C., Noor Md Sap, M., Selamat, A., 2008. A multiresolution important point retrieval method for financial time series representation. Proc. Int. Conf. on Computer and Communication Engineering, p.510―515. [
CrossRef Google scholar
[24]
Poll, S., de Kleer, J., Feldman, A., , 2010. Second international diagnostics competition—DXC’10. Proc. 21st Int. Workshop on Principles of Diagnosis, p.1―15.
[25]
Sarkar, S., Mukherjee, K., Sarkar, S., , 2013. Symbolic dynamic analysis of transient time series for fault detection in gas turbine engines. J. Dynam. Syst., Meas. Contr., 135(1): 014506.1―014506.6. [
CrossRef Google scholar
[26]
Villafane, R., Hua, K.A., Tran, D., , 2000. Knowledge discovery from series of interval events. J. Intell. Inform. Syst., 15(1): 71―89. [
CrossRef Google scholar
[27]
Vullings, H.J.L.M., Verhaegen, M.H.G., Verbruggen, H.B., 1997. ECG segmentation using time-warping. Proc. 2nd Int. Symp. on Advances in Intelligent Data Analysis Reasoning about Data, p.275―285. [
CrossRef Google scholar
[28]
Yeh, A.B., Lin, D.K.J., Venkataramani, C., 2004. Unified CUSUM charts for monitoring process mean and variability. Qual. Technol. Quant. Manag., 1(1): 65―86.
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