Article
A new approach to qualitative learning in time series
Author/s | González Abril, Luis
Velasco Morente, Francisco Ortega Ramírez, Juan Antonio Cuberos, Francisco Javier |
Department | Universidad de Sevilla. Departamento de Lenguajes y Sistemas Informáticos Universidad de Sevilla. Departamento de Economía Aplicada I |
Publication Date | 2009-08 |
Deposit Date | 2023-02-14 |
Published in |
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Abstract | In this paper the k-nearest-neighbours (KNN) based method is presented for the classification of time series which use qualitative learning to identify similarities using kernels. To this end, time series are transformed ... In this paper the k-nearest-neighbours (KNN) based method is presented for the classification of time series which use qualitative learning to identify similarities using kernels. To this end, time series are transformed into symbol strings by means of several discretization methods and a distance based on a kernel between symbols in ordinal scale is used to calculate the similarity between time series. Hence, the idea proposed is the consideration of the simultaneous use of symbolic representation together with a kernel based approach for classification of time series. The methodology has been tested and compared with quantitative learning from a television-viewing shared data set and has yielded a high success identification ratio. |
Funding agencies | Ministerio de Educación y Ciencia (MEC). España Junta de Andalucía |
Project ID. | TSI2006-13390-C02-02
P06-TIC-02141 |
Citation | González Abril, L., Velasco Morente, F., Ortega Ramírez, J.A. y Cuberos, F.J. (2009). A new approach to qualitative learning in time series. Expert Systems with Applications, 36 (6), 9924-9927. https://doi.org/10.1016/j.eswa.2009.01.066. |
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