Title of article :
Clustering stationary and non-stationary time series based on autocorrelation distance of hierarchical and k-means algorithms
Author/Authors :
Riyadi, Mohammad Alfan Alfian Departement of Sta tistics Institut Teknologi Sepuluh Nopember - Surabaya, Indonesia , Irawan , Aldho Riski Departement of Sta tistics Institut Teknologi Sepuluh Nopember - Surabaya, Indonesia , Fithriasari , Kartika Departement of Sta tistics Institut Teknologi Sepuluh Nopember - Surabaya, Indonesia , Pratiwi , Dian Sukma Departement of Actuarial Science - Bandung, Indonesia
Pages :
7
From page :
154
To page :
160
Abstract :
Observing large dimension time series could be time-consuming. One identification and classification approach is a time series clustering. This study aimed to compare the accuracy of two algorithms, hierarchical cluster and K-Means cluster, using ACF’s distance for clustering stationary and non-stationary time series data. This research uses both simulation and real datasets. The simulation generates 7 stationary data models and another 7 of non-stationary data models. On the other hands, the real dataset is the daily temperature data in 34 cities in Indonesia. As a result, K-Means algorithm has the highest accuracy for both data models.
Keywords :
Stationary Time Series , Non Stationary Time Series , K-Means Algorithm , Hierarchical Algorithm , Autocorrelation Distance
Journal title :
International Journal of Advances in Intelligent Informatics
Serial Year :
2017
Full Text URL :
Record number :
2601736
Link To Document :
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