Improving multivariate data streams clustering.


Autoria(s): BONES, C. C.; ROMANI, L. A. S.; SOUSA, E. P. M. de
Contribuinte(s)

CHRISTIAN C. BONES, ICMC/USP; LUCIANA ALVIM SANTOS ROMANI, CNPTIA; ELAINE P. M. DE SOUSA, ICMC/USP.

Data(s)

2016

15/08/2016

Resumo

Clustering data streams is an important task in data mining research. Recently, some algorithms have been proposed to cluster data streams as a whole, but just few of them deal with multivariate data streams. Even so, these algorithms merely aggregate the attributes without touching upon the correlation among them. In order to overcome this issue, we propose a new framework to cluster multivariate data streams based on their evolving behavior over time, exploring the correlations among their attributes by computing the fractal dimension. Experimental results with climate data streams show that the clusters' quality and compactness can be improved compared to the competing method, leading to the thoughtfulness that attributes correlations cannot be put aside. In fact, the clusters' compactness are 7 to 25 times better using our method. Our framework also proves to be an useful tool to assist meteorologists in understanding the climate behavior along a period of time.

2016

Edição dos Proceedings do 16th International Conference on Computational Science, San Diego, 2016.

Identificador

18854

http://www.alice.cnptia.embrapa.br/handle/doc/1050917

10.1016/j.procs.2016.05.325

Idioma(s)

en

Publicador

Procedia Computer Science, v. 80, p. 461-471, 2016.

Relação

Embrapa Informática Agropecuária - Artigo em anais de congresso (ALICE)

Palavras-Chave #Mineração de dados #Dimensão fractal #Clusterização de dados #Agrupamento de dados #Data mining #Data streams #Cluster analysis #Fractal dimensions
Tipo

Artigo em anais de congresso (ALICE)