Abstract
|
Article Information:
The Research on Data Mining of Slim Life Mode Based on Cycle Behavior
Liu Xianglin and Yao Binbin
Corresponding Author: Yao Binbin
Submitted: December 15, 2012
Accepted: January 17, 2013
Published: December 25, 2013 |
Abstract:
|
In this study, data mining of slim life mode based on cycle behavior is propsed. The mining of the periodic behavior is divided into four stages. The first two stages is data pre-processing stage: Firstly, parsing stay point sequence from data sequence of the original location history. Here stay point represent the geographic area to a person’s stay for some time; Secondly, cluster mining the sequence of stay point, find out the significant places, such as company, supermarket, home location, etc. Thirdly, mining periodic on the significant places. Take a place as a reference point; abstract the original location history data into binary sequence by the location point in or out the place. Then, combination two popular signal processing method fast Fourier and autocorrelation find the periods of every place. Fourthly, mining the periodic behavior of the places with the same periods, in this article, first construct the periodic behavior probabilistic model, then use the method based on the hierarchical clustering to mining the periodic behavior between different places. At last, an example is introduced.
Key words: Cycle behavior, data mining, slim life mode , , , ,
|
Abstract
|
PDF
|
HTML |
|
Cite this Reference:
Liu Xianglin and Yao Binbin, . The Research on Data Mining of Slim Life Mode Based on Cycle Behavior. Research Journal of Applied Sciences, Engineering and Technology, (24): 4563-4568.
|
|
|
|
|
ISSN (Online): 2040-7467
ISSN (Print): 2040-7459 |
|
Information |
|
|
|
Sales & Services |
|
|
|