Please use this identifier to cite or link to this item: https://scholar.utcc.ac.th/handle/6626976254/549
Title: Socio-Economic Household Data Analysis Using the Clustering and Association Technique for Data Mining
Authors: Phipathananunth, Chadarat 
Jalearnrat, Sirithorn 
Mongkolsripattana, Sasithorn 
Issue Date: 2013
Publisher: University of the Thai Chamber of Commerce
University of the Thai Chamber of Commerce
Source: Chadarat Phipathananunth, Sirithorn Jalearnrat, Sasithorn Mongkolsripattana (2013) Socio-Economic Household Data Analysis Using the Clustering and Association Technique for Data Mining.
Abstract: In this research, we studies and analyses the data from the Household Socio-Economic Survey 2009 of the Office of National Statistics, Thailand. We use K-means algorithm to cluster the expenditure of the population. By using DB Index and SD Validity, Index, we found that the appropriate number of clusters is three clusters. Then we use association rule technique to determine the relationship between variables. The results show that the association rules are similar among clusters. For example, the average monthly household income is related to the average monthly household cost. Besides, household size is related to number of earners per household. Furthermore, the monthly tobacco cost for a household is associated with a number of members who are entitled to reimbursement for medical expenses.
URI: https://scholar.utcc.ac.th/handle/6626976254/549
Rights: This work is protected by copyright. Reproduction or distribution of the work in any format is prohibited without written permission of the copyright owner.
Appears in Collections:ST: Research Reports

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