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http://dx.doi.org/10.7465/jkdi.2013.24.1.41

Study on the K-scale reflecting the confidence of survey responses  

Park, Hye Jung (Daegu University)
Pi, Su Young (Faculty of Liberal Education, Catholic University of Daegu)
Publication Information
Journal of the Korean Data and Information Science Society / v.24, no.1, 2013 , pp. 41-51 More about this Journal
Abstract
In the Information age, internet addiction has been a big issue in a modern society. The adverse effects of the internet addiction have been increasing at an exponential speed. Along with a great variety of internet-connected device supplies, K-scale diagnostic criteria have been used for the internet addiction self-diagnose tests in the high-speed wireless Internet service, netbooks, and smart phones, etc. The K-scale diagnostic criteria needed to be changed to meet the changing times, and the diagnostic criteria of K-scale was changed in March, 2012. In this paper, we analyze the internet addiction and K-scale features on the actual condition of Gyeongbuk collegiate areas using the revised K-scale diagnostic criteria in 2012. The diagnostic method on internet addiction is measured by the respondents' subjective estimation. Willful error of the respondents can be occurred to hide their truth. In this paper, we add the survey response to the trusted reliability values to reduce response errors on the K-scale on the K-scale, and enhance the reliability of the analysis.
Keywords
Cluster analysis; factor analysis; Gaussian kernel; internet addiction; K-scale; support vector cluster;
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Times Cited By KSCI : 6  (Citation Analysis)
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