An Anonymous Algorithm for Calculating Dissimilarity Metric on Clustering
Journal: Computing, Performance and Communication Systems (Vol.1, No. 1)Publication Date: 2016-12-31
Authors : Sun Yi; Li Chi;
Page : 22-27
Keywords : dissimilarity metric; multi-category; interval-scaled attribute; binary attribute; nominal attribute; ordinal attribute; proportional-scaled attribute; symmetric binary attribute; asymmetric binary attribute; clustering;
Abstract
By the research on calculating the dissimilarity metric among tuples with many different attributes based on clustering, this paper improves dissimilarity metric algorithm, which can more accurately reflect the differences between tuples. Besides, in terms of various attribute types ,the value of attribute is divided into multi-category. According to the multi-category, we come to the final dissimilarity metric result through analysis. The experimental results show that this algorithm is able to achieve highly accurate dissimilarity metric results.
Other Latest Articles
- Parallel Matched Filtering Algorithm with Low Complexity
- A Watermarking Method by Modifying QTCs for HEVC
- The Improvement and Implementation of the High Concurrency Web Server Based on Nginx
- Biometrics and education: a review about facial authentication software for the identification and verification of students who use virtual learning platform (LMS)
- Reform and Practice of Hydraulics and Pneumatics Course
Last modified: 2017-03-29 06:57:30