Dissimilarity coefficients in hierarchical mixed-type data clustering / Rhyz C. Gomez.
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University Library Theses | Room-Use Only | LG993.5 2008 A64 G64 (Browse shelf(Opens below)) | Not For Loan | 3UPML00012195 | |
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University Library Archives and Records | Preservation Copy | LG993.5 2008 A64 G64 (Browse shelf(Opens below)) | Not For Loan | 3UPML00012194 |
Thesis, Undergraduate (BS Applied Mathematics)- U.P. Mindanao
Yang's dissimilarity coefficient for mixed-type data was modified using two different aggregating equations of De Carvalho. L? Eixample normalized dissimilarity coefficient for continuous attributes was used instead of Yang's dissimilarity coefficient. This modified Yang's dissimilarity coefficients were then employed on constructing hierarchical trees using single linkage, complete linkage and UPGMA on auto, heart and credit data. Single linkage clustering algorithm was found to give higher misclassifications on auto data. This is due to the fact that single linkage has a tendency to cause chaining phenomenon. The efficiency of the two modified dissimilarity coefficients was then tested based on their accuracy, entropy and purity. The first dissimilarity coefficient was found to give better improvement on the accuracy, entropy and purity of Yang's dissimilarity coefficients.
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