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Evaluation of hierarchical clustering algorithms for document datasets
Ying Zhao
,
George Karypis
Computer Science and Engineering
Research output
:
Contribution to conference
›
Paper
›
peer-review
420
Scopus citations
Overview
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Keyphrases
Hierarchical Clustering Algorithm
100%
Partitional
100%
Document Datasets
100%
Agglomerative Hierarchical Clustering Algorithm
75%
Hierarchical Clustering
50%
Clustering Algorithm
50%
Large Document
50%
Cluster Solutions
50%
Browsing
25%
Computational Requirements
25%
Partitional Clustering Algorithm
25%
Document Clustering
25%
Low Computational
25%
Hierarchical Solution
25%
Document Collections
25%
Cluster Performance
25%
Granularity Level
25%
Agglomerative Approach
25%
Agglomerative
25%
Computer Science
Clustering Algorithm
100%
Hierarchical Clustering
100%
Agglomerative Algorithm
75%
Granularity
25%
Document Clustering
25%
Experimental Result
25%