Journal article
Medical Document Clustering Using Ontology-Based Term Similarity Measures
International journal of data warehousing and mining, v 4(1), pp 62-73
01 Jan 2008
Abstract
Recent research shows that ontology as background knowledge can improve document clustering quality with its concept hierarchy knowledge. Previous studies take term semantic similarity as an important measure to incorporate domain knowledge into clustering process such as clustering initialization and term re-weighting. However, not many studies have been focused on how different types of term similarity measures affect the clustering performance for a certain domain. In this article, we conduct a comparative study on how different term semantic similarity measures including path-based, information-content-based and feature-based similarity measure affect document clustering. Term re-weighting of document vector is an important method to integrate domain ontology to clustering process. In detail, the weight of a term is augmented by the weights of its cooccurred concepts. Spherical k-means are used for evaluate document vector re-weighting on two real-world datasets: Disease10 and OHSUMED23. Experimental results on nine different semantic measures have shown that: (1) there is no certain type of similarity measures that significantly outperforms the others; (2) Several similarity measures have rather more stable performance than the others; (3) term re-weighting has positive effects on medical document clustering, but might not be significant when documents are short of terms.
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25 citations in Scopus
Details
- Title
- Medical Document Clustering Using Ontology-Based Term Similarity Measures
- Creators
- Xiaodan Zhang - Drexel UniversityLiping Jing - University of Hong KongXiaohua Hu - Drexel UniversityMichael Ng - Hong Kong Baptist UniversityJiali Jiangxi - University of Finance and Economics, ChinaXiaohua Zhou - Drexel University
- Publication Details
- International journal of data warehousing and mining, v 4(1), pp 62-73
- Number of pages
- 12
- Resource Type
- Journal article
- Language
- English
- Academic Unit
- Information Science
- Scopus ID
- 2-s2.0-47349099902
- Other Identifier
- 991019173701604721