Citation
Abubacker, Nirase Fathima and Azman, Azreen and C. Doraisamy, Shyamala and Azmi Murad, Masrah Azrifah and Elmanna, Mohamed Eltahir Makki and Saravanan, Rekha
(2014)
Correlation-based feature selection for association rule mining in semantic annotation of mammographic medical images.
In: 10th Asia Information Retrieval Societies Conference (AIRS 2014), 3-5 Dec. 2014, Kuching, Sarawak, Malaysia. (pp. 482-493).
Abstract
Mining of high dimension data for mammogram image classification is highly challenging. Feature reduction using subset selection plays enormous significance in the field of image mining to reduce the complexity of image mining process. This paper aims at investigating an improved image mining technique to enhance the automatic and semi-automatic semantic image annotation of mammography images using multivariate filters, which is the Correlation-based Feature Selection (CFS). This feature selection method is then applied onto two association rules mining methods, the Apriori and a modified genetic association rule mining technique, the GARM, to classify mammography images into their pathological labels. The findings show that the classification accuracy is improved with the use of CFS in both Apriori and GARM mining techniques.
Download File
Preview |
|
PDF (Abstract)
Correlation-based feature selection for association rule mining in semantic annotation of mammographic medical images.pdf
Download (35kB)
| Preview
|
|
Additional Metadata
Actions (login required)
|
View Item |