Discovering associations in biomedical datasets by link-based associative classifier (LAC)

Associative classification mining (ACM) can be used to provide predictive models with high accuracy as well as interpretability. However, traditional ACM ignores the difference of significances among the features used for mining. Although weighted associative classification mining (WACM) addresses t...

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Veröffentlicht in:PloS one 2012-12, Vol.7 (12), p.e51018
Hauptverfasser: Yu, Pulan, Wild, David J
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description Associative classification mining (ACM) can be used to provide predictive models with high accuracy as well as interpretability. However, traditional ACM ignores the difference of significances among the features used for mining. Although weighted associative classification mining (WACM) addresses this issue by assigning different weights to features, most implementations can only be utilized when pre-assigned weights are available. In this paper, we propose a link-based approach to automatically derive weight information from a dataset using link-based models which treat the dataset as a bipartite model. By combining this link-based feature weighting method with a traditional ACM method-classification based on associations (CBA), a Link-based Associative Classifier (LAC) is developed. We then demonstrate the application of LAC to biomedical datasets for association discovery between chemical compounds and bioactivities or diseases. The results indicate that the novel link-based weighting method is comparable to support vector machine (SVM) and RELIEF method, and is capable of capturing significant features. Additionally, LAC is shown to produce models with high accuracies and discover interesting associations which may otherwise remain unrevealed by traditional ACM.
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subjects Algorithms
Associations
Biological activity
Biology
Breast cancer
Cell Line, Tumor
Chemical compounds
Chemistry
Classification
Classifiers
Computer Science
Data mining
Databases as Topic
Datasets
Disease
Gene expression
Humans
Hypertension
Informatics
International conferences
Kinases
Leukemia
Medical research
Model accuracy
Models, Biological
Mutagenicity Tests
Prediction models
Proteins
Support vector machines
Weighting
title Discovering associations in biomedical datasets by link-based associative classifier (LAC)
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