Publication | Closed Access
Bayesian automatic relevance determination algorithms for classifying geneexpression data
170
Citations
14
References
2002
Year
We demonstrate the effectiveness of the algorithms on three gene expression datasets for cancer, showing they compare well with alternative kernel-based techniques. By automatically incorporating feature selection, accurate classifiers can be constructed utilizing very few features and with minimal hand-tuning. We argue that the feature selection is meaningful and some of the highlighted genes appear to be medically important.
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