Cancer Biomarker Rule Discovery

This paper aims to obtain valuable knowledge from the biological dataset by providing a tool that applies normalization to the dataset and then reduce the high dimensionality by selecting only informative genes in order to extract rules. Each process supported by visualization representation.

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