Data di Pubblicazione:
2006
Abstract:
Computing methods that allow the efficient and accurate processing
of experimentally gathered data play a crucial role in biological research. The
aim of this paper is to present a supervised learning strategy which combines
concepts stemming from coding theory and Bayesian networks for classifying
and predicting pathological conditions based on gene expression data collected
from micro-arrays. Specifically, we propose the adoption of the Minimum Description
Length (MDL) principle as a useful heuristic for ranking and selecting
relevant features. Our approach has been successfully applied to the Acute Leukemia
dataset and compared with different methods proposed by other researchers.
Tipologia CRIS:
01.01 Articolo in rivista
Keywords:
Bayesian Classifiers; Gene-Expression Data Analysis; Feature Selection; MDL
Elenco autori:
Liberati, Diego
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