Title of article
Towards scalable and data efficient learning of Markov boundaries Original Research Article
Author/Authors
Jose M. Pe?a، نويسنده , , Roland Nilsson، نويسنده , , Johan Bj?rkegren، نويسنده , , Jesper Tegnér، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2007
Pages
22
From page
211
To page
232
Abstract
We propose algorithms for learning Markov boundaries from data without having to learn a Bayesian network first. We study their correctness, scalability and data efficiency. The last two properties are important because we aim to apply the algorithms to identify the minimal set of features that is needed for probabilistic classification in databases with thousands of features but few instances, e.g. gene expression databases. We evaluate the algorithms on synthetic and real databases, including one with 139,351 features.
Keywords
Bayesian networks , Feature subset selection , classification
Journal title
International Journal of Approximate Reasoning
Serial Year
2007
Journal title
International Journal of Approximate Reasoning
Record number
1182386
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