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Learning Causal Networks from Gene Expression Data: a Probabilistic Time Series Model for Gene Regulatory Relationships and Learning the Model from Gene Expression Data Nasir Ahsan
Learning Causal Networks from Gene Expression Data: a Probabilistic Time Series Model for Gene Regulatory Relationships and Learning the Model from Gene Expression Data
Nasir Ahsan
In this work we present a new model for identifying dependencies within a gene regulatory cycle. The model incorporates both probabilistic and temporal aspects, but is kept deliberately simple to make it amenable for learning from the gene expression data of microarray experiments. A key simplifying feature in our model is the use of a compression function for collapsing multiple causes of gene expression into a single cause. This allows us to introduce a learning algorithm which avoids the over-fitting tendencies of models with many parameters. We have validated the learning algorithm on simulated data, and carried out experiments on real microarray data. In doing so, we have discovered novel, yet plausible, biological relationships.
| Médias | Livres Paperback Book (Livre avec couverture souple et dos collé) |
| Validé | 27 novembre 2009 |
| ISBN13 | 9783639197792 |
| Éditeurs | VDM Verlag Dr. Müller |
| Pages | 172 |
| Dimensions | 150 × 220 × 10 mm · 258 g |
| Langue et grammaire | Anglais |
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