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Bioinformatics. Application of probabilistic and machine learning
techniques to new bioinformatics problems with large amounts of
data.
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Bayesian Modeling
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RNA Modeling
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Probabilistic generative models of sequences. Hidden Markov models,
stochastic context-free grammars, graphical models, Fisher features.
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Classifier systems. Support vector machines, Guassian processes,
information geometries, boosting.
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Unsupervised learning of concepts. Mixture and product
models, simulated annealing, Expectation Maximization.
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Characterization of information flow and mechanisms of living
things. Genomic organization, pathway inference, RNA structure,
transcription, translation, regulation, RNAi, cross species
analysis.
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Information retrieval and modeling. Vector space models, large
vocabulary modeling, efficient search, link structure analysis.
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