May 04, 2024  
2018-2019 Undergraduate Catalog 
    
2018-2019 Undergraduate Catalog [ARCHIVED CATALOG]

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STAT 420 - Statistics for Bioinformatics

(3.00)
This course surveys the statistical methodology underlying current bioinformatics techniques. Topics to be covered include: dynamic programming, including the Needleman-Wunsch algorithm and Smith-Waterman algorithm; methods of inference, including maximum likelihood and Bayesian approach; Markov models, including Markov chains, hidden Markov models and inferences for these models; Monte-Carlo Markov chain methods, including Gibbs sampling and Metropolis-Hastings algorithm; extreme-value theory, including Gumbel distribution and significance of alignments; cluster analysis, including hierarchical methods, Kmeans method and determination of number of clusters; classification methods, including CART algorithm and QUEST algorithm; generalized linear models, including model types, inference and statistics for model fit; model validation, crossvalidation; and predictive assessment.

Course ID: 57061
Consent: No Special Consent Required
Components: Lecture
Prerequisite/Corequisite:  You must have completed MATH 152  and either STAT 350  or STAT 355  with a grade of “C” or better.



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