DAMSL-103 BAYESIAN Statistics TypeElective Course CodeDAMSL-103 Teaching SemesterC semester ECTS Credits10 Student Performance EvaluationHomework/Lab Assignments, Final exam/projectPrerequisite CoursesCalculus, Linear Algebra, Probabilities, Python Programming SyllabusBelief, Probability and ExchangeabilityOne Parameter ModelsMonte Carlo ApproximationThe Normal ModelGibbs SamplingMultivariate Normal ModelHierarchical ModelingLinear RegressionMetropolis HastingsBinomial and Poisson Regression Learning OutcomesUpon successful completion of this course students will be able toCompute Bayesian estimates for a wide variety of statistical models, using R software.Knowledge of fundamental sampling algorithms for performing posterior inference based on alternative prior distributions.Computer implementation using real and synthetic data.Applied problem solving using Bayesian statistical methodologies.