MSc in Statistics
Semester-wise Syllabus for an MSc in Statistics
Semester 1: Foundations of Probability & Statistics
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Probability Theory
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Axioms, conditional probability, Bayes’ theorem
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Random variables (discrete/continuous), distributions (Binomial, Poisson, Normal)
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Expectation, variance, moment-generating functions
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Mathematical Statistics
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Sampling distributions (χ², t, F)
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Point estimation (MLE, Method of Moments)
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Sufficiency, completeness, Rao-Blackwell theorem
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Linear Algebra & Calculus for Statisticians
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Matrix operations, eigenvalues, eigenvectors
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Multivariate calculus (optimization, Lagrange multipliers)
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Statistical Computing (R/Python)
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Data visualization (ggplot2, matplotlib)
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Simulations (Monte Carlo), basic programming for stats
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Semester 2: Statistical Inference & Regression
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Statistical Inference
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Hypothesis testing (t-tests, ANOVA, chi-square)
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Confidence intervals, p-values, power of tests
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Non-parametric tests (Wilcoxon, Kruskal-Wallis)
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Regression Analysis
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Simple & multiple linear regression
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Model diagnostics (multicollinearity, heteroscedasticity)
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Logistic regression (binary outcomes)
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Design of Experiments (DoE)
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CRD, RBD, Latin squares
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Factorial designs, confounding
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Stochastic Processes (Optional)
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Markov chains, Poisson processes, Brownian motion
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Semester 3: Advanced Statistics & Electives
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Multivariate Analysis
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Principal Component Analysis (PCA)
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Factor analysis, cluster analysis
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MANOVA, discriminant analysis
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Time Series Analysis
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ARIMA, SARIMA models
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Forecasting, seasonality decomposition
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Bayesian Statistics
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Prior/posterior distributions, conjugate priors
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MCMC (Gibbs sampling, Metropolis-Hastings)
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Electives (Choose 1–2)
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Machine Learning for Statisticians (Supervised/unsupervised learning)
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Survival Analysis (Kaplan-Meier, Cox regression)
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Spatial Statistics (Kriging, geostatistics)
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Big Data Analytics (Hadoop, Spark basics)
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Semester 4: Applied Statistics & Dissertation
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Statistical Machine Learning
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Decision trees, SVM, neural networks (basics)
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Model evaluation (ROC, AUC, cross-validation)
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Generalized Linear Models (GLMs)
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Exponential family, link functions
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Poisson/Negative Binomial regression
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Dissertation/Project
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Real-world data analysis (healthcare, finance, social sciences)
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Research paper/report submission
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Industry Applications (Optional)
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Statistical consulting case studies
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Quality control (Six Sigma, SPC)
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