H a l t o n A c a d e m y

About Us

Our goal is simple: we help you grow to be your best. Whether you’re a student, working professional, corporate organization or institution, we have tailored initiatives backed by industry specific expertise to meet your unique needs.

Contact Info

Halton Academy For Management and Technology Private Limited,
39/2475-B1 LR Towers, South Janatha Road, Palarivattom, Ernakulam, Kerala - 682025, India.

+91-7511-1890-01

4 Francis Street, le2 2bd, England,
United Kingdom.

hello@haltonacademy.com

MSc in Statistics

Semester-wise Syllabus for an MSc in Statistics

 

Semester 1: Foundations of Probability & Statistics

  1. Probability Theory

    • Axioms, conditional probability, Bayes’ theorem

    • Random variables (discrete/continuous), distributions (Binomial, Poisson, Normal)

    • Expectation, variance, moment-generating functions

  2. Mathematical Statistics

    • Sampling distributions (χ², t, F)

    • Point estimation (MLE, Method of Moments)

    • Sufficiency, completeness, Rao-Blackwell theorem

  3. Linear Algebra & Calculus for Statisticians

    • Matrix operations, eigenvalues, eigenvectors

    • Multivariate calculus (optimization, Lagrange multipliers)

  4. Statistical Computing (R/Python)

    • Data visualization (ggplot2, matplotlib)

    • Simulations (Monte Carlo), basic programming for stats


Semester 2: Statistical Inference & Regression

  1. Statistical Inference

    • Hypothesis testing (t-tests, ANOVA, chi-square)

    • Confidence intervals, p-values, power of tests

    • Non-parametric tests (Wilcoxon, Kruskal-Wallis)

  2. Regression Analysis

    • Simple & multiple linear regression

    • Model diagnostics (multicollinearity, heteroscedasticity)

    • Logistic regression (binary outcomes)

  3. Design of Experiments (DoE)

    • CRD, RBD, Latin squares

    • Factorial designs, confounding

  4. Stochastic Processes (Optional)

    • Markov chains, Poisson processes, Brownian motion


Semester 3: Advanced Statistics & Electives

  1. Multivariate Analysis

    • Principal Component Analysis (PCA)

    • Factor analysis, cluster analysis

    • MANOVA, discriminant analysis

  2. Time Series Analysis

    • ARIMA, SARIMA models

    • Forecasting, seasonality decomposition

  3. Bayesian Statistics

    • Prior/posterior distributions, conjugate priors

    • MCMC (Gibbs sampling, Metropolis-Hastings)

  4. Electives (Choose 1–2)

    • Machine Learning for Statisticians (Supervised/unsupervised learning)

    • Survival Analysis (Kaplan-Meier, Cox regression)

    • Spatial Statistics (Kriging, geostatistics)

    • Big Data Analytics (Hadoop, Spark basics)


Semester 4: Applied Statistics & Dissertation

  1. Statistical Machine Learning

    • Decision trees, SVM, neural networks (basics)

    • Model evaluation (ROC, AUC, cross-validation)

  2. Generalized Linear Models (GLMs)

    • Exponential family, link functions

    • Poisson/Negative Binomial regression

  3. Dissertation/Project

    • Real-world data analysis (healthcare, finance, social sciences)

    • Research paper/report submission

  4. Industry Applications (Optional)

    • Statistical consulting case studies

    • Quality control (Six Sigma, SPC)