Johns Hopkins University
Statistical Methods for Computer Science Specialization
Johns Hopkins University

Statistical Methods for Computer Science Specialization

Master Statistical Methods for Data Analysis. Gain advanced skills in probability, statistical modeling, and computational techniques for effective data analysis and decision-making.

Ian McCulloh
Tony Johnson

Instructors: Ian McCulloh

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Intermediate level

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3 months
at 5 hours a week
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Get in-depth knowledge of a subject
Intermediate level

Recommended experience

3 months
at 5 hours a week
Flexible schedule
Learn at your own pace

What you'll learn

  • Gain proficiency in advanced statistical techniques and probability models to analyze complex data sets across various applications in computing.

  • Develop practical skills in simulation methods, network analysis, and probabilistic graphical models for effective data-driven decision-making.

  • Master hypothesis testing, regression analysis, and network modeling to derive meaningful insights and drive innovation in statistical methods.

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Taught in English
Recently updated!

October 2024

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Specialization - 3 course series

What you'll learn

  • Master combinatorial techniques, including permutations, combinations, and multinomial coefficients, to solve counting and probability problems.

  • Apply probability axioms, construct Venn diagrams, and calculate sample space sizes to evaluate probabilities in various scenarios.

  • Utilize Bayes' formula, the multiplication rule, and conditional probability to assess event relationships and solve real-world problems.

  • Analyze discrete and continuous random variables using probability density functions, cumulative distribution functions, and expected values.

Skills you'll gain

Category: Probability
Category: Probability Distribution
Category: Probability & Statistics
Category: Combinatorics
Category: R Programming
Category: Data Analysis
Category: Statistical Analysis
Category: Computational Thinking
Category: Artificial Intelligence and Machine Learning (AI/ML)
Category: Data Science
Category: Applied Machine Learning
Category: Applied Mathematics
Category: Simulations
Category: Statistics

What you'll learn

  • Learn to analyze relationships between random variables through joint probability distributions and independence concepts.

  • Understand how to calculate and interpret expected values, variances, and correlations for random variables.

  • Acquire essential skills in conducting statistical tests, including T-tests and confidence intervals, for data analysis.

  • Explore the principles of Markov chains and their applications in modeling systems with memoryless properties and calculating entropy.

Skills you'll gain

Category: Probability
Category: Probability Distribution
Category: Statistical Methods
Category: Statistical Hypothesis Testing
Category: Probability & Statistics
Category: Regression Analysis
Category: R Programming
Category: Markov Model
Category: Data Analysis
Category: Simulations
Category: Statistical Modeling
Category: Statistical Analysis
Category: Statistical Inference
Category: Data Science

What you'll learn

  • Master techniques for simulating random variables, including the Inverse Transformation and Rejection Methods using R programming.

  • Analyze complex networks using Exponential Random Graph Models to model and interpret social structures and their dependencies.

  • Understand and apply probabilistic graphical models, including Bayesian networks, to reason about uncertainty and infer relationships in data.

Skills you'll gain

Category: Markov Model
Category: Bayesian Network
Category: Probability
Category: Statistical Modeling
Category: Probability Distribution
Category: Simulations
Category: Network Analysis
Category: Data Analysis
Category: Mathematical Modeling
Category: Statistical Analysis
Category: Graph Theory
Category: R Programming
Category: Machine Learning
Category: Applied Mathematics

Instructors

Ian McCulloh
Johns Hopkins University
17 Courses3,799 learners

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