University of Pittsburgh

Applied Bayesian Data Analysis 专项课程

University of Pittsburgh

Applied Bayesian Data Analysis 专项课程

Master Bayesian Methods for Data Analysis.

Apply Bayesian inference and probabilistic modeling to solve complex data science problems.

包含在 Coursera Plus

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2 月 完成
在 10 小时 一周
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推荐体验

2 月 完成
在 10 小时 一周
灵活的计划
自行安排学习进度

您将学到什么

  • Apply Bayes' theorem, conjugate priors, and MCMC methods to perform Bayesian inference and construct credible intervals for parameter estimation.

  • Build and validate Bayesian regression models including linear, hierarchical, and GLM models for predictive analytics and model comparison.

  • Implement advanced Bayesian methods—variational inference and non-parametric modeling—for complex data analysis and Bayesian decision theory.

  • Apply probabilistic programming and Bayesian workflows to real-world applications in sports analytics, healthcare, and data-driven decision-making.

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授课语言:英语(English)
最近已更新!

May 2026

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专业化 - 3门课程系列

Bayesian Inference Fundamentals

Bayesian Inference Fundamentals

第 1 门课程, 小时

您将学到什么

  • Apply Bayes' theorem to compute posterior distributions and quantify uncertainty in statistical inference problems.

  • Explain conjugacy for efficient Bayesian inference and interpret credible intervals for parameter estimation.

  • Compare Bayesian and frequentist approaches to understand philosophical differences in statistical reasoning.

  • Execute MCMC algorithms, including Metropolis-Hastings and Gibbs sampling, for complex posterior approximation.

您将获得的技能

类别:Statistical Inference
类别:Statistical Modeling
类别:Statistics
类别:Statistical Programming
类别:Algorithms
类别:Probability Distribution
类别:Probability & Statistics
类别:Markov Model
类别:Statistical Analysis
类别:Bayesian Statistics
类别:Statistical Methods
Bayesian Regression and Model Selection

Bayesian Regression and Model Selection

第 2 门课程, 小时

您将学到什么

  • Implement variational inference for scalable Bayesian analysis and determine when to prefer VI over MCMC methods.

  • Apply Gaussian Process Regression and Dirichlet Processes for flexible non-parametric modeling solutions.

  • Execute complete Bayesian workflows using PyMC3 from model specification through validation and diagnostics.

  • Build decision-theoretic models using loss functions for applications in sports analytics, healthcare, and business decision-making.

您将获得的技能

类别:Statistical Inference
类别:Predictive Analytics
类别:Statistical Modeling
类别:Model Evaluation
类别:Markov Model
类别:Statistical Methods
类别:Statistical Machine Learning
类别:Sampling (Statistics)
类别:Mathematical Modeling
类别:Machine Learning Algorithms
类别:Regression Analysis
类别:Predictive Modeling
类别:Data-Driven Decision-Making
类别:Computational Thinking
类别:Bayesian Statistics
类别:Logistic Regression
类别:Probability Distribution
类别:Statistical Analysis
Advanced Bayesian Methods and Applications

Advanced Bayesian Methods and Applications

第 3 门课程, 小时

您将学到什么

  • Apply variational inference and non-parametric Bayesian methods to scale probabilistic models to large datasets effectively.

  • Implement Bayesian decision theory with loss functions to make principled predictions and quantify uncertainty in real applications.

  • Build and evaluate complex Bayesian models using PyMC3 following best practices from the complete Bayesian workflow.

  • Deploy advanced techniques including Gaussian processes and Dirichlet processes for flexible modeling in diverse domains.

您将获得的技能

类别:Markov Model
类别:Regression Analysis
类别:Machine Learning
类别:Data Science
类别:Bayesian Statistics
类别:Predictive Analytics
类别:Statistical Machine Learning
类别:Statistical Analysis
类别:Predictive Modeling
类别:Applied Machine Learning
类别:Health Informatics
类别:Statistical Methods
类别:Computational Thinking
类别:Machine Learning Algorithms
类别:Probability Distribution
类别:Python Programming
类别:Statistical Modeling
类别:Data-Driven Decision-Making
类别:Statistical Programming
类别:Statistical Inference

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位教师

Konstantinos Pelechrinis
University of Pittsburgh
4 门课程255 名学生

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