University of Colorado Boulder
Statistical Modeling for Data Science Applications Specialization
University of Colorado Boulder

Statistical Modeling for Data Science Applications Specialization

Build Your Statistical Skills for Data Science. Master the Statistics Necessary for Data Science

Brian Zaharatos

Instructor: Brian Zaharatos

Sponsored by HKUST

4,910 already enrolled

Get in-depth knowledge of a subject
4.3

(39 reviews)

Intermediate level

Recommended experience

3 months
at 10 hours a week
Flexible schedule
Learn at your own pace
Get in-depth knowledge of a subject
4.3

(39 reviews)

Intermediate level

Recommended experience

3 months
at 10 hours a week
Flexible schedule
Learn at your own pace

What you'll learn

  • Correctly analyze and apply tools of regression analysis to model relationship between variables and make predictions given a set of input variables.

  • Successfully conduct experiments based on best practices in experimental design.

  • Use advanced statistical modeling techniques, such as generalized linear and additive models, to model wide range of real-world relationships.

Details to know

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Taught in English

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  • Develop a deep understanding of key concepts
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Specialization - 3 course series

Modern Regression Analysis in R

Course 145 hours4.4 (30 ratings)

What you'll learn

  • Articulate some recommended practices for ethical behavior and communication in statistics and data science.

  • Interpret important components of the MLR model, including the “systematic” and “random” components of the model.

  • Describe and implement testing-based procedures for model selections and select a “best” model based on a given procedure.

Skills you'll gain

Category: Statistics
Category: Statistical Modeling
Category: Statistical Analysis
Category: Probability & Statistics
Category: Data Analysis
Category: Statistical Methods
Category: Mathematical Modeling
Category: Predictive Modeling
Category: Data Science
Category: Predictive Analytics
Category: Analytics
Category: Regression Analysis
Category: Statistical Inference
Category: Mathematics and Mathematical Modeling
Category: Statistical Hypothesis Testing
Category: Probability
Category: Applied Mathematics
Category: Advanced Analytics
Category: Business Analytics

ANOVA and Experimental Design

Course 239 hours3.9 (18 ratings)

What you'll learn

  • Identify and interpret the two-way ANOVA (and ANCOVA) model(s) as a linear regression model.

  • Use the two-way ANOVA and ANCOVA models to answer research questions using real data.

  • Define and apply the concepts of replication, repeated measures, and full factorial design in the context of two-way ANOVA.

Skills you'll gain

Category: Statistical Analysis
Category: Statistics
Category: Probability & Statistics
Category: Statistical Methods
Category: Data Analysis
Category: Statistical Inference
Category: Statistical Modeling
Category: Mathematical Modeling
Category: Research Design
Category: Research
Category: Scientific Methods
Category: Experimentation
Category: General Science and Research
Category: Research Methodologies
Category: Analytics
Category: Statistical Hypothesis Testing
Category: Mathematics and Mathematical Modeling
Category: Business Analytics
Category: Applied Mathematics
Category: Data Science

Generalized Linear Models and Nonparametric Regression

Course 342 hours4.3 (20 ratings)

What you'll learn

  • Describe how to generalize the linear model framework to accommodate data that is not suitable for the standard linear regression model.

  • State some advantages and disadvantages of (generalized) additive models.

  • Describe how an additive model can be generalized to incorporate non-normal response variables (i.e., define a generalized additive model).

Skills you'll gain

Category: Statistical Modeling
Category: Mathematical Modeling
Category: Statistical Analysis
Category: Probability & Statistics
Category: Statistics
Category: Data Science
Category: Statistical Inference
Category: Data Analysis
Category: Statistical Methods
Category: Regression Analysis
Category: Statistical Programming
Category: Statistical Machine Learning
Category: Business Analytics
Category: R Programming
Category: Applied Machine Learning
Category: Machine Learning
Category: Applied Mathematics
Category: Analytics
Category: Mathematics and Mathematical Modeling
Category: Machine Learning Methods

Instructor

Brian Zaharatos
University of Colorado Boulder
3 Courses12,287 learners

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