Developing insights about your organization, business, or research project depends on effective modeling and analysis of the data you collect. Building effective models requires understanding the different types of questions you can ask and how to map those questions to your data. Different modeling approaches can be chosen to detect interesting patterns in the data and identify hidden relationships.

Modeling Data in the Tidyverse

Modeling Data in the Tidyverse
This course is part of Tidyverse Skills for Data Science in R Specialization


Instructors: Shannon Ellis, PhD
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What you'll learn
Describe different types of data analytic questions
Conduct hypothesis tests of your data
Apply linear modeling techniques to answer multivariable questions
Apply machine learning workflows to detect complex patterns in your data
Skills you'll gain
- Probability & Statistics
- Predictive Modeling
- Data Modeling
- Statistical Inference
- Model Evaluation
- Machine Learning
- Data Analysis
- Exploratory Data Analysis
- Statistical Analysis
- Classification And Regression Tree (CART)
- Statistical Modeling
- Tidyverse (R Package)
- Statistical Hypothesis Testing
- Regression Analysis
- Sampling (Statistics)
- Data Preprocessing
- Statistical Methods
Tools you'll learn
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There are 11 modules in this course
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