Conclusion - Where to go from here?

Modelleren met data in de Tidyverse

Albert Y. Kim

Assistant Professor of Statistical and Data Sciences

R source code for all videos

Modelleren met data in de Tidyverse

Other Tidyverse courses

Available here and here

Tidyverse Fundamentals Track

Intermediate Tidyverse Toolbox Track

Modelleren met data in de Tidyverse

Refresher: General modeling framework

  • In general: $y = f(\vec{x}) + \epsilon$
  • Linear regression models: $y = \beta_0 + \beta_1 \cdot x_1 + \epsilon$
Modelleren met data in de Tidyverse

Parallel slopes model

Modelleren met data in de Tidyverse

Polynomial model

Modelleren met data in de Tidyverse

Tree models

Modelleren met data in de Tidyverse

DataCamp courses using other models

Courses with different $f()$ in $y = f(\vec{x}) + \epsilon$:

Modelleren met data in de Tidyverse

Refresher: Regression table

# Fit model:
model_score_1 <- lm(score ~ age, data = evals)

# Output regression table:
get_regression_table(model_score_1)
# A tibble: 2 x 7
  term      estimate std_error statistic p_value lower_ci upper_ci
  <chr>        <dbl>     <dbl>     <dbl>   <dbl>    <dbl>    <dbl>
1 intercept    4.46      0.127     35.2    0        4.21     4.71 
2 age         -0.006     0.003     -2.31   0.021   -0.011   -0.001
Modelleren met data in de Tidyverse

ModernDive: Online textbook

  • Uses tidyverse tools: ggplot2 and dplyr
  • Expands on the regression models from this course
  • Uses evals and house_prices datasets (and more)
  • Goal: Statistical inference via data science
  • Available at ModernDive.com
Modelleren met data in de Tidyverse

Good luck!

Modelleren met data in de Tidyverse

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