From 0014ab9d0cebd563143b7ca33ede54181f66ef73 Mon Sep 17 00:00:00 2001 From: Vidushi Gupta <55969597+Vidushi-Gupta@users.noreply.github.com> Date: Mon, 3 Jul 2023 17:47:44 +0530 Subject: [PATCH] Removed violin plot --- 2-Regression/4-Logistic/solution/R/lesson_4.Rmd | 16 ---------------- 1 file changed, 16 deletions(-) diff --git a/2-Regression/4-Logistic/solution/R/lesson_4.Rmd b/2-Regression/4-Logistic/solution/R/lesson_4.Rmd index 29b4b813c..ab82d3e9c 100644 --- a/2-Regression/4-Logistic/solution/R/lesson_4.Rmd +++ b/2-Regression/4-Logistic/solution/R/lesson_4.Rmd @@ -220,22 +220,6 @@ baked_pumpkins %>% theme(legend.position = "none") ``` -#### **Violin plot** - -A 'violin' type plot is useful as you can easily visualize the way that data in the two categories is distributed. [`Violin plots`](https://en.wikipedia.org/wiki/Violin_plot) are similar to box plots, except that they also show the probability density of the data at different values. Violin plots don't work so well with smaller datasets as the distribution is displayed more 'smoothly'. - -```{r violin_plot} -# Create a violin plot of color and item_size -baked_pumpkins %>% - mutate(color = factor(color)) %>% - ggplot(mapping = aes(x = color, y = item_size, fill = color)) + - geom_violin() + - geom_boxplot(color = "black", fill = "white", width = 0.02) + - scale_fill_brewer(palette = "Dark2", direction = -1) + - theme(legend.position = "none") - -``` - Now that we have an idea of the relationship between the binary categories of color and the larger group of sizes, let's explore logistic regression to determine a given pumpkin's likely color. ## 3. Build your model