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Learn Creating Histograms | Data Visualization
Data Analysis with R

bookCreating Histograms

Why Use Histograms?

Histograms are used to visualize the distribution of continuous (numerical) data. They show how data is spread across ranges (bins) and help us:

  • Detect skewness, outliers, or gaps;

  • Understand frequency distribution;

  • Quickly assess if the data is normally distributed or not.

They are best used for variables like price, mileage, or age.

Basic Histogram Syntax in ggplot2

ggplot(data = df, aes(x = variable)) +
  geom_histogram()

The x variable must be numeric.

Customize using bins, fill, color, theme, etc.

Example: Distribution of Selling Prices

ggplot(data = df, aes(x = selling_price)) +  
  geom_histogram(fill = "steelblue", color = "black") +  
  labs(title = "Distribution of Selling Prices", 
       x = "Selling Price (in PKR)", 
       y = "Count") +
  theme_minimal()

This plot shows how car prices are distributed. It can highlight if most cars fall in a certain price range.

question mark

What does the bins argument in geom_histogram() control?

Select the correct answer

Everything was clear?

How can we improve it?

Thanks for your feedback!

SectionΒ 2. ChapterΒ 3

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bookCreating Histograms

Swipe to show menu

Why Use Histograms?

Histograms are used to visualize the distribution of continuous (numerical) data. They show how data is spread across ranges (bins) and help us:

  • Detect skewness, outliers, or gaps;

  • Understand frequency distribution;

  • Quickly assess if the data is normally distributed or not.

They are best used for variables like price, mileage, or age.

Basic Histogram Syntax in ggplot2

ggplot(data = df, aes(x = variable)) +
  geom_histogram()

The x variable must be numeric.

Customize using bins, fill, color, theme, etc.

Example: Distribution of Selling Prices

ggplot(data = df, aes(x = selling_price)) +  
  geom_histogram(fill = "steelblue", color = "black") +  
  labs(title = "Distribution of Selling Prices", 
       x = "Selling Price (in PKR)", 
       y = "Count") +
  theme_minimal()

This plot shows how car prices are distributed. It can highlight if most cars fall in a certain price range.

question mark

What does the bins argument in geom_histogram() control?

Select the correct answer

Everything was clear?

How can we improve it?

Thanks for your feedback!

SectionΒ 2. ChapterΒ 3
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