# Nakafa Framework: LLM
URL: https://nakafa.com/en/subject/high-school/10/mathematics/statistics/quartile-data-single
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Output docs content for large language models.
---
export const metadata = {
  title: "Quartiles for Ungrouped Data",
  description: "Calculate Q1, Q2, Q3 quartiles for ungrouped data with simple position formulas. Learn to divide sorted data into four equal parts step-by-step.",
  authors: [{ name: "Nabil Akbarazzima Fatih" }],
  date: "04/22/2025",
  subject: "Statistics",
};
## What Are Quartiles?
The median is like a ruler that divides data into two equal parts, right in the middle (50%). Well, there's another friend of the median, called **quartiles**.
If the median divides data into two, quartiles are even better; they divide the sorted data into **four** equal parts! Imagine you have a chocolate bar, and you break it into four equal pieces. Quartiles are the breaking points.
There are three quartile breaking points:
1.  **Lower Quartile ():** This is the first break. It separates the smallest 25% of the data from the rest. Like the first quarter of the chocolate.
2.  **Middle Quartile ():** This is the **median**! It's exactly in the middle, dividing the data in half (50% left, 50% right). Like the break in the middle of the chocolate.
3.  **Upper Quartile ():** This is the last break. It separates the smallest 75% of the data from the largest 25%. Like the boundary after three-quarters of the chocolate.
So, , , and  divide our data into four small groups with the same number of data points (25% each).
## How to Find the Position of Quartiles
Okay, now how do we know the position (rank) of , , and  in our ordered data?
Assume we have  data points that we have sorted from smallest to largest.
### Q1 (Lower Quartile)
The formula is simple:
- **If the result is a whole number**, for example 5, then  is the value of the 5th data point.
- **If the result has a decimal**, for example , then  lies between the 5th and 6th data points. (There's a way to calculate its value later, but for now, we're just finding the position).
**Simple Example:**
Suppose we have 20 data points ().
Position of  = Data point at  = Data point at  = Data point at 5.25.
This means  is between the 5th and 6th data points.
### Q2 (Median or Middle Quartile)
This is the median, so the formula is:
The rules are the same as for :
- **If the result is a whole number**, say 10,  is the value of the 10th data point.
- **If the result has a decimal**, say 10.5,  is between the 10th and 11th data points.
**Simple Example ():**
Position of  = Data point at  = Data point at  = Data point at 10.5.
This means  (the median) is between the 10th and 11th data points.
### Q3 (Upper Quartile)
The formula is similar again:
The rules are exactly the same:
- **If the result is a whole number**, say 15,  is the value of the 15th data point.
- **If the result has a decimal**, say 15.75,  is between the 15th and 16th data points.
**Simple Example ():**
Position of  = Data point at  = Data point at  = Data point at 15.75.
This means  is between the 15th and 16th data points.
## Exercise
Try to find the position of , , and  from the math test scores of these 7 children:
**Scores:** 7, 5, 8, 6, 9, 7, 10
**Step 1: Sort the data first!**
Sorted data: 5, 6, 7, 7, 8, 9, 10
Number of data points () = 7
**Step 2: Find the quartile positions using the formulas**
- **Position of :**
  
  The result is a whole number (2), so  is the 2nd data point.
- **Position of  (Median):**
  
  The result is a whole number (4), so  is the 4th data point.
- **Position of :**
  
  The result is a whole number (6), so  is the 6th data point.
**Step 3: Determine the quartile values**
Look at the sorted data: 5, 6, 7, 7, 8, 9, 10
-  = 2nd data point = **6**
-  = 4th data point = **7**
-  = 6th data point = **9**
## The Fourth Quartile (Q4)
You might be wondering, "If there's , , and , is there a ?"
Technically, the concept of quartiles divides the data into four parts.  is the boundary for the first 25%,  (the median) is the 50% boundary, and  is the 75% boundary. The final boundary, which encompasses 100% of the data, is actually the **maximum value** of the dataset.
So, while we could refer to the maximum value as "", in statistical analysis, we don't typically use the term  explicitly. The main focus is on , , and  because they provide important information about the spread and center of the data in the lower, middle, and upper sections. The minimum value is sometimes called "", but like , it's less commonly used than , , and .