Bivariate Data: Two Measurements, One Individual
- Bivariate = "two variables"
- Each individual contributes two measurements at once
- Example: each student gives us (study time, test score)
Every Point Is a Person
- One point on a scatter plot = one individual
- Its position encodes both measurements at once
- A point is never just an isolated number
Why Not Just Connect the Dots?
- A line graph connects points to show change over time
- A scatter plot leaves points unconnected
- We read the overall cloud, not a path from point to point
Step 1: Choose Axes and a Fitting Scale
- Explanatory variable (study time) goes on the horizontal axis
- Response variable (test score) goes on the vertical axis
- Scale each axis to just span the data: study 0-5, scores 50-100
Why Scale Choice Makes or Breaks the Plot
- Too compressed → all points clump into a blob
- Too loose → the pattern is diluted across empty space
- A fitting scale lets the trend actually show
Step 2: Label Axes and Plot Carefully
Find the x-value, find the y-value, mark where they meet.
Step 3: Leave Them Unconnected
The completed cloud drifts upward — more study, higher scores.
Axis Choice Is a Convention, Not a Cause
- We chose study time for the horizontal axis
- That choice doesn't claim studying causes the score
- The same data plotted either way shows the same relationship
Quick Check: What Do You Notice?
Look back at the completed cloud.
What overall pattern do you see? Is there a point that doesn't fit the rest?
Spot the Error in This Plot
This plot uses a badly compressed vertical scale.
The data really does trend upward. Why can't you see it? How would you fix it?
Your Turn: Build One From Scratch
Data: outdoor temperature vs. ice-cream sales for 12 days.
- Choose which variable goes on each axis
- Scale each axis to fit the data
- Label with units, then plot — unconnected
Key Takeaways From This Lesson
✓ Bivariate data = two measurements per individual
✓ Each point is a person; read the cloud
✓ Scale to fit the data so the pattern shows
Watch out: the x-axis variable is a choice, not the cause
Watch out: a squashed scale hides real patterns
Where We Go From Here Next
You can now build a scatter plot and see the cloud's shape.
Next: how to describe that shape — up or down, straight or curved — and what stray points and clusters mean.
Click to begin the narrated lesson
Construct and interpret scatter plots for bivariate measurement data