Compute the z-Score for 650
For 650 with mean 500, SD 100:
- 650 is 1.5 standard deviations above the mean
- It sits halfway between the 1-SD and 2-SD boundaries
Look Up the Area Beyond z
- Area below z = 1.5 is about 0.933 (93.3%)
- So area above is about 6.7% — scores above 650
The z-Score Is Not the Percentage
The z-score is a coordinate, not the answer.
- z = 1.5 is a position — a distance in SDs
- The percentage is the area you look up using z
Write both: "z = 1.5 → area 0.933 below → 6.7% above."
Below, Above, and Between Values
Three question types, all from the same two steps:
- Below: look up the area to the left
- Above: look up the area, subtract from 100%
- Between: look up both, subtract the smaller area
"Between 480 and 620" = area below 620 minus area below 480.
A Below-Mean Value Gives Negative z
For 420 with mean 500, SD 100:
- A negative z is not an error — it means below the mean
- 420 sits 0.8 SDs below the mean
Your Turn: Compute and Interpret z
Heights: normal, mean 170 cm, SD 8 cm.
Compute the z-score for 182 cm and say what it means.
Use the formula, then interpret.
Answer:
First, Always Check the Shape
Everything so far assumes a bell shape. Before any normal procedure, ask:
- Is the histogram roughly symmetric and bell-shaped?
- If yes, proceed; if no, stop — the model doesn't apply
This check separates correct analysis from confidently wrong answers.
What the Normal Model Requires
The model fits only symmetric, single-peaked, bell-shaped data.
- Skewed (incomes) → the symmetry is gone
- Bimodal (two groups) → no single center
- Outlier-heavy → mean and SD are distorted
For any of these, normal procedures give meaningless answers.
Three Cases Where the Bell Fails
- Skewed: predicts impossible negative incomes
- Bimodal: one bell fits neither peak
- Outlier-heavy: the curve describes almost nobody
Always Check the Shape First
The decision habit:
- Look at the histogram or box plot
- Ask: roughly symmetric and bell-shaped?
- If yes, use the normal model; if no, stop
Fit a normal model only if the shape earns it.
Your Turn: Does the Bell Fit?
A histogram of household incomes: tall cluster low, long right tail.
Should you fit a normal model and use the empirical rule?
Apply the shape check, then advance.
Answer: No — it's right-skewed, not bell-shaped; the empirical rule would give impossible percentages.
Full Task: Check, Standardize, Estimate
Bolt diameters: normal, mean 10 mm, SD 0.2 mm.
- Confirm the shape earns a normal model
- Compute z for 10.3 mm
- Estimate the percent larger than 10.3 mm
Do it all, then advance.
Answer: Shape OK;
Key Takeaways From This Lesson
✓ The z-score is a distance in SDs from the mean
✓ The percentage is the area, not z
✓ A negative z means below the mean
Check shape first — the model needs bell data
Skewed or bimodal data breaks it
Next: two variables and scatter plots.