The Whole Group and a Part
- Population: the whole group — all 2,400 students
- Sample: the part we observed — the 60 asked
The Truth and the Number We Have
- Parameter: a fixed fact about the population
- the true proportion
who would re-enroll — unknown
- the true proportion
- Statistic: a number computed from the sample
— known, we just calculated it
The parameter is the truth we want; the statistic is the number we have.
The Asymmetry That Drives Everything
| Parameter |
Statistic |
|
|---|---|---|
| Fixed or varies? | Fixed | Varies by sample |
| Can we see it? | No | Yes |
One fixed truth we can't see; one visible number that depends on which sample we drew.
Notation That Sticks From Day One
- Plain/Greek = population truth; hat/bar = sample estimate
Label This Sleep Scenario Yourself
A district wants the average sleep hours for all its students. They survey 200 students and find a mean of 7.1 hours.
Identify all four:
- Population? Parameter? Sample? Statistic?
This is a mean context — think
Four Objects Are One Machine
Check: population = all district students; parameter =
- These four are moving parts, not a list to memorize
- Sample → statistic → estimates → parameter
You've named the parts. Now watch the machine run.
Statistics Is a Four-Step Loop
- Pose a question → 2. Sample → 3. Compute → 4. Infer back
Walk the Loop: Question and Sample
A town has 50,000 workers. What is their mean commute time
- Step 1 — Question: estimate
, the true mean commute (unknown) - Step 2 — Sample: randomly select 80 workers
We've named the truth we want and pulled a fair slice. Now we measure.
Walk the Loop: Compute and Infer
From the previous slide: 80 workers sampled.
- Step 3 — Statistic: their mean is
minutes - Step 4 — Infer: conclude
is around 27 minutes
We reasoned from the sample we have back to the population we want.
Which Way Does the Arrow Run?
In probability, you know the population and predict the sample.
In inference, which direction does the reasoning go?
- A. Population → sample
- B. Sample → population
Commit to A or B before advancing.
Probability and Inference Run Opposite
- Probability: population → sample (predict the data)
- Inference: sample → population (estimate the truth)
Step 4 Is an Estimate, Not Proof
The parameter is unknown — so step 4 is a reasoned estimate.
- Algebra gives one certified answer
- Inference gives "around 27, give or take"
This uncertainty isn't a weakness — it's the truth about reasoning from a part to a whole.
Which Step Carries the Doubt?
The four steps: question → sample → compute → infer.
Which one is uncertain — and why?
The arithmetic in step 3 is exact. So where does "give or take" enter?
Your Turn: Two Full Scenarios
Label population, parameter, sample, statistic — with symbols.
- A factory checks 400 bulbs; 12 are defective (
) - A biologist weighs 50 fish from a lake (
)
Do both before advancing. Proportion uses
Key Takeaways From Lesson One
✓ Population = whole group; sample = the part observed
✓ Parameter = fixed unknown truth; statistic = computed estimate
✓ Inference runs sample → population, a four-step loop
Watch out:
Watch out: inference reverses the probability arrow
Coming Up Next: Why Random Matters
In Lesson 2, you'll find out why the sample must be random — and what breaks when it isn't.
You'll also see why even a perfect random sample can never give you a certain answer.
Click to begin the narrated lesson
Understand statistics as a process for inference