1 / 19
Evaluating Data Reports | Lesson 1 of 2

Reading a Report and the Sampling Lens

Lesson 1 of 2: Taking a Report Apart

In this lesson:

  • Separate a report into claim, evidence, and source
  • Use the sampling lens to judge whether the data supports the claim
Grade 11 Statistics | HSS.IC.B.6
Evaluating Data Reports | Lesson 1 of 2

Learning Objectives for This Unit

By the end of this two-lesson capstone, you should be able to:

  1. Identify a report's source, study type, and central claim
  2. Evaluate whether the sampling supports a population claim
  3. Evaluate whether the design supports a causal claim
  4. Evaluate whether uncertainty is disclosed and the claim overstated
  5. Spot misleading displays and write a justified overall verdict
Grade 11 Statistics | HSS.IC.B.6
Evaluating Data Reports | Lesson 1 of 2

The Coffee Headline — Should You Believe It?

"New Study: Students Who Drink Coffee Score 15% Higher on Exams."

  • It sounds solid: a study, a number, a clear takeaway
  • Should you believe it — and how would you decide?

That feeling of credibility is what we're about to interrogate.

Grade 11 Statistics | HSS.IC.B.6
Evaluating Data Reports | Lesson 1 of 2

Restate It in Three Parts

The coffee headline peeled into three labeled cards — Claim, Evidence, Source — each restating one part of the report

Pull every report into these three before you judge it.

Grade 11 Statistics | HSS.IC.B.6
Evaluating Data Reports | Lesson 1 of 2

Claim vs Evidence vs Source

  • Claim: the conclusion someone drew — coffee raises scores
  • Evidence: what was actually measured — the 15%, the sample, the study
  • Source: who produced and funded it — university, brand, blog?

The claim is not the evidence. They are almost never the same size.

Grade 11 Statistics | HSS.IC.B.6
Evaluating Data Reports | Lesson 1 of 2

The Claim Says More Than the Evidence Shows

The claim is confident, sweeping, causal. The evidence is some number from some group.

  • The distance between them is where evaluation lives
  • A number being present does not close that gap

Polish lives in the claim; truth lives in the evidence.

Grade 11 Statistics | HSS.IC.B.6
Evaluating Data Reports | Lesson 1 of 2

The Four-Lens Checklist for Reports

Four evaluation lenses listed in order — sampling, design, uncertainty, display — each labeled with the prior IC standard it draws on

Each lens is a question this unit already taught you to ask.

Grade 11 Statistics | HSS.IC.B.6
Evaluating Data Reports | Lesson 1 of 2

Separate a Short Report Into Three Parts

A wellness blog reports people who do yoga sleep 40 minutes longer, from a survey of its newsletter subscribers.

  • Write the claim, the evidence, and the source
  • One sentence: where does the claim overreach the evidence?

Write it alone before advancing.

Grade 11 Statistics | HSS.IC.B.6
Evaluating Data Reports | Lesson 1 of 2

Lens 1: Was the Data Even Collected Well?

We separated claim from evidence — now we interrogate the evidence.

  • First and most disqualifying question: was the sample any good?
  • A biased or tiny sample sinks any conclusion drawn from it

This is the sampling lens — straight from A.1 and B.4.

Grade 11 Statistics | HSS.IC.B.6
Evaluating Data Reports | Lesson 1 of 2

The Four Questions of the Sampling Lens

Four sampling questions stacked — who was sampled, how were they chosen, how many, and was it disclosed

Ask all four out loud before you trust any population claim.

Grade 11 Statistics | HSS.IC.B.6
Evaluating Data Reports | Lesson 1 of 2

Who Was Sampled, and From Where?

"Students" — but which students?

  • All students? One dorm? Coffee-shop sign-up volunteers?
  • These are different populations — the answer decides what 15% means

A self-selected group of coffee fans can't speak for all students.

Grade 11 Statistics | HSS.IC.B.6
Evaluating Data Reports | Lesson 1 of 2

How Were They Chosen — Random or Convenience?

  • Random: everyone has a fair chance — the sample mirrors the whole
  • Convenience / voluntary: whoever was easy or willing — bias baked in

Coffee-shop volunteers opted in — that's voluntary response, biased from the start.

Grade 11 Statistics | HSS.IC.B.6
Evaluating Data Reports | Lesson 1 of 2

How Many — 30 or 3,000?

Sample size sets how much random noise rides on the result.

  • 30 self-selected students → the 15% could be chance wobble
  • A bare "15% higher" tells you nothing about the size

Tiny sample → shaky number. The headline hides which.

Grade 11 Statistics | HSS.IC.B.6
Evaluating Data Reports | Lesson 1 of 2

A Big Biased Sample Is Worse (A.1, B.4)

  • A large sample does not fix a biased one
  • A.1: a big biased sample beats a small random one — false
  • B.4: margin of error shrinks with size but never fixes bias

Bias is a direction error; size only sharpens the wrong target.

Grade 11 Statistics | HSS.IC.B.6
Evaluating Data Reports | Lesson 1 of 2

Undisclosed Sampling Is Itself a Red Flag

If the report hides its sample size and method, that silence counts against it.

  • A credible report tells you how its data was gathered
  • Missing who/how/how-many → you can't even run the lens

The presence of a number is not the presence of evidence.

Grade 11 Statistics | HSS.IC.B.6
Evaluating Data Reports | Lesson 1 of 2

30 Volunteers — Can 15% Generalize?

The study was 30 self-selected coffee drinkers on an online survey.

  • Does "15% higher" support a claim about students in general?
  • Decide yes or no — and name the sampling question that settles it

Stay on the sampling lens. Does it generalize?

Grade 11 Statistics | HSS.IC.B.6
Evaluating Data Reports | Lesson 1 of 2

Apply the Checklist; Flag the Missing Info

A fitness brand says 78% of users saw results in 30 days.

  • Run the checklist: who / how / how many / disclosed?
  • Flag every sampling fact the report fails to give you

The missing information is the finding. Write it down.

Grade 11 Statistics | HSS.IC.B.6
Evaluating Data Reports | Lesson 1 of 2

Key Takeaways From Lesson One

✓ Split every report: claim, evidence, source
✓ Sampling lens: who / how / how many / disclosed?
✓ A big biased sample beats a small random one — false

⚠️ Numbers are the start of scrutiny, not the end
⚠️ A percentage with no or uncertainty is a headline

Grade 11 Statistics | HSS.IC.B.6
Evaluating Data Reports | Lesson 1 of 2

Coming Up Next: The Design Lens

A report can pass the sampling lens and still overreach.

In Lesson 2, you'll match a claim's verb to its study design — and name causal overreach, the most common failure in data reporting.

Grade 11 Statistics | HSS.IC.B.6