Experimental Probability | Lesson 1 of 1

Experimental Probability and Long-Run Frequency

Lesson 1 of 1

In this lesson:

  • Compute probability from real data
  • See what happens as trials increase
  • Predict and compare experimental results
Grade 7 Math | 7.SP.C.6
Experimental Probability | Lesson 1 of 1

Learning Objectives for This Lesson

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

  1. Define experimental probability as relative frequency of observed trials
  2. Compute from data
  3. Explain why more trials produce more reliable probability estimates
  4. Predict approximate frequency given a theoretical probability
  5. Compare experimental results to theoretical probabilities
  6. Understand that experimental probability approaches theoretical in the long run
Grade 7 Math | 7.SP.C.6
Experimental Probability | Lesson 1 of 1

Is Seven Heads in Ten Flips Unusual?

You already know probability lives between 0 and 1.

  • P near 0 → very unlikely
  • P near 1 → very likely
  • A fair coin has P(heads) = 1/2

But what if you actually flip and get 7 heads in 10 tries?

Grade 7 Math | 7.SP.C.6
Experimental Probability | Lesson 1 of 1

Experimental Probability: Measuring from Real Data

Theoretical probability → comes from analysis (equal outcomes, symmetry)

Experimental probability → comes from actually running the experiment

It is always a fraction or decimal — never just a count.

Grade 7 Math | 7.SP.C.6
Experimental Probability | Lesson 1 of 1

Spinner Results: Computing Experimental Probability

Frequency table showing spinner results with tally marks and computed P values

  • Spun 50 times; Blue appeared 18 times
  • Theoretical P(Blue) if 4 equal sections = 0.25 — different, but not alarming
Grade 7 Math | 7.SP.C.6
Experimental Probability | Lesson 1 of 1

Worked Example: Coin Flip Results

Setup: A student flips a coin 40 times. Heads appears 23 times.

Theoretical:

Is the coin unfair? With only 40 flips, this difference is normal variation.

Grade 7 Math | 7.SP.C.6
Experimental Probability | Lesson 1 of 1

Example: Spinner with Three Colors

Setup: A spinner is spun 120 times. Results:

Color Count Experimental P
Red 42 42/120 = 0.35
Blue 38 38/120 ≈ 0.317
Green 40 40/120 ≈ 0.333

Sum check: 42 + 38 + 40 = 120 → all probabilities sum to 1 ✓

Grade 7 Math | 7.SP.C.6
Experimental Probability | Lesson 1 of 1

Check-In: Compute the Experimental Probability

A die is rolled 30 times. The outcome "4" appears 8 times.

Find the experimental probability of rolling a 4.

Work it out — then advance for the answer.

Grade 7 Math | 7.SP.C.6
Experimental Probability | Lesson 1 of 1

Check-In Answer: Rolling a 4 in 30 Trials

Theoretical:

Difference of about 0.10 — with only 30 trials, this is normal variation.

No reason to suspect the die is biased — the sample is too small to conclude.

Grade 7 Math | 7.SP.C.6
Experimental Probability | Lesson 1 of 1

What Happens When We Run More Trials?

We know experimental probability fluctuates with small samples.

The question: Does it stabilize as we run more trials?

Spoiler: Yes — and the pattern is one of the most important ideas in probability.

Grade 7 Math | 7.SP.C.6
Experimental Probability | Lesson 1 of 1

Long-Run Relative Frequency: Convergence Toward ½

Running proportion graph showing coin flip experiment converging toward 0.5 as flips increase from 10 to 500

The proportion bounces early — then settles near 0.5 as flips grow.

Grade 7 Math | 7.SP.C.6
Experimental Probability | Lesson 1 of 1

Why the Proportion Stabilizes Over Time

Early flips: Extra heads push proportion far from 0.5.

Later flips: Same extra heads are a tiny fraction of many flips.

  • 5 extra heads / 10 flips → proportion shifts by 0.50
  • 5 extra heads / 500 flips → barely noticeable

Randomness gets diluted — proportion stabilizes.

Grade 7 Math | 7.SP.C.6
Experimental Probability | Lesson 1 of 1

Check-In: Does the Coin "Remember"?

After 10 flips, you have 7 heads (70% heads so far).

Question: Are the next 10 flips more likely to be tails, to "balance out"?

Think before the next slide…

Grade 7 Math | 7.SP.C.6
Experimental Probability | Lesson 1 of 1

The Gambler's Fallacy: Coins Have No Memory

The Gambler's Fallacy: Believing a random process "corrects itself" after unusual results.

  • Each flip is independent — no memory of past flips
  • After 10 tails, P(tails) next flip is still 1/2
  • "Balancing out" happens through dilution, not correction

⚠️ Future flips never compensate for past results.

Grade 7 Math | 7.SP.C.6
Experimental Probability | Lesson 1 of 1

Two Running Proportion Graphs Compared

Two side-by-side running proportion graphs: 20-flip run with wild swings vs 200-flip run that stabilizes near theoretical value

  • 20 flips: large swings, unreliable estimate
  • 200 flips: stable, reliable estimate of theoretical P
Grade 7 Math | 7.SP.C.6
Experimental Probability | Lesson 1 of 1

Check-In: Which Graph Is More Reliable?

Two students graph running proportions:

  • Student A: 20 flips, final proportion = 0.60
  • Student B: 200 flips, final proportion = 0.55

Which result is a more reliable estimate of P(heads)?

Grade 7 Math | 7.SP.C.6
Experimental Probability | Lesson 1 of 1

From Proportion to Prediction: Two Directions

Two directions with probability and data:

Direction Given Find
Data → P Frequency table Experimental P(event)
P → Data Theoretical P and n Expected occurrences

Formula: Expected frequency

Grade 7 Math | 7.SP.C.6
Experimental Probability | Lesson 1 of 1

Predicting Frequency from Theoretical Probability

Formula: Expected frequency

This is a prediction, not a guarantee.

  • Actual count will be close — probably not exactly equal
  • Natural variation means results scatter around the prediction

Standard example: "predict roughly 200 threes in 600 rolls — probably not exactly 200"

Grade 7 Math | 7.SP.C.6
Experimental Probability | Lesson 1 of 1

Worked Example: Marble Bag Frequency Prediction

Setup: Bag has 3 red, 7 blue (10 total). Draw with replacement 200 times.

Actual result will be close to 60 — probably between 45 and 75.

Grade 7 Math | 7.SP.C.6
Experimental Probability | Lesson 1 of 1

Example: Die Roll and Thumbtack Prediction

Die: ; roll 180 times

Thumbtack: Estimated ; flip 250 times

Actual result: 115 point-ups → new estimate:

Grade 7 Math | 7.SP.C.6
Experimental Probability | Lesson 1 of 1

Check-In: Predict Then Update from Data

Setup: ; draw from a bag 160 times.

Part A: How many red draws should you expect?

Part B: You actually draw 55 reds. What is your new experimental estimate of P(red)?

Work both parts before the next slide.

Grade 7 Math | 7.SP.C.6
Experimental Probability | Lesson 1 of 1

Check-In Answers: Prediction and Updating

Part A: Expected reds

Part B: Experimental

The actual result (55) is noticeably above the predicted (40).

This suggests the true P(red) may be higher than 0.25 — or it's natural variation.

Grade 7 Math | 7.SP.C.6
Experimental Probability | Lesson 1 of 1

Comparing Experimental and Theoretical Probability

When experimental P differs from theoretical P, what does it mean?

It depends on the number of trials:

  • Small sample: Large deviations are expected — be cautious
  • Large sample: Large deviations are unusual — worth investigating
Grade 7 Math | 7.SP.C.6
Experimental Probability | Lesson 1 of 1

Three Scenarios: Is the Die Biased?

Three-panel comparison showing die roll scenarios with small and large sample sizes and corresponding conclusions

  • 30 rolls, P(6)≈0.267 vs 0.167 → Caution — small sample, normal variation
  • 600 rolls, P(6)=0.250 vs 0.167 → Investigate — large deviation with large n
  • 100 flips, P(heads)=0.500 vs 0.500 → Consistent — matches theoretical exactly
Grade 7 Math | 7.SP.C.6
Experimental Probability | Lesson 1 of 1

Guided Practice: Evaluating a Probability Claim

Scenario: A student draws 8 cards from a standard deck and gets 6 red.

She concludes: "The probability of drawing red must be about 3/4."

Theoretical P(red) = 1/2.

Evaluate her claim. Is the evidence sufficient?

Consider: How many trials? What deviation is normal with 8 draws?

Grade 7 Math | 7.SP.C.6
Experimental Probability | Lesson 1 of 1

Guided Practice Answer: Insufficient Evidence

With only 8 trials: getting 6 reds happens fairly often just by chance.

Conclusion: Evidence is insufficient to reject the theoretical P = 0.5.

More trials needed — perhaps 80 or 800 — before the data is meaningful.

Grade 7 Math | 7.SP.C.6
Experimental Probability | Lesson 1 of 1

Key Takeaways from Today's Lesson

— a proportion, never just a count

✓ Experimental P approaches theoretical P as trials increase

✓ Expected frequency — a prediction, not a guarantee

✓ Large deviations only matter with large sample sizes

Grade 7 Math | 7.SP.C.6
Experimental Probability | Lesson 1 of 1

Five Common Probability Misconceptions to Avoid

  1. "Expected means exact" — P × n is a prediction, actual results will vary
  2. "The coin will balance out" — each flip is independent; no memory
  3. "6 rolls with no sixes proves the die is biased" — need many more trials
  4. "Experimental = theoretical always" — they agree long-run, not in every experiment
  5. "30 heads means P(heads) = 30" — probability is a proportion, 30/60 = 0.5
Grade 7 Math | 7.SP.C.6
Experimental Probability | Lesson 1 of 1

Preview: Developing Formal Probability Models

Coming up in 7.SP.C.7:

  • Build formal probability models from theoretical analysis
  • Compare model predictions to experimental results systematically
  • Decide when a model is a good fit for real data

Today's experimental probability is the empirical foundation for those models.

Grade 7 Math | 7.SP.C.6

Click to begin the narrated lesson

Approximate the probability of a chance event by collecting data