Experimental and Theoretical Probability
CSEC Mathematics: Predicting the Future
Essential Understanding: Probability measures the likelihood that an event will occur. Experimental probability comes from real trials, while theoretical probability is based on mathematical reasoning. As trials increase, experimental probability approaches theoretical probability - this is the Law of Large Numbers, a fundamental principle in statistics.
Understanding Probability
Experimental Probability
Definition: Probability based on actual observations or trials. Also called empirical probability.
Formula:
Example: Tossing a coin 100 times and getting 45 heads.
Theoretical Probability
Definition: Probability based on mathematical reasoning about equally likely outcomes.
Formula:
Example: Fair coin has P(heads) = 1/2.
Law of Large Numbers
Definition: As the number of trials increases, experimental probability approaches theoretical probability.
Implications:
- More trials = more reliable results
- Short-term variations smooth out over time
- Theoretical value is the "long-run" expectation
Key Probability Rules
Essential Probability Properties
Probability always satisfies these rules:
Probability Range
0 = impossible, 1 = certain
Complementary Events
E' = "not E"
Addition Rule (Mutually Exclusive)
When A and B cannot happen together
📝 Worked Example: Calculating Theoretical Probability
Problem 1: A fair die is rolled once. Find the probability of:
- Getting an even number
- Getting a number greater than 4
Solution:
Sample Space: {1, 2, 3, 4, 5, 6}, Total = 6 outcomes
(a) Even number: Even numbers = {2, 4, 6}, so 3 outcomes
(b) Number greater than 4: Numbers = {5, 6}, so 2 outcomes
📝 Worked Example: Complementary Events
Problem: The probability of passing a test is 0.7. Find the probability of failing.
Solution:
Using complementary rule:
Answer: Probability of failing = 0.3 (or 30%)
Interactive Dice Simulation
Dice Rolling Experiment
Objective: Observe how experimental probability approaches theoretical probability (1/6 = 0.167) as the number of trials increases.
Total Rolls
0
Sixes Rolled
0
Experimental P(6)
-
Theoretical P(6)
0.167
Addition Rule for Mutually Exclusive Events
Addition Rule
When two events cannot occur at the same time (mutually exclusive):
Or: P(A or B) = P(A) + P(B)
📝 Worked Example: Addition Rule
Problem: From a standard deck of 52 cards, what is the probability of drawing a heart OR a diamond?
Solution:
These are mutually exclusive events (can't be both heart AND diamond)
P(heart) = 13/52 (13 hearts in deck)
P(diamond) = 13/52 (13 diamonds in deck)
Using addition rule:
Answer: 0.5 or 50%
Probability Comparison Chart
Making Inferences from Probability
Using Probability for Predictions
📝 Worked Example: Making Predictions
Problem: A spinner has 8 equal sections numbered 1-8. If spun 400 times, how many times would you expect to land on a prime number?
Solution:
Prime numbers between 1-8: 2, 3, 5, 7 (4 primes)
P(prime) = 4/8 = 0.5
Expected frequency:
Prediction: The spinner should land on a prime number approximately 200 times out of 400.
Key Examination Insights
Common Mistakes
- Confusing experimental and theoretical probability formulas
- Forgetting that probability is always between 0 and 1
- Using addition rule when events are NOT mutually exclusive
- Not simplifying fractions in final answers
Success Strategies
- Always identify sample space first
- Check if events are mutually exclusive before adding
- Use complementary rule (1 - P) when "at least" or "not" is in the question
- Express answers as fractions, decimals, or percentages
CSEC Practice Arena
Test Your Understanding
CSEC Examination Mastery Tip
Probability Questions: When solving CSEC probability questions:
- Always write the probability as a fraction in simplest form
- For "at least" or "not" questions, use the complementary rule
- For "or" questions, check if events are mutually exclusive first
- Show your working: sample space, favorable outcomes, calculation
- Remember: P(certain) = 1, P(impossible) = 0
