Probing Questions: Probability of a Single Event
Probing Questions

Probability of a Single Event

Questions designed to stretch thinking, reveal misconceptions, and spark mathematical reasoning.

๐Ÿ’ฌ

Convince Me That…

Students must construct a mathematical argument for why each statement is true.

1
Convince me that the probability of picking a red ball from a bag containing 3 red balls and 7 blue balls is \( \frac{3}{10} \), not \( \frac{3}{7} \)
๐Ÿ’ก Possible Argument

The total number of balls in the bag is 3 + 7 = 10. Probability is calculated as the number of favourable outcomes divided by the total number of equally likely outcomes, so P(red) = 3/10. The denominator must be 10 — the total — not 7.

The value \( \frac{3}{7} \) would mean “3 reds out of 7 blues” — but we are not choosing from just the blue balls. We are choosing from all 10 balls. A useful check: if there were 3 red and 3 blue (6 total), the probability of red should be \( \frac{3}{6} = \frac{1}{2} \), not \( \frac{3}{3} = 1 \). The “divide by the other colour” method gives absurd results.

2
Convince me that if a spinner has three sections coloured red, blue, and green, the probability of landing on red is not necessarily \( \frac{1}{3} \)
๐Ÿ’ก Possible Argument

The probability is only \( \frac{1}{3} \) if all three sections are equal in size. If the red section takes up half the spinner and blue and green share the other half, P(red) = \( \frac{1}{2} \), not \( \frac{1}{3} \). The number of colours on a spinner does not determine the probability — the sizes of the sections do.

An analogy: imagine a spinner where red covers 99% of the area and blue and green are tiny slivers. Nobody would say there’s a \( \frac{1}{3} \) chance of each. Probability depends on how much of the total area each section occupies, not simply on how many differently-coloured sections exist.

3
Convince me that a probability of \( \frac{1}{4} \), a probability of 0.25, and a probability of 25% all describe the same likelihood
๐Ÿ’ก Possible Argument
0 1/4 0.25 25% 1/2 0.5 50% 3/4 0.75 75% 1

These are three different ways of writing the same number. Converting: \( \frac{1}{4} = 1 \div 4 = 0.25 \), and \( 0.25 \times 100 = 25\% \). They all mean “one quarter of the time” or equivalently “25 times out of every 100.” Probability can be expressed in any of these forms — it does not change the likelihood of the event.

A common confusion is thinking fractions, decimals, and percentages are somehow different “types” of probability. But just as £0.50, 50p, and “half a pound” all describe the same amount of money, these three notations all describe the same position on the probability scale.

4
Convince me that if the probability of winning a game is \( \frac{3}{5} \), the probability of not winning is \( \frac{2}{5} \)
๐Ÿ’ก Possible Argument

An event either happens or it doesn’t — those are the only two possibilities, and together they cover every possible outcome. So P(event happens) + P(event does not happen) = 1. If P(winning) = \( \frac{3}{5} \), then P(not winning) = \( 1 – \frac{3}{5} = \frac{2}{5} \).

You don’t need extra information to work this out. Some students think you need to know more about the game to find P(not winning), but all you need is the complementary relationship: the two probabilities must add to 1 because one of the two things must happen. This works with any probability representation — if P(event) = 0.6, then P(not event) = 0.4; if P(event) = 70%, then P(not event) = 30%.

๐ŸŽฏ

Give an Example Of…

Think carefully — the fourth box is a trap! Give a non-example that looks right but isn’t.

1
Give an example of an event that has a probability of exactly \( \frac{1}{2} \)
An example
Another example
One no-one else will think of
A sneaky non-example
๐Ÿ’ก Possible Answers

Example: Flipping a fair coin and getting heads. P(heads) = \( \frac{1}{2} \).

Another: Rolling a fair six-sided dice and getting an even number. There are 3 even numbers (2, 4, 6) out of 6, so P(even) = \( \frac{3}{6} = \frac{1}{2} \).

Creative: Picking a red card from a standard 52-card deck. P(red) = \( \frac{26}{52} = \frac{1}{2} \). Any setup where exactly half the equally likely outcomes are favourable works.

Trap: Rolling a fair dice and getting a 1 or a 6. A student might think “I want two results and there are two things I either get or don’t get” and conclude it’s 50-50, but P(1 or 6) = \( \frac{2}{6} = \frac{1}{3} \), not \( \frac{1}{2} \).

2
Give an example of a situation where there are exactly two possible outcomes but the probability of each outcome is NOT \( \frac{1}{2} \)
An example
Another example
One no-one else will think of
A sneaky non-example
๐Ÿ’ก Possible Answers

Example: Picking a ball from a bag containing 1 red and 4 blue balls. The two outcomes are “red” and “blue”, but P(red) = \( \frac{1}{5} \) and P(blue) = \( \frac{4}{5} \).

Another: A biased coin where P(heads) = 0.7 and P(tails) = 0.3.

Creative: Spinning a spinner that is split into two sections, but with red taking up \( \frac{3}{4} \) of the circle and blue taking up \( \frac{1}{4} \). Two outcomes, but P(red) = \( \frac{3}{4} \) and P(blue) = \( \frac{1}{4} \).

Trap: Flipping a fair coin — heads or tails. A student might offer this thinking all two-outcome situations qualify, but with a fair coin P(heads) = P(tails) = \( \frac{1}{2} \), which is exactly what we need to avoid. The question says “NOT \( \frac{1}{2} \).”

3
Give an example of an event where the probability is greater than \( \frac{1}{2} \) but less than 1
An example
Another example
One no-one else will think of
A sneaky non-example
๐Ÿ’ก Possible Answers

Example: Picking a blue ball from a bag containing 4 blue and 1 red ball. P(blue) = \( \frac{4}{5} \).

Another: Rolling a number greater than 1 on a fair six-sided dice. P(>1) = \( \frac{5}{6} \).

Creative: Picking a consonant from the letters of the word MATHS. The consonants are M, T, H, S (4 out of 5), so P(consonant) = \( \frac{4}{5} \).

Trap: Picking a ball from a bag of 10 blue balls. A student might think “all blue, so you’re very likely to get blue — more than half.” But P(blue) = \( \frac{10}{10} = 1 \), which is equal to 1, not less than 1. The question requires strictly less than 1.

4 โœฆ
Give an example of a bag of coloured balls where the probability of picking a green ball is exactly \( \frac{3}{4} \)
An example
Another example
One no-one else will think of
A sneaky non-example
๐Ÿ’ก Possible Answers

Example: A bag with 3 green and 1 red ball. P(green) = \( \frac{3}{4} \).

Another: A bag with 6 green and 2 yellow balls. P(green) = \( \frac{6}{8} = \frac{3}{4} \).

Creative: A bag with 15 green and 5 blue balls. P(green) = \( \frac{15}{20} = \frac{3}{4} \). Any bag where exactly three quarters of the balls are green works — there are infinitely many valid answers.

Trap: A bag with 3 green, 1 red, and 1 blue ball. A student might think “there are 3 green and there are some others, and 3 out of 4 colours…” But the total is 5 balls, so P(green) = \( \frac{3}{5} \), not \( \frac{3}{4} \). The misconception is focusing on the number of green balls (3) and forcing the denominator to be 4 without checking the actual total.

5
Give an example of a single event where you know the probability of three different outcomes, and those three probabilities add up to exactly 1
An example
Another example
One no-one else will think of
A sneaky non-example
๐Ÿ’ก Possible Answers

Example: Rolling a fair six-sided dice and looking at three compound events: rolling 1 or 2 (\( \frac{2}{6} \)), rolling 3 or 4 (\( \frac{2}{6} \)), and rolling 5 or 6 (\( \frac{2}{6} \)). These three probabilities add to 1.

Another: A spinner that covers a full circle divided into three colours: red (\( \frac{1}{2} \)), blue (\( \frac{1}{4} \)), and green (\( \frac{1}{4} \)).

Creative: Drawing a card from a standard deck and recording if it is a Heart (\( \frac{1}{4} \)), a Club (\( \frac{1}{4} \)), or a black or red Diamond/Spade combination covering the rest (\( \frac{1}{2} \)). Any three mutually exclusive events that cover the entire sample space will work.

Trap: A bag with 3 red, 2 blue, and 1 green ball, and calculating P(red) + P(blue) + P(yellow). The student might assume any three colours from the setup sum to 1. But since there are no yellow balls, the sum is \( \frac{3}{6} + \frac{2}{6} + 0 = \frac{5}{6} \), not 1. You must exhaust all possible outcomes.

โš–๏ธ

Always, Sometimes, Never

Is the statement always true, sometimes true, or never true? Students should justify their decision with examples.

1
The probability of an event is a number from 0 to 1 (inclusive)
ALWAYS

This is the definition of probability. P = 0 means the event is impossible (e.g. rolling a 7 on a standard fair dice). P = 1 means the event is certain (e.g. rolling less than 7 on a standard fair dice). Every other probability lies between these values.

If a student ever calculates a probability greater than 1 or less than 0, they have made an error — for example, dividing the total by the favourable outcomes instead of the other way round. The number of favourable outcomes cannot exceed the total number of equally likely outcomes, so the fraction can never be greater than 1, and it cannot be negative since we are counting outcomes.

2
If there are exactly two possible outcomes, each outcome has a probability of \( \frac{1}{2} \)
SOMETIMES

True case: Flipping a fair coin — heads and tails are equally likely, so each has probability \( \frac{1}{2} \).

False case: Picking a ball from a bag with 1 red and 9 blue. There are two outcomes (red or blue), but P(red) = \( \frac{1}{10} \) and P(blue) = \( \frac{9}{10} \), not \( \frac{1}{2} \) each. The key is that two outcomes does not mean equally likely outcomes. Similarly, “it will rain tomorrow or it won’t” has two outcomes but nobody would claim P(rain) = \( \frac{1}{2} \) without evidence.

3
Previous results affect the probability of the next result when flipping a fair coin
NEVER

Each flip of a fair coin is independent — the coin has no memory. Whether you have just flipped 5 heads in a row or alternated perfectly, P(heads) on the next flip is still \( \frac{1}{2} \). A common belief is that after several heads, tails is “due” — this is the gambler’s fallacy.

Independence means the probability is fixed at \( \frac{1}{2} \) regardless of history. Note: this applies to a fair coin. If the coin were biased, the probability on each flip would still be constant — it just wouldn’t be \( \frac{1}{2} \). Either way, previous results never change what happens next.

4
The probability of picking a red ball from a bag is \( \frac{1}{2} \)
SOMETIMES

True case: A bag containing 5 red and 5 blue balls. P(red) = \( \frac{5}{10} = \frac{1}{2} \).

False case: A bag containing 2 red and 6 blue balls. P(red) = \( \frac{2}{8} = \frac{1}{4} \), not \( \frac{1}{2} \). The probability depends on the proportion of red balls in the bag — it is only \( \frac{1}{2} \) when exactly half the balls are red. Students who think this is “always” may be applying the misconception that you either pick red or you don’t, so it’s 50-50. Students who think “never” may not realise that the right bag contents can make P(red) = exactly \( \frac{1}{2} \).

๐Ÿ”ด

Odd One Out

Which is the odd one out? Can you make a case for each one? There’s no single right answer!

1
Which is the odd one out?
P(rolling a 6 on a fair dice)
P(rolling an even number on a fair dice)
P(flipping heads on a fair coin)
๐Ÿ’ก A Case for Each
P(rolling a 6) is the odd one out — it is the only probability that is less than \( \frac{1}{2} \). P(rolling a 6) = \( \frac{1}{6} \), while P(even) = \( \frac{1}{2} \) and P(heads) = \( \frac{1}{2} \).
P(rolling an even number) is the odd one out — it is the only one that is a compound event (made up of 3 distinct outcomes: 2, 4, 6). Rolling a 6 and flipping heads are both simple, elementary events.
P(flipping heads) is the odd one out — it is the only one whose sample space relies on categorical (non-numerical) data. The other two rely on the numbered faces of a dice.
2
Which is the odd one out?
Certain
Even chance
Likely
๐Ÿ’ก A Case for Each
Certain is the odd one out — it is the only one where the event must happen. Its probability is exactly 1. Both “even chance” and “likely” describe events that might not occur.
Even chance is the odd one out — it is the only one where the event is equally likely to happen as not happen. P(happens) = P(doesn’t happen) = 0.5. With “certain” the event always happens, and with “likely” the event is more probable than not.
Likely is the odd one out — it is the only one that describes a range of probability values rather than a single specific value. “Certain” corresponds to exactly P = 1, and “even chance” corresponds to exactly P = \( \frac{1}{2} \), but “likely” can mean any probability between \( \frac{1}{2} \) and 1.
3
Which is the odd one out?
P(rolling less than 3 on a fair dice)
P(landing on blue on a spinner with 3 equal sections)
P(picking a vowel from the letters of APPLE)
๐Ÿ’ก A Case for Each
P(vowel from APPLE) is the odd one out — it is the only one whose probability is not equal to \( \frac{1}{3} \). P(less than 3) = \( \frac{2}{6} = \frac{1}{3} \), and P(blue) = \( \frac{1}{3} \), but APPLE has letters A, P, P, L, E with 2 vowels out of 5, giving P = \( \frac{2}{5} \).
P(blue on spinner) is the odd one out — it is the only one with exactly 1 favourable outcome. Rolling less than 3 has 2 favourable outcomes (1 and 2), and APPLE has 2 favourable outcomes (A and E), but the spinner has just 1 favourable section (blue).
P(less than 3 on dice) is the odd one out — it is the only one whose sample space has exactly 6 equally likely outcomes. The spinner has 3 outcomes and APPLE has 5 letters, but the dice has 6 possible results.
๐Ÿ”

Explain the Mistake

Each example contains a deliberate error targeting a common misconception. Can you find where and why the reasoning goes wrong?

1
A bag contains 4 red balls and 6 blue balls. What is the probability of picking a red ball?
A student writes:

Answer: \( \frac{4}{6} \)

Reasoning: “There are 4 reds and 6 blues so it’s 4 out of 6.”

๐Ÿ” The Mistake

The student has divided the number of red balls by the number of blue balls, rather than by the total number of balls. This is a common misconception — treating probability as a ratio of “wanted to not-wanted” rather than “wanted to total.”

The correct calculation is P(red) = \( \frac{4}{4 + 6} = \frac{4}{10} = \frac{2}{5} \). The denominator must always be the total number of equally likely outcomes. A quick sense-check: if there were 5 red and 5 blue, the student’s method would give \( \frac{5}{5} = 1 \), meaning “certain” — but it clearly isn’t certain, since half the balls are blue.

2
A spinner has 5 equal sections: 3 red and 2 blue. What is the probability of landing on blue?
A student writes:

Answer: \( \frac{1}{2} \)

Reasoning: “There are two colours on the spinner — red and blue — so it’s 1 out of 2.”

๐Ÿ” The Mistake

The student has counted the number of colours (2) instead of the number of equally likely sections (5). Because the sections are equal in size, each section is equally likely, and probability should be calculated using sections, not colours. P(blue) = \( \frac{2}{5} \), not \( \frac{1}{2} \).

The fact that there are two colour categories does not make them equally likely. There are 3 red sections and only 2 blue sections, so landing on red is more likely than blue. This misconception often appears when students confuse “number of categories” with “number of equally likely outcomes.”

3
What is the probability of rolling a 7 on a fair six-sided dice?
A student writes:

Answer: “It’s really unlikely, so I’d say about \( \frac{1}{100} \).”

Reasoning: “7 is bigger than 6, so it’d be super hard to roll. I’ll give it a really small probability.”

๐Ÿ” The Mistake

The student recognises that rolling a 7 is very difficult but hasn’t distinguished between unlikely and impossible. A standard dice has faces numbered 1 to 6 — the outcome 7 does not exist in the sample space. It is not “nearly impossible”; it is genuinely impossible. The correct answer is P(rolling a 7) = 0.

An event with probability 0 is one that cannot happen — not one that is merely very hard. If an outcome is not in the sample space at all, its probability is exactly 0, not some small number. Ask the student: “If rolling a 7 is \( \frac{1}{100} \), what does the dice look like to make that happen?” This forces them to realize a 100-sided shape is required for that math to work.

4
A bag contains 2 red, 2 blue, and 2 green balls. What is the probability of picking a red ball?
A student writes:

Answer: \( \frac{1}{3} \) โœ“

Reasoning: “There are 3 colours and red is one of them, so it’s 1 out of 3.”

๐Ÿ” The Mistake

The answer of \( \frac{1}{3} \) is correct, but the reasoning is flawed. The student counted colours (3) rather than individual balls (6). The correct method is P(red) = \( \frac{2}{6} = \frac{1}{3} \). The student got lucky because the colours happen to be equally distributed — there are 2 of each colour.

If the bag contained 3 red, 2 blue, and 1 green (still 3 colours), the student’s method would give P(red) = \( \frac{1}{3} \), but the correct answer is P(red) = \( \frac{3}{6} = \frac{1}{2} \). Counting colours only works when every colour has the same number of balls. The reliable method is always to count individual equally likely outcomes.

5
I flipped a fair coin 10 times and it landed on Heads 7 times. What is the probability of getting Heads on this coin?
A student writes:

Answer: \( \frac{7}{10} \)

Reasoning: “It landed on heads 7 times out of the 10 flips I did.”

๐Ÿ” The Mistake

The student is confusing experimental frequency with theoretical probability. The theoretical probability of a fair coin remains exactly \( \frac{1}{2} \). The 7 out of 10 is simply the relative frequency of what happened in this specific, small sample of trials.

Because coins have no memory and probability describes long-term behavior, a small number of flips will rarely perfectly match the theoretical probability. If the student flipped the coin 10,000 times, the proportion of heads would settle much closer to \( \frac{1}{2} \).