This MCQ module is based on: Problems on Single Events in Probability
Problems on Single Events in Probability
This mathematics assessment will be based on: Problems on Single Events in Probability
Targeting Class 10 level in Probability, with Intermediate difficulty.
Upload images, PDFs, or Word documents to include their content in assessment generation.
14.1 (continued) — Worked Problems on Single Events
We now build problem-solving fluency with the classical definition \(\;P(E)=\dfrac{\text{favourable outcomes}}{\text{total outcomes}}\) by applying it to a variety of standard situations: coins, dice, cards, marbles in a bag, spinners, and lotteries. For each problem we use the three-step method: identify the sample space, count favourable outcomes, divide.
Example 1 — Bag of Balls
A bag contains 3 red balls and 5 black balls. A ball is drawn at random from the bag. What is the probability that the ball drawn is (i) red? (ii) not red?
Solution. Total balls = 8, so \(n=8\).
(ii) \(P(\text{not red})=1-P(\text{red})=1-\dfrac{3}{8}=\dfrac{5}{8}\).
Example 2 — Marbles in a Box
There are 5 red marbles, 8 white marbles and 4 green marbles in a box. One marble is taken out of the box at random. What is the probability that the marble is (i) red? (ii) white? (iii) not green?
Solution. Total = 5 + 8 + 4 = 17.
(iii) \(P(\text{not green})=1-P(\text{green})=1-4/17=13/17\)
Example 3 — Defective Pens
A lot consists of 144 ball pens of which 20 are defective and the others are good. Nuri will buy a pen if it is good, but will not buy if it is defective. The shopkeeper draws one pen at random. What is the probability that Nuri will buy the pen?
Solution. Total pens = 144; good = 124. So \(P(\text{Nuri buys})=P(\text{good})=\dfrac{124}{144}=\dfrac{31}{36}\). And \(P(\text{does not buy})=\dfrac{20}{144}=\dfrac{5}{36}\).
Example 4 — Random Selection from a Class
There are 40 students in Class X of a school of which 25 are girls and 15 are boys. The class teacher has to select one student as a class representative. She writes the name of each student on a separate card, the cards being identical, then shuffles them and picks one. What is the probability the name written on the card is the name of (i) a girl? (ii) a boy?
Example 5 — Discs Numbered 1–90
A box contains 90 discs which are numbered from 1 to 90. If one disc is drawn at random from the box, find the probability that it bears (i) a two-digit number, (ii) a perfect square, (iii) a number divisible by 5.
(ii) Perfect squares ≤ 90: 1, 4, 9, 16, 25, 36, 49, 64, 81 → 9 numbers. \(P=9/90=1/10\).
(iii) Multiples of 5 from 1 to 90: 5, 10, …, 90 → 18 numbers. \(P=18/90=1/5\).
Example 6 — Spinner Game
A game consists of spinning an arrow which comes to rest pointing at one of the numbers 1, 2, 3, 4, 5, 6, 7, 8 (Fig. below) and these are equally likely outcomes. What is the probability that it will point at (i) 8? (ii) an odd number? (iii) a number greater than 2? (iv) a number less than 9?
(i) \(P(8) = 1/8\)
(ii) Odd numbers: 1, 3, 5, 7 → \(P=4/8=1/2\)
(iii) Numbers > 2: 3, 4, 5, 6, 7, 8 → \(P=6/8=3/4\)
(iv) Numbers < 9: all 8 outcomes → \(P=8/8=1\) (sure event)
Example 7 — Savita and Hamida Kings
Savita and Hamida are friends. What is the probability that both will have (i) different birthdays? (ii) the same birthday? (Ignoring a leap year.)
Solution. There are 365 possible days. Fix Savita's birthday. Total possible days for Hamida = 365. For different birthdays, Hamida can be born on any of the remaining 364 days.
Example 8 — Rolling Two Dice
Two dice, one blue and one grey, are thrown at the same time. The 36 equally-likely outcomes are listed in the grid below. Find the probability that the sum of the two numbers is (i) 8, (ii) 13, (iii) ≤ 12.
(ii) Sum 13: impossible (max sum = 12). \(P=0/36=0\).
(iii) Sum ≤ 12: always true. \(P=36/36=1\) (sure event).
Example 9 — Defective Bulbs
A carton of 24 bulbs contain 6 defective bulbs. One bulb is drawn at random. What is the probability that the bulb is not defective? If the drawn bulb is not defective and is not replaced, and a second bulb is drawn at random, what is the probability the second bulb is not defective?
After one good bulb is removed: 17 good, 23 total. \(P(\text{good on 2nd})=17/23\).
Example 10 — Alphabet Letters
The letters of the English alphabet are written on 26 identical cards and placed in a box. A card is drawn at random. What is the probability that the card drawn shows (i) a vowel (ii) a consonant (iii) a letter from the word "INDIA" (repeated letters counted once)?
(ii) Consonants = 21. \(P=21/26\).
(iii) Distinct letters of INDIA: I, N, D, A → 4. \(P=4/26=2/13\).
Example 11 — Lost a Date
Savita asks her friend Hamida about the birthday of Harpreet Singh. Hamida is not sure; she says Harpreet's birth month is April. What is the probability that Harpreet was born on the 29th of April?
Solution. April has 30 days. Each day is equally likely. \(P=\dfrac{1}{30}\).
- Roll the die 60 times. Tally the outcomes in a table.
- Compute the empirical probability for each face (tally / 60).
- Compare with the theoretical probability 1/6 ≈ 0.167.
- Now roll another 60 times, for 120 total. Recompute. Which gets closer to 1/6?
Competency-Based Questions
Assertion–Reason Questions
Reason (R): Sum = 7 can occur in 6 different ways, whereas sum = 2 can occur in only 1 way.
Reason (R): The favourable outcomes are the 4 kings and the total outcomes are the 52 cards in the deck.
Reason (R): P(not red) = P(white) because red and white are the only colours and any ball is either red or white but not both.
Summary of Chapter 14
- A random experiment has outcomes that cannot be predicted; the set of all outcomes is the sample space.
- If outcomes are equally likely, \(P(E)=\dfrac{\text{favourable outcomes}}{\text{total outcomes}}\).
- \(0\le P(E)\le 1\); the impossible event has probability 0, the sure event has probability 1.
- Complementary events satisfy \(P(\bar{E})=1-P(E)\).
- The experimental (empirical) probability approaches the theoretical probability as the number of trials grows large — the Law of Large Numbers.