Probability Distribution PDF
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Ajanta Public School
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This document presents solved examples of probability distributions, demonstrating calculations for various scenarios, including coin tosses, dice rolls, and balls drawn from urns. The examples illustrate the application of probability concepts in different contexts. The document focuses on the fundamentals of probability theory with solved examples.
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## PROBABILITY **15.60** **Note:** If *x* is one of the possible values of a random variable *X*, then the probability that *X* takes value *x* is always non-zero i.e., *P(X=x)≠0*. ### SOLVED EXAMPLES **EXAMPLE 1.** A person plays a game of tossing a coin thrice. For each head, he gains ₹5, and for...
## PROBABILITY **15.60** **Note:** If *x* is one of the possible values of a random variable *X*, then the probability that *X* takes value *x* is always non-zero i.e., *P(X=x)≠0*. ### SOLVED EXAMPLES **EXAMPLE 1.** A person plays a game of tossing a coin thrice. For each head, he gains ₹5, and for each tail, he loses ₹2. Let *X* denote the amount gained or lost by the person. Show that *X* is a random variable and exhibit it as a function on the sample space of the experiment. **Solution.** Let *S* be the sample space of the experiment i.e., when a coin is tossed thrice, *S = {HHH, HHT, HTH, THH, HTT, THT, TTH, TTT}*. Now, it is given that the person gains ₹5 on getting each head and loses ₹2 on getting each tail. Here *X* is the amount gained or lost by the person and its values depend on the outcomes of the random experiment which are as follows: * *X(HHH) = ₹(3×5) = ₹ 15* * *X(HHT) = X(HTH) = X(THH) = ₹(2×5−1×2) = ₹ 8* * *X(HTT) = X(THT) = X(TTH) = ₹(1×5−2×2) = ₹ 1* * *X(TTT) = −₹(3×2) = −₹6* Thus, *X* is a random variable. Also, for each element of the sample space, *X* assumes a unique value. Hence *X* is a function on the sample space of the experiment having range {-6,1,8,15}. **EXAMPLE 2.** Find the probability distribution of the number of heads in three tosses of a coin. **Solution.** When a coin is tossed three times, the possible outcomes (denoting head by *H* and tail by *T*) are TTT, TTH, THT, HTT, THH, HTH, HHT, and HHH. Let *X* denote the random variable ‘number of heads when a coin is tossed thrice’. Clearly, the possible values of *X* are 0, 1, 2, 3. Now, * *P(X=0) = Probability of getting no head = P(TTT) = 1/8* * *P(X=1) = Probability of getting one head = P(TTH, THT, HTT) = 3/8* * *P(X=2) = Probability of getting 2 heads = P(THH, HTH, HHT) = 3/8* * *P(X=3) = Probability of getting three heads = P(HHH) = 1/8* Thus, the required probability distribution is: * *X:* 0 1 2 3 * *P(X):* 1/8 3/8 3/8 1/8 **EXAMPLE 3.** Find the probability distribution of a number of successes in two tosses of a die, where a success is defined as a number greater than 4. Sketch its graph also. **Solution.** Let *S* denote the number greater than 4 and failure *F* (say) is defined as a 'number less than 4'. Clearly, *X* can take the values 0, 1, 2. * *P(S) = P(5 or 6) = 2/6 = 1/3* * *P(F) = P(1 or 2 or 3 or 4) = 4/6 = 2/3* Now, * *P(X=0) = P(no success) = P(FF) = P(F).P(F) = 2/3 × 2/3 = 4/9* * *P(X=1) = P(one success) = P(SF or FS) = P(SF) + P(FS)* * * = P(S)P(F) + P(F)P(S) = 1/3 × 2/3 + 2/3 × 1/3 = 1/9 + 1/9 = 2/9* * *P(X=2) = P(both successes) = P(SS) = P(S).P(S) = 1/3 × 1/3 = 1/9* Hence, the required probability distribution is: * *X:* 0 1 2 * *P(X):* 4/9 2/9 1/9 **EXAMPLE 4.** A bag contains 3 white and 4 red balls. Three balls are drawn one by one with replacement. Find the probability distribution of the number of red balls. **Solution.** Let *X* denote the number of red balls drawn. Now, 3 balls are drawn one by one with replacement from the bag. Clearly, *X* can take the values 0, 1, 2, 3. Let *S* denote the event of 'drawing a red ball' and *F* denote the event of 'not drawing a red ball'. Then, * *P(S) = 4/7* and *P(F) = 3/7* Now, * *P(X=0) = P(FFF) = P(F)P(F)P(F) = 3/7 × 3/7 × 3/7 = 27/343* * *P(X=1) = P(SFF or FSF or FFS) = P(SFF)+P(FSF)+P(FFS)* * * = P(S)P(F)P(F) + P(F)P(S)P(F) + P(F)P(F)P(S)* * * = 4/7 × 3/7 × 3/7 + 3/7 × 4/7 × 3/7 + 3/7 × 3/7 × 4/1 = 36 / 343 = 108/343* * *P(X=2) = P(SSF or SFS or FSS) = P(SSF) + P(SFS) + P(FSS)* * * = P(S)P(S)P(F) + P(S)P(F)P(S) + P(F)P(S)P(S)* * * = 4/7 × 4/7 × 3/7 + 4/7 × 3/7 × 4/7 + 3/7 × 4/7 × 4/7 = 48 / 343 = 144/343* * *P(X=3) = P(SSS) = P(S)P(S)P(S)* * * = 4/7 × 4/7 × 4/7 = 64/343* Hence, the required probability distribution is: * *X:* 0 1 2 3 * *P(X):* 27/343 108/343 144/343 64/343 **EXAMPLE 5.** An urn contains 4 white and 6 red balls. Four balls are drawn at random from the urn . Find the probability distribution of the number of white balls. [CBSE 2012C] **Solution.** Let *X* denote the number of white balls drawn. Since there are 4 white balls in the urn, therefore *X* can take the values 0, 1, 2, 3, and 4. Now, * *P(X=0) = Probability that all 4 balls drawn are red = 6C4 / 10C4 = 1/14* * *P(X=1) = Probability of drawing one while ball = 4C1 × 6C3 / 10C4 = 8/21* * *P(X=2) = Probability of drawing two white balls = 4C2 × 6C2 / 10C4 = 6/14* * *P(X=3) = Probability of drawing three white balls = 4C3 × 6C1 / 10C4 = 4/35* * *P(X=4) = Probality of drawing 4 white balls = 4C4 × 6C0 / 10C4 = 1 / 210* Hence, the required probability distribution is: * *X:* 0 1 2 3 4 * *P(X):* 1/14 8/21 6/14 4/35 1/210 **EXAMPLE 6.** Two bad eggs are mixed accidentally with 10 good ones. Find the probability distribution of the number of bad eggs in 3 draws at random, without replacement, from this lot. [CBSE 2015C] **Solution.** Let *X* denote the number of bad eggs obtained in 3 draws from a group of 10 good and 2 bad eggs. Clearly, *X* can take the values 0, 1, or 2. Total number of eggs=12. * *P(X=0) = Probability of drawing no bad eggs = 10C3 / 12C3 = 12/22* * *P(X=1) = Probability of drawing one bad egg and two good eggs = 2C1 × 10C2 / 12C3 = 9/22* * *P(X=2) = Probability of drawing two bad eggs and one good egg = 2C2 × 10C1 / 12C3 = 1/22* Hence, the required probability distribution is: * *X:* 0 1 2 * *P(X):* 12/22 9/22 1/22 **EXAMPLE 7.** Three numbers are selected at random (without replacement) from first six positive integers. Let *X* denote the largest of the three numbers obtained. Find the probability distribution of *X*. **Solution.** Here *X* denotes 'largest of the three numbers obtained', when three numbers are selected, without replacement, from numbers 1, 2, 3, 4, 5, 6. Clearly, *X* is a random variable which can take the values 3, 4, 5, 6. Then, * *P(X=3) = Probality that the largest of three numbers is 3 = P(selecting 3 and any two out of 1, 2)* * * = 1C1 × 2C2 / 6C3 = 1/20* * *P(X=4) = Probability that the largest of the three numbers is 4 = P(selecting 4 and any two out of 1, 2, 3)* * * = 1C1 × 3C2 / 6C3 = 3/20* * *P(X=5) = Probability that the largest of the three numbers is 5 = P(selecting 5 and any two out of 1, 2, 3, 4)* * * = 1C1 × 4C2 / 6C3 = 6/20* * *P(X=6) = Probability that the largest of the three numbers is 6 = P(selecting 6 and any two out of 1, 2, 3, 4, 5)* * * = 1C1 × 5C2 / 6C3 = 10/20* Hence, the required probability distribution is: * *X:* 3 4 5 6 * *P(X):* 1/20 3/20 6/20 10/20 **EXAMPLE 8.** A random variable *X* has the following probability distribution values of *X*: * *X:* 0 1 2 3 4 5 6 7 * *P(X):* 0 *k* 2*k* 2*k* 3*k* *k*² 2*k*² 7*k*² + *k* Find (i) *k* (ii) *P(X<3)* (iii) *P(X>6)* (iv) *P(X<6)* (v) *P(0<X<5)* **Solution.** (i) We know that the sum of all the probabilities in a probability distribution is always 1. * *P(X=0) + P(X=1) +...+ P(X=7) = 1* * *0 + k + 2k + 2k + 3k + k² + 2k² + 7k² + k = 1* * *10k²+9k−1=0* * *(10k−1)(k+1)=0* * *10k−1=0 => k=1/10* *k+1≠0 => k≠−1* (ii) *P(X<3) = P(X=0) + P(X=1) + P(X=2)* * * = 0 + k + 2k = 3k = 3×1/10 = 3/10* (iii) *P(X>6) = P(X=7) = 7k²+k* * * = 7(1/10)² + 1/10 = 7/100 + 1/10 = 17/100* (iv) *P(X<6) = P(X=0) + P(X=1) + P(X=2) + P(X=3) + P(X=4) + P(X=5)* * = 0 + k + 2k + 2k + 3k + k² = k² + 8k* * = (1/10)² + 8×1/10 = 1/100 + 8/10 = 81/100* (v) *P(0<X<5) = P(X=1) + P(X=2) + P(X=3) + P(X=4)* * = k + 2k + 2k + 3k = 8k = 8×1/10 = 4/5* **EXAMPLE 9.** Let *X* be a random variable which assumes values *x₁*, *x₂*, *x₃*, *x₄* such that 2*P(X=x₁)*= 3*P(X=x₂)* = *P(X=x₃)* = 5*P(X=x₄)*. Find the probability distribution of *X*. **Solution.** Here, *X* is a random variable which assumes the values *x₁*, *x₂*, *x₃*, and *x₄* such that 2*P(X=x₁)*= 3*P(X=x₂)* = *P(X=x₃)* = 5*P(X=x₄)*. Let *P(X=x₃)* = *k*, then * *P(X=x₁) = k/2*, *P(X=x₂)= k/3* and *P(X=x₄)= k/5* [: Sum of probabilities = 1] * *k/2 + k/3 + k + k/5= 1* * *15k + 10k + 30k + 6k / 30 = 1* * *61k/30 = 1 => k=30/61* Hence, the required probability distribution is * *X:* *x₁* *x₂* *x₃* *x₄* * *P(X):* 15/61 10/61 30/61 6/61 **EXAMPLE 10.** Let *X* denote the number of hours you study during a randomly selected school day. The probability that *X* can take the values *x* has the following form, where *k* is some unknown constant. * *P(X=x)*= * *0.1 if x=0* * *kx if x=1 or 2* * *k(5−x) if x=3 or 4* * *0 otherwise* **(a)** Find the value of *k*. **(b)** What is the probability that you study (i) atleast two hours (ii) atmost two hours? **Solution.** The probability distribution for the random variable *X* is * *X:* 0 1 2 3 4 * *P(X):* 0.1 *k* 2*k* 2*k* *k* **(a)** We know that the sum of the probabilities in a probability distribution is always 1. * *P(X=0) + P(X=1) + P(X=2) + P(X=3) + P(X=4) = 1* * *0-1 + k + 2k + 2k + k = 1* * *0-1 + 6k = 1 => 6k = 0.9 => k=0.15* **(b)** (i) *P(studying atleast two hours) = P(X≥2)* * * = P(X=2) + P(X=3) + P(X=4)* * * = 2k + 2k + k = 5k = 5×0.15 = 0.75* (ii) *P(studying atmost two hours) = P(X≤2)* * * = P(X=0) + P(X=1) + P(X=2)* * * = 0.1 + k + 2k = 0.1 + 3k* * * = 0.1 + 3×0.15 = 0.1+0.45 = 0.55* ### **EXERCISE 15.7** 1. Find the probability distribution of the random variable ‘number of tails’ when two coins are tossed. [NCERT] 2. Find the probability distribution of the number of tails in four tosses of a coin. 3. A coin is biased so that the head is 3 times as likely to occur as a tail. If the coin is tossed twice, find the probability distribution for the number of tails. [AICBSE 2020; CBSE Sample Paper 2010] 4. Find the probability distribution of the number of times a total of 9 appears in two throws of two dice. 5. Two cards are drawn successively with replacement from a well shuffled pack of 52 cards. Find the probability distribution of the number of queens. [CBSE 2011C, 08, Sample Paper 2000] 6. Two cards are drawn simultaneously from a pack of 52 cards without replacement. Find the probability distribution of the number of kings. [CBSE Sample Paper 2004] 7. Three cards are drawn successively with replacement from a well shuffled deck of 52 cards. A random variable *X* denotes the number of spades on three cards. Determine the probability distribution of *X*. [CBSE 2009 C] 8. An urn contains 4 white and 3 red balls. Find the probability distribution of the number of red balls in three draws, with replacement, from the urn. 9. 3 bad articles are mixed with 7 good ones. Find the probability distribution of bad articles if 2 are drawn at random without replacement from this lot. 10. Three balls are drawn without replacement from a bag containing 5 white and 4 red balls. Find the probability distribution of the number of red balls drawn. [CBSE Sample Paper 2021] 11. A box contains 13 bulbs out of which 5 bulbs are defective. 3 bulbs are drawn one by one from the box without replacement. Find the probability distribution of the number of defective bulbs drawn. 12. A pair of unbiased dice is thrown. If the random variable *X* is the sum of two numbers obtained on two dice, find the probability distribution of *X*. 13. Find the probability distribution of the number of doublets in three throws of a pair of dice. [CBSE 2010C; CBSE 2011C, 05C] 14. From a lot of 10 items containing 3 defectives, a sample of 4 items is drawn at random. Let the random variable *X* denote the number of defective items in the sample. If the sample is drawn without replacement, find (i) the probability distribution of *X* (ii) *P(X≤1)* (iii) *P(X<1)* (iv) *P(0<X<2)*. 15. The probability distribution function of a random variable *X* is given by * *X:* 0 1 2 * *P(X)*: 3*k*³ 4*k* − 10*k*² 5*k* − 1 where *k* > 0. Find (i) *k* (ii) *P(X<2)* (iii) *P(1<X≤2)* 16. A random variable *X* has the following probability distribution: * *X:* 0 1 2 3 4 5 6 7 8 * *P(X)*: *k* 3*k* 5*k* 7*k* 8*k* 11*k* 0 *k* 3*k* Find (i) *P(X<3)* (ii) *P(2≤X≤5)* 17. The random variable *X* has a probability distribution *P(X)* of the following form, where ‘*k*’ is some real number. * *P(X)* = * *k*, if *x*=0 * *2k*, if *x*=1 * *3k*, if *x*=2 * *0* otherwise (i) Determine the value of *k*. (ii) Find *P(X<2)* (iii) Find *P(X>2)* [CBSE Sample Paper 2024] 18. Let *X* denote the number of colleges where you will apply after your results and *P(X=x)* denotes your probability of getting admission in *x* number of colleges. It is given that * *P(X=x)* = * *kx*, if *x*=0 or 1 * *2kx*, if *x*=2 * *k(5−x)*, if *x*=3 or 4, where *k* is a positive constant (i) Find the value of *k*. (ii) What is the probability that you will get admission in exactly two colleges? (iii) Find the mean and variance of the probability distribution. [CBSE 2016] ## **ANSWERS** 1. *X:* 0 1 2 * *P(X):* 1/4 1/2 1/4 2. *X:* 0 1 2 3 4 * *P(X):* 1/16 1/4 3/8 1/4 1/16 3. *X:* 0 1 2 * *P(X):* 1/16 6/16 9/16 4. *X:* 0 1 * *P(X):* 64/81 16/81 1/81 5. *X:* 0 1 2 * *P(X):* 144/169 24/169 1/169 6. *X:* 0 1 2 * *P(X):* 188/221 32/221 1/221 7. *X:* 0 1 2 3 * *P(X):* 27/64 27/64 9/64 1/64 8. *X:* 0 1 2 3 * *P(X):* 64/343 144/343 108/343 27/343 9. *X:* 0 1 2 3 * *P(X):* 7/24 21/40 7/40 1/120 10. *X:* 0 1 2 3 * *P(X):* 42/286 140/286 80/286 10/286 11. *X:* 1 2 3 4 5 6 7 8 9 10 11 12 * *P(X):* 36/36 36/36 36/36 36/36 36/36 36/36 36/36 36/36 36/36 36/36 36/36 36/36 12. *X:* 0 1 2 3 * *P(X):* 125/216 75/216 15/216 1/216 13. *X:* 0 1 2 3 * *P(X):* 1/6 1/2 1/3 1/30 14. *X:* 0 1 2 * *P(X):* 1/6 2/10 3/30 15. (i) *k* = 1/3 (ii) *P(X<2)* = 1 (iii) *P(1<X≤2)* = 2/3 16. (i) *k* = 1/34 (ii) *P(X<3)* = 3/17 (ii) *P(2≤X≤5)* = 5/17 17. (i) *k* = 1/8 (ii) *P(X<2)* = 3/8 (iii) *P(X>2)* = 1/4 18. (i) *k* = 1/8 (ii) *P(X=2)* = 1/4 (iii) Mean = 2; Variance = 1 1. (i) Mean = 2; Var. = 1 (ii) Mean = −0.2; Var. = 1.56 (iii) Mean = 3.8; Var. = 2.36 2. Mean = 7/2; Var. = 2.92, S.D. = 1.71 3. Mean = 2; Var. = 1 4. Mean = 1; Var. = 1/2 5. (i) *X:* 0 1 2 * *P(X):* 25/36 10/36 1/36 (ii) *X:* 0 1 2 3 * *P(X):* 125/216 75/216 15/216 1/216 Mean; Var. = 5/3, 5/18 Mean = 2; Var. = 5/12 6. 2/3 7. (i) *X:* 0 1 2 3 * *P(X):* 9/16 6/16 1/16 1/16; Mean = 1/2; Var. = 3/8 (ii) *X:* 0 1 2 3 * *P(X):* 1728/2197 432/2197 36/2197 1/2197; Mean = 13/13 8. (i) Mean = 3/7; Var. = 400/2873 (ii) Mean = 1; Var. = 0.49 9. Mean = 2.1; Var. = 0.79 10. *X:* 0 1 2 3 * *P(X):* 1/27 6/27 12/27 8/27; Mean=2 11. *X:* 0 1 2 4 * *P(X):* 1/4 1/2 1/4 1/4; Mean=1 12. 1 40 13. 3/4 14. *X:* 0 1 2 * *P(X):* 16/25 8/25 1/25; Mean=1/5 16. Mean = 4; Variance = 1 15. *X:* 0 1 2 3 4 5 6 7 8 9 10 * *P(X):* 343/1000 441/1000 189/1000 27/1000 1/1000 17. *X:* 1 2 3 4 5 6 * *P(X):* 5/21 4/21 3/21 2/21 2/21 1/21; Mean = 3 18. (i) *k* = 1/8 (ii) (iii) Mean = 5/8; Var. = 64/47