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Quantitative Methods Varsha Varde
Quantitative Methods Quantifying Uncertainty:  Basic Concepts of Probability
Quotes from You and Me Chances of your getting a handsome job should improve if you obtain an MBA. Probably, collections will jump this month. Most probably, ERP will be on by June. Odds are great for my promotion this time. Winning cricket match against Australia is not impossible, but is highly improbable Defects from new machines are unlikely. Varsha Varde
Uncertainty Each Statement Involves Uncertainty. Chances = Odds = Likelihood =  Probability  Real Life is Usually Full of Uncertainty. Almost Nothing is for Sure. There are Chances of Something Happening and Chances of Something Else Happening. In Such Situations, You can’t ‘Prove’ Anything. All You Can Do is to Assign a Probability to Each of the Different Possible Outcomes. Varsha Varde
Quotes from You and Me After This MBA Chances of your getting a handsome job would be 90% if you obtain an MBA. I am 75% confident that collections will jump this month. Odds are 80:20 for my promotion this time. . Winning cricket match against Australia is not impossible but has only 10% chance New machines churn out good product 97 out of 100 times.  Varsha Varde
Probability Theory How Do You Say  90%  Chances, or  80:20  Odds, or  75%  Confidence?  Probability Theory Provides Tools to Decision Makers to Quantify Uncertainties. Varsha Varde
Assigning Probabilities Classical Approach: Assumes equally likely outcomes (card games ,dice games, tossing coins and the like) Relative Frequency Approach: Uses relative frequencies of past occurrences as probabilities (Decision problems in area of management. Delay in delivery of product) Subjective Approach :Guess based on past experience or intuition.( At higher level of managerial decisions for important ,specific and unique decisions
Assume equally likely outcomes
Use Relative Frequencies Making use of relative frequencies of past. Suppose an organisation knows from past data  that about  25 out of 300 employees entering every year leave due to good opportunities elsewhere then the organisation can predict the probability of employee turnover for this reason  as 25/300=1/12=0.083
Subjective Probability Based on personal judgements Uses individual’s experience and familiarity with facts An expert analyst of share prices may give his judgement as follows on price of ACC shares in next two months 20% probability of increase by Rs500or more 60% probability of increase by less than Rs500 20%probability of remaining unchanged
Experiment Experiment:  An experiment is some act, trial or operation that results in a set of possible outcomes.  -The roll of two dice to note the sum of spots  -The toss of a coin to see the face that turns  up. - polling - inspecting an assembly line  - counting arrivals at emergency room - following a diet
Event Event:  An event means any collection of possible outcomes when an experiment is performed.  For example, When an unbiased die is rolled we may get either spot 1, spot 2, spot 3, spot 4, spot 5 or spot 6.  Appearance of anyone of the spots is an event. Appearance of an even spot is also an event.
EVENT/OUTCOME -The roll of two dice ( Appearance of  the sum of spots ) -The toss of a coin(  the face that turns  up) - polling ( Win or lose ) - inspecting an assembly line (Number of defectives)  - counting arrivals at emergency room( Number of arrivals in one hour ) - following a diet ( weight loss or gain )
Sample space Sample space:  the set of all sample points (simple events) for an experiment is called a sample space; or set of all possible outcomes for an experiment Venn diagram  :It is a pictorial representation of the sample space.It is usually drawn as a rectangular figure representing the sample space and circles representing events in the sample space.
Venn Diagram For Roll of a die A:Odd spots B:Even Spots
Equally Likely Events Equiprobable or Equally Likely Events:  Events are said to be equiprobable when one does not occur more often than the others.  When an unbiased die is thrown any one of the six spots may appear.  When an unbiased coin is tossed either a head or a tail appears
Exhaustive Events Exhaustive Events: Events are said to be exhaustive when they include all possible cases or outcomes.  For example, in tossing of fair coin, the two events “appearance of a head” and “appearance of a tail” are exhaustive events because when a coin is tossed we would get either a head or a tail.
Independent Events Independent Events:  Two events A and B are said to be independent if occurrence of A does not affect and is not affected by the occurrence of B. When a coin is tossed twice the result of the first toss does not affect and is not affected by the result of the second toss.  Thus, the result of the first toss and the result of the second toss are independent events.
Dependent Events Dependent Events:  Two events A and B are called dependent if the occurrence of A affects or is affected by the occurrence of B. For example, there are four kings in a pack of 52 cards.  The event of drawing a king at the first draw and the event of drawing another king at the second draw when the first drawn king is not replaced, are two dependent events.  In the first event there are four kings in a pack of 52 cards and in the second event there are only three kings left in the pack of remaining 51 cards
Mutually Exclusive Events Events are termed mutually exclusive if they cannot occur together so that in any  one trial  of an experiment at most one of the events would occur. Mutually Exclusive Events :  “ throwing even” and “throwing odd” with one die,  “ drawing the spade,” “drawing a diamond” and “drawing a club” while drawing one card from a deck.  purchase of a machine out of 3 brands available Not mutually exclusive “ drawing a spade” and “drawing a queen”  “ even number” and “at least 3” with one die Selection of a candidate with post graduate qualification and over 3 years experience A particular easy way to obtain two mutually exclusive events is to consider an event and its negative(Complement).  Such as “even” and “not even,” “spade”, “not spade” or in general ‘A’ and ‘not A’.
Notation . Sample space :  S Sample point:  E 1 , E 2 , . . .  etc. Event:  A,B,C,D,E etc.  (any capital letter). Venn diagram: Example. S  =  {E 1 , E 2 , . . ., E 6 } . That is  S  =  { 1 ,  2 ,  3 ,  4 ,  5 ,  6 } . We may think of  S  as representation of possible outcomes of a throw of a die. Varsha Varde
Venn Diagram A:Candidates over 3 years experience B:Candidates with post graduate qualification   S AB
More definitions Union, Intersection and Complementation Given  A  and  B  two events in a sample space  S . 1. The  union  of  A  and  B ,  AUB , is the event containing all sample points in either  A or B  or both. Sometimes we use  A or B  for union. 2. The  intersection  of  A  and  B ,  A ∩ B , is the event containing all sample points that are both in  A and B . Sometimes we use  AB  or  A and B  for intersection. 3. The  complement  of  A,  Ā  the event containing all sample points that are  not in A . Sometimes we use  not A  or A c   for complement. Mutually Exclusive Events  (Disjoint Events)  4 Two events are said to be mutually exclusive (or disjoint) if their intersection is empty. (i.e.  A  ∩  B  =  ö ). Varsha Varde
Example Suppose  S  =  {E 1 , E 2 , . . ., E 6 } . Let A  =  {E 1 , E 3 , E 5 } ; B  =  {E 1 , E 2 , E 3 } . Then (i) A U B  =  {E 1 , E 2 , E 3 , E 5 } . (ii)  A  ∩  B  =  {E 1 , E 3 } .  (iii)  Ā   =  {E 2 , E 4 , E 6 } ; B c  = {E 4 , E 5 , E 6 } ; (iv)  A  and  B  are not mutually exclusive (why?) (v) Give two events in  S  that are mutually exclusive. Varsha Varde
Probability of an event Relative Frequency Definition  If an experiment is repeated a large number,  n , of times and the event  A  is observed  n A   times, the probability of  A  is P ( A ) =  n A   / n Interpretation n  = # of trials of an experiment n A   = frequency of the event  A n A /n  = relative frequency of  A P ( A ) =  n A  /n ,  if  n  is large enough. Varsha Varde
Basic Formula of Probability Probability of an Event A:  No. of Outcomes Favourable to Event A = ---------------------------------------------------- Total Number of All Possible Outcomes Probability is a Ratio. (A Distribution Ratio) It varies from 0 to 1. Often, It is Expressed in Percentage Terms Ranging from 0% to 100%. It is denoted as P(A) and termed as  marginal or unconditional probability Varsha Varde
Rules of Probability:  Multiplication Rule   It is for Probability of Simultaneous Occurrence of Two Events If A and B are two independent events, P(A & B) = P(A) x P(B)  Example: Experiment: Toss Two Coins A: Getting Head on Coin No. 1 B: Getting Head on Coin No. 2 P(A)= ½, P(B)= ½, P(A&B)= ¼ =0.25 Varsha Varde
Rules of Probability:  General Multiplication Rule   If A and B are two dependent events,  P(A & B) = P(A) x P(B|A)  P(B|A) The  conditional probability   of the event B   given that event A   has occurred Example: Draw Two Cards from a Deck  A: First Card a King B: Second Card also a King P(A)=4/52=1/13, P(B|A)=3/51  P(A & B)=1/13 x 3/51=3/204=0.015=1.5% Varsha Varde
Rules of Probability:  Addition Rule   It is for Probability of Occurrence of Either of the Two Events If A and B are two  mutually exclusive  events, P(A or B) = P(A) + P(B)  Example: Experiment: Roll a Die A: Getting the No. 5 B: Getting the No. 6 P(A)=1/6, P(B)=1/6, P(A or B)=1/3=0.33=33% Note:  Two Events are Mutually Exclusive if They Cannot Occur Together Varsha Varde
Rules of Probability:  General Addition Rule   If A and B are  any two events ,  P(A or B) = P(A) + P(B) – P(A & B) Example: Toss Two Coins A: Getting Head on Coin No. 1 B: Getting Head on Coin No. 2 P(A)= ½, P(B)= ½, P(A & B)= ¼  So, P(A or B)= ½ + ½ - ¼ = ¾ =0.75=75% Varsha Varde
Exercise If 80% Company guests visit the HO, 70% visit the Plant, and 60% visit both, what is the chance that a guest will visit HO or Plant or both?  What is the probability that he will visit neither the HO nor the Plant, but meet Company Executives at the Taj? Varsha Varde
Solution P(A)=0.8 P(B)=0.7 P(A&B)=0.6 Prob that a guest will visit HO or Plant or both = P(A&B)=0.8 + 0.7 – 0.6=0.9 = 90% Prob that he will visit neither the HO nor the Plant, but meet Company Executives at the Taj = 1 - Prob that a guest will visit HO or Plant or both = 1 – 0.9 = 0.1 = 10% Varsha Varde
Conceptual Definition of Probability Consider a random experiment whose sample space is  S  with sample points  E 1 , E 2 , . . . , . For each event  Ei  of the sample space  S  let  P ( Ei ) be the probability of Ei (i) 0  ≤  P ( Ei )  ≤   1 for all  i (ii)  P ( S ) = 1 (iii) ∑ P ( Ei ) = 1 , where the summation is over all sample points in  S . Varsha Varde
Example Definition  The probability of any event  A  is equal to the sum of the probabilities of the sample points in  A . Example.  Let  S  =  {E 1 , . . ., E 10 } .  Ei  E 1  E 2  E 3  E 4  E 5  E 6  E 7  E 8  E 9  E 10 P( Ei )  1 / 20 1 / 20 1 / 20 1 / 20 1 / 20 1 / 20 1 / 5 1 / 5 1 / 5  1 / 10 Question: Calculate  P ( A ) where  A  =  {Ei, i ≥ 6 } . P ( A ) =  P ( E 6) +  P ( E 7) +  P ( E 8) +  P ( E 9) +  P ( E 10) = 1 / 20 + 1 / 5 + 1 / 5 + 1 / 5 + 1 / 10 = 0 . 75 Varsha Varde
Steps in calculating probabilities of events 1. Define the experiment 2. List all simple events 3. Assign probabilities to simple events 4. Determine the simple events that constitute the given event 5. Add up the simple events’ probabilities to obtain the probability of the given event Example  Calculate the probability of observing one  H  in a toss of two fair coins. Solution. S  =  {HH,HT,TH, TT} A  =  {HT, TH} P ( A ) = 0 . 5 Varsha Varde
Example. Example.  Toss a fair coin 3 times. (i) List all the sample points in the sample space Solution:  S  =  {HHH, · · ·TTT}  (Complete this) (ii) Find the probability of observing exactly two heads and at most one head. Varsha Varde
Probability Laws Complementation law: P ( A ) = 1  - P ( Ā ) Additive law: P ( A U B ) =  P ( A ) +  P ( B )  - P ( A  ∩  B ) Moreover, if  A  and  B  are mutually exclusive, then  P ( A ∩ B ) = 0 and P ( A U B ) =  P ( A ) +  P ( B ) Multiplicative law  (Product rule) P ( A  ∩  B ) =  P ( A|B ) P ( B ) =  P ( B|A ) P ( A ) Moreover, if  A  and  B  are independent P ( A ∩ B ) =  P ( A ) P ( B ) Varsha Varde
Example Let  S  =  {E 1 , E 2 , . . ., E 6 } ;  A  =  {E 1 , E 3 , E 5 } ;  B  =  {E 1 , E 2 , E 3 } ;  C  =  {E 2 , E 4 , E 6 } ; D  = {E 6 } . Suppose that all elementary events are equally likely. (i) What does it mean that all elementary events are equally likely? (ii) Use the complementation rule to find  P ( A c ). (iii) Find  P ( A|B ) and  P ( B|A ) (iv) Find  P ( D ) and  P ( D|C ) (v) Are  A  and  B  independent? Are  C  and  D  independent? (vi) Find  P ( A ∩  B ) and  P ( A  U B ). Varsha Varde
Law of total probability Let  A, A c   be complementary events and let  B  denote an arbitrary event. Then P(B)  =  P ( B ∩  A ) +  P ( B  ∩  A c )  , or P ( B ) =  P ( B/A ) P ( A ) +  P ( B/A c ) P ( A c ) . Varsha Varde
Bayes’ Law Let  A ,A c  be complementary events and let B   denote an arbitrary event. Then P (A |B)= P ( AB )/ P (B ) P (B /A ) P (A) P (A |B ) =-  --------------------------------- P (B /A ) P (A) +  P (B /A c ) P (A c ) Remarks. (i) The events of interest here are A , A c , (ii)  P (A) and  P  (A c ) are called  prior  probabilities, (iii)  P (A |B ) and  P (A c |B ) are called  posterior  (revised) probabilities. (iv) Bayes’ Law is important in several fields of applications. Varsha Varde
Bayesian Approach  English mathematician  Thomas Bayes  (1702-61) set out his theory of probability It is being revived now 250 years later Step ahead from Subjective Prob Method A: Digestive disorder, B: Drinking Coke Bayes’ Rule: P(B|A) P(A)  0.65x0.3 P(A|B)  =  ------------------- = ----------- = 0.53 P(B)   0.37
P(Ai) P(B/Ai) P(AiB) P(AiB)/P(B)= P(Ai/B) Prior Probabilities Conditional Probabilities Joint Probabilities Posterior Probabilities P(A1)=0.30 P(B/A1)=0.65  P(A1B)=0.195 P(A1/B)=.195/.37  =.527 P(A2)=0.70 P(B/A2)=0.25 P(A2B)=0.175 P(A2/B)=.175/.37=.473 P(B)=0.37
Example . A laboratory blood test is 95 percent effective in detecting a certain disease when it is, in fact, present. However, the test also yields a “false positive” results for 1 percent of healthy persons tested. (That is, if a healthy person is tested, then, with probability 0.01, the test result will imply he or she has the disease.) If 0.5 percent of the population actually has the disease, what is the probability a person has the disease given that the test result is positive? Solution  Let  D  be the event that the tested person has the disease and  E  the event that the test result is positive. The desired probability  P ( D|E ) is obtained by P ( D/E ) = P ( D  ∩  E )/ P ( E ) = P ( E/D ) P ( D )/ P ( E/D ) P ( D ) +  P ( E/D c ) P ( D c ) =( . 95)( . 005)/( . 95)( . 005) + ( . 01)( . 995) =95/294  ≈0  . 323 . Thus only 32 percent of those persons whose test results are positive actually have the disease. Varsha Varde
General Bayes’Theorom   A1,A2,…..Ak are k mutually exclusive and exhaustive events with  known prior probabilities  P(A1),P(A2),….P(Ak) B is an event that follows or is caused by prior events A1,A2, …Ak  with Conditional probabilities  P(B/A1),P(B/A2),…P(B/Ak)  which are  known Bayes’ formula allows us to calculate  posterior (revised) probabilities  P(A1/B),P(A2/B),….P(Ak/B) P(Ai/B)=P(Ai)P(B/Ai)/{P(A1)P(B/A1)+…+P(Ak)P(B/Ak)}
Counting Sample Points Is it always necessary to list all sample points in  S ? Coin Tosses Coins  sample-points  Coins  sample-points 1  2  2  4 3  8  4  16 5  32  6  64 10  1024  20  1,048,576 30  ≈   10 9  40  ≈  10  12 50  ≈   10 15  60  ≈ 10 19 Note that 2 30   ≈   10 9  = one billion, 2 40  ≈   10 12  = one thousand billion, 2 50   ≈10 15 =one trillion. RECALL:  P ( A ) =  n A /n  , so for some applications we need to find  n, nA  where  n  and  n A  are the number of points in  S  and  A  respectively. Varsha Varde
Basic principle of counting: mn rule Suppose that two experiments are to be performed. Then if experiment 1 can result in any one of  m  possible outcomes and if, for each outcome of experiment 1, there are  n  possible outcomes of experiment 2, then together there are  mn  possible outcomes of the two experiments. Varsha Varde
Examples. (i) Toss two coins:  mn  = 2 × 2 = 4 (ii) Throw two dice:  mn  = 6 ×  6 = 36 (iii) A small community consists of 10 men, each of whom has 3 sons. If one man and one of his sons are to be chosen as father and son of the year, how many different choices are possible? Solution : Let the choice of the man as the outcome of the first experiment and the subsequent choice of one of his sons as the outcome of the second experiment, we see,from the basic principle, that there are 10  ×  3 = 30 possible choices. Varsha Varde
Generalized basic principle of counting If  r  experiments that are to be performed are such that the first one may result in any of  n 1  possible outcomes, and if for each of these  n 1   possible outcomes there are  n 2  possible outcomes of the second experiment, and if for each of the possible outcomes of the first two experiments there are  n 3  possible outcomes of the third experiment, and so on, . . . , then there are a total of  n 1  x  n 2   · · xn r   possible outcomes of the  r  experiments. Varsha Varde
Examples (i) There are 5 routes available between  A  and  B ; 4 between  B  and  C ; and 7 between  C  and  D . What is the total number of available routes between  A  and  D ? Solution: The total number of available routes is  mnt  = 5 . 4 . 7 = 140. (ii) A college planning committee consists of 3 freshmen, 4 parttimers, 5 juniors and 2 seniors. A subcommittee of 4, consisting of 1 individual from each class, is to be chosen. How many different subcommittees are possible? Solution: It follows from the generalized principle of counting that there are 3 · 4 · 5 · 2 = 120 possible subcommittees. Varsha Varde
Examples (iii) How many different 7 - place license plates are possible if the first 3 places are to be occupied by letters and the final 4 by numbers? Solution: It follows from the generalized principle of counting that there are 26  ·  26  · 26  ·  10  ·  10  ·  10  ·  10 = 175 ,  760 ,  000 possible license plates. (iv) In (iii), how many license plates would be possible if repetition among letters or numbers were prohibited? Solution: In this case there would be 26  ·  25  ·  24  ·  10  ·  9  ·  8  ·  7 = 78 ,  624 ,  000 possible license plates. Varsha Varde
Permutations:  (Ordered arrangements ) Permutations:  (Ordered arrangements) The number of ways of ordering  n  distinct objects taken  r  at a time (order is important) is given by n ! /( n - r )! =  n ( n -  1)( n -  2)  · · · ( n - r  + 1) Examples (i) In how many ways can you arrange the letters  a ,  b  and  c . List all arrangements. Answer: There are 3! = 6 arrangements or permutations. (ii) A box contains 10 balls. Balls are selected without replacement one at a time. In how many different ways can you select 3 balls? Solution: Note that  n  = 10 , r  = 3. Number of different ways is = 10! /7! = 10  ·  9  · 8= 720, Varsha Varde
Combinations Combinations  For  r  ≤  n , we define  nCr =n ! / ( n - r )!  r ! and say that  n and r  represents the number of possible combinations of  n  objects  taken  r  at a time (with no regard to order). Examples (i) A committee of 3 is to be formed from a group of 20 people. How many different committees are possible? Solution: There are 20C3  = 20! /3!17! = 20 . 19 . 18/3 . 2 . 1 = 1140 possible committees. (ii) From a group of 5 men and 7 women, how many different committees consisting of 2 men and 3 women can be formed? Solution: 5C2 x 27C3  = 350 possible committees. Varsha Varde
Random Sampling Definition.  A sample of size  n  is said to be a  random sample  if the  n  elements are selected in such a way that every possible combination of  n  elements has an equal probability of being selected .In this case the sampling process is called  simple random sampling . Remarks.  (i) If  n  is large, we say the random sample provides an honest representation of the population. (ii) For finite populations the number of possible samples of size  n  is  N C n For instance the number of possible samples when  N  = 28 and  n  = 4 is  28 C 4 =20475 Tables of random numbers may be used to select random samples. Varsha Varde
Frequency Distribution: Number of Sales Orders Booked by 50 Sales Execs April 2006 Varsha Varde Number of Orders Number of SEs 00 – 04 14 05 - 09 19 10 – 14 07 15 – 19 04 20 – 24 02 25 – 29 01 30 – 34 02 35 – 39 00 40 – 44 01 TOTAL 50
Probability Distribution Varsha Varde Number of Orders Number of SEs Probability 00 – 04 14 0.28 05 - 09 19 0.38 10 – 14 07 0.14 15 – 19 04 0.08 20 – 24 02 0.04 25 – 29 01 0.02 30 – 34 02 0.04 35 – 39 00 0.00 40 – 44 01 0.02 TOTAL 50 1.00
Standard Discrete Prob Distns Binomial Distribution:  When a Situation can have Only Two Possible Outcomes e.g. PASS or FAIL, ACCEPT or REJECT. This distribution gives probability of an outcome (say, ACCEPT) occurring exactly m times out of n trials of the situation, i.e. probability of 10 ACCEPTANCES out of 15 items tested. Varsha Varde
Standard Discrete Prob Distns Poisson Distribution:  When a Situation can have Only Two Possible Outcomes, & When the Total Number of Observations is Large (>20), Unknown or Innumerable.  This distribution gives the probability of an outcome (say, ACCEPT) occurring m times, i.e. probability of say 150 ACCEPTANCES. Varsha Varde
Standard Continuous Prob Distn Normal Distribution:  Useful & Important Several Variables Follow Normal Distn or a Pattern Nearing It. (Weights, Heights) Skewed Distns Assume This Shape After Getting Rid of Outliers  For Large No. of Observations, Discrete Distributions Tend to Follow Normal Distn It is Amenable to Mathematical Processes  Varsha Varde
Features of Normal Distribution Symmetrical and Bell Shaped Mean at the Centre of the Distribution Mean = mode = Median Probabilities Cluster Around the Middle and Taper Off Gradually on Both Sides Very Few Values Beyond Three Times the Standard Deviation from the Mean Varsha Varde
Probabilities in Normal Distn 68 % of Values Lie in the Span of Mean Plus / Minus One Standard Deviation. 95 % of Values Lie in the Span of Mean Plus / Minus Two Standard Deviation. 99 % of Values Lie in the Span of Mean Plus / Minus Three Standard Deviation. Standard Normal Distn Tables Readily Show Prob of Every Value. Use Them to Draw Inferences. Varsha Varde

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03+probability+distributions.ppt

  • 2. Quantitative Methods Quantifying Uncertainty: Basic Concepts of Probability
  • 3. Quotes from You and Me Chances of your getting a handsome job should improve if you obtain an MBA. Probably, collections will jump this month. Most probably, ERP will be on by June. Odds are great for my promotion this time. Winning cricket match against Australia is not impossible, but is highly improbable Defects from new machines are unlikely. Varsha Varde
  • 4. Uncertainty Each Statement Involves Uncertainty. Chances = Odds = Likelihood = Probability Real Life is Usually Full of Uncertainty. Almost Nothing is for Sure. There are Chances of Something Happening and Chances of Something Else Happening. In Such Situations, You can’t ‘Prove’ Anything. All You Can Do is to Assign a Probability to Each of the Different Possible Outcomes. Varsha Varde
  • 5. Quotes from You and Me After This MBA Chances of your getting a handsome job would be 90% if you obtain an MBA. I am 75% confident that collections will jump this month. Odds are 80:20 for my promotion this time. . Winning cricket match against Australia is not impossible but has only 10% chance New machines churn out good product 97 out of 100 times. Varsha Varde
  • 6. Probability Theory How Do You Say 90% Chances, or 80:20 Odds, or 75% Confidence? Probability Theory Provides Tools to Decision Makers to Quantify Uncertainties. Varsha Varde
  • 7. Assigning Probabilities Classical Approach: Assumes equally likely outcomes (card games ,dice games, tossing coins and the like) Relative Frequency Approach: Uses relative frequencies of past occurrences as probabilities (Decision problems in area of management. Delay in delivery of product) Subjective Approach :Guess based on past experience or intuition.( At higher level of managerial decisions for important ,specific and unique decisions
  • 9. Use Relative Frequencies Making use of relative frequencies of past. Suppose an organisation knows from past data that about 25 out of 300 employees entering every year leave due to good opportunities elsewhere then the organisation can predict the probability of employee turnover for this reason as 25/300=1/12=0.083
  • 10. Subjective Probability Based on personal judgements Uses individual’s experience and familiarity with facts An expert analyst of share prices may give his judgement as follows on price of ACC shares in next two months 20% probability of increase by Rs500or more 60% probability of increase by less than Rs500 20%probability of remaining unchanged
  • 11. Experiment Experiment: An experiment is some act, trial or operation that results in a set of possible outcomes. -The roll of two dice to note the sum of spots -The toss of a coin to see the face that turns up. - polling - inspecting an assembly line - counting arrivals at emergency room - following a diet
  • 12. Event Event: An event means any collection of possible outcomes when an experiment is performed. For example, When an unbiased die is rolled we may get either spot 1, spot 2, spot 3, spot 4, spot 5 or spot 6. Appearance of anyone of the spots is an event. Appearance of an even spot is also an event.
  • 13. EVENT/OUTCOME -The roll of two dice ( Appearance of the sum of spots ) -The toss of a coin( the face that turns up) - polling ( Win or lose ) - inspecting an assembly line (Number of defectives) - counting arrivals at emergency room( Number of arrivals in one hour ) - following a diet ( weight loss or gain )
  • 14. Sample space Sample space: the set of all sample points (simple events) for an experiment is called a sample space; or set of all possible outcomes for an experiment Venn diagram :It is a pictorial representation of the sample space.It is usually drawn as a rectangular figure representing the sample space and circles representing events in the sample space.
  • 15. Venn Diagram For Roll of a die A:Odd spots B:Even Spots
  • 16. Equally Likely Events Equiprobable or Equally Likely Events: Events are said to be equiprobable when one does not occur more often than the others. When an unbiased die is thrown any one of the six spots may appear. When an unbiased coin is tossed either a head or a tail appears
  • 17. Exhaustive Events Exhaustive Events: Events are said to be exhaustive when they include all possible cases or outcomes. For example, in tossing of fair coin, the two events “appearance of a head” and “appearance of a tail” are exhaustive events because when a coin is tossed we would get either a head or a tail.
  • 18. Independent Events Independent Events: Two events A and B are said to be independent if occurrence of A does not affect and is not affected by the occurrence of B. When a coin is tossed twice the result of the first toss does not affect and is not affected by the result of the second toss. Thus, the result of the first toss and the result of the second toss are independent events.
  • 19. Dependent Events Dependent Events: Two events A and B are called dependent if the occurrence of A affects or is affected by the occurrence of B. For example, there are four kings in a pack of 52 cards. The event of drawing a king at the first draw and the event of drawing another king at the second draw when the first drawn king is not replaced, are two dependent events. In the first event there are four kings in a pack of 52 cards and in the second event there are only three kings left in the pack of remaining 51 cards
  • 20. Mutually Exclusive Events Events are termed mutually exclusive if they cannot occur together so that in any one trial of an experiment at most one of the events would occur. Mutually Exclusive Events : “ throwing even” and “throwing odd” with one die, “ drawing the spade,” “drawing a diamond” and “drawing a club” while drawing one card from a deck. purchase of a machine out of 3 brands available Not mutually exclusive “ drawing a spade” and “drawing a queen” “ even number” and “at least 3” with one die Selection of a candidate with post graduate qualification and over 3 years experience A particular easy way to obtain two mutually exclusive events is to consider an event and its negative(Complement). Such as “even” and “not even,” “spade”, “not spade” or in general ‘A’ and ‘not A’.
  • 21. Notation . Sample space : S Sample point: E 1 , E 2 , . . . etc. Event: A,B,C,D,E etc. (any capital letter). Venn diagram: Example. S = {E 1 , E 2 , . . ., E 6 } . That is S = { 1 , 2 , 3 , 4 , 5 , 6 } . We may think of S as representation of possible outcomes of a throw of a die. Varsha Varde
  • 22. Venn Diagram A:Candidates over 3 years experience B:Candidates with post graduate qualification S AB
  • 23. More definitions Union, Intersection and Complementation Given A and B two events in a sample space S . 1. The union of A and B , AUB , is the event containing all sample points in either A or B or both. Sometimes we use A or B for union. 2. The intersection of A and B , A ∩ B , is the event containing all sample points that are both in A and B . Sometimes we use AB or A and B for intersection. 3. The complement of A, Ā the event containing all sample points that are not in A . Sometimes we use not A or A c for complement. Mutually Exclusive Events (Disjoint Events) 4 Two events are said to be mutually exclusive (or disjoint) if their intersection is empty. (i.e. A ∩ B = ö ). Varsha Varde
  • 24. Example Suppose S = {E 1 , E 2 , . . ., E 6 } . Let A = {E 1 , E 3 , E 5 } ; B = {E 1 , E 2 , E 3 } . Then (i) A U B = {E 1 , E 2 , E 3 , E 5 } . (ii) A ∩ B = {E 1 , E 3 } . (iii) Ā = {E 2 , E 4 , E 6 } ; B c = {E 4 , E 5 , E 6 } ; (iv) A and B are not mutually exclusive (why?) (v) Give two events in S that are mutually exclusive. Varsha Varde
  • 25. Probability of an event Relative Frequency Definition If an experiment is repeated a large number, n , of times and the event A is observed n A times, the probability of A is P ( A ) = n A / n Interpretation n = # of trials of an experiment n A = frequency of the event A n A /n = relative frequency of A P ( A ) = n A /n , if n is large enough. Varsha Varde
  • 26. Basic Formula of Probability Probability of an Event A: No. of Outcomes Favourable to Event A = ---------------------------------------------------- Total Number of All Possible Outcomes Probability is a Ratio. (A Distribution Ratio) It varies from 0 to 1. Often, It is Expressed in Percentage Terms Ranging from 0% to 100%. It is denoted as P(A) and termed as marginal or unconditional probability Varsha Varde
  • 27. Rules of Probability: Multiplication Rule It is for Probability of Simultaneous Occurrence of Two Events If A and B are two independent events, P(A & B) = P(A) x P(B) Example: Experiment: Toss Two Coins A: Getting Head on Coin No. 1 B: Getting Head on Coin No. 2 P(A)= ½, P(B)= ½, P(A&B)= ¼ =0.25 Varsha Varde
  • 28. Rules of Probability: General Multiplication Rule If A and B are two dependent events, P(A & B) = P(A) x P(B|A) P(B|A) The conditional probability of the event B given that event A has occurred Example: Draw Two Cards from a Deck A: First Card a King B: Second Card also a King P(A)=4/52=1/13, P(B|A)=3/51 P(A & B)=1/13 x 3/51=3/204=0.015=1.5% Varsha Varde
  • 29. Rules of Probability: Addition Rule It is for Probability of Occurrence of Either of the Two Events If A and B are two mutually exclusive events, P(A or B) = P(A) + P(B) Example: Experiment: Roll a Die A: Getting the No. 5 B: Getting the No. 6 P(A)=1/6, P(B)=1/6, P(A or B)=1/3=0.33=33% Note: Two Events are Mutually Exclusive if They Cannot Occur Together Varsha Varde
  • 30. Rules of Probability: General Addition Rule If A and B are any two events , P(A or B) = P(A) + P(B) – P(A & B) Example: Toss Two Coins A: Getting Head on Coin No. 1 B: Getting Head on Coin No. 2 P(A)= ½, P(B)= ½, P(A & B)= ¼ So, P(A or B)= ½ + ½ - ¼ = ¾ =0.75=75% Varsha Varde
  • 31. Exercise If 80% Company guests visit the HO, 70% visit the Plant, and 60% visit both, what is the chance that a guest will visit HO or Plant or both? What is the probability that he will visit neither the HO nor the Plant, but meet Company Executives at the Taj? Varsha Varde
  • 32. Solution P(A)=0.8 P(B)=0.7 P(A&B)=0.6 Prob that a guest will visit HO or Plant or both = P(A&B)=0.8 + 0.7 – 0.6=0.9 = 90% Prob that he will visit neither the HO nor the Plant, but meet Company Executives at the Taj = 1 - Prob that a guest will visit HO or Plant or both = 1 – 0.9 = 0.1 = 10% Varsha Varde
  • 33. Conceptual Definition of Probability Consider a random experiment whose sample space is S with sample points E 1 , E 2 , . . . , . For each event Ei of the sample space S let P ( Ei ) be the probability of Ei (i) 0 ≤ P ( Ei ) ≤ 1 for all i (ii) P ( S ) = 1 (iii) ∑ P ( Ei ) = 1 , where the summation is over all sample points in S . Varsha Varde
  • 34. Example Definition The probability of any event A is equal to the sum of the probabilities of the sample points in A . Example. Let S = {E 1 , . . ., E 10 } . Ei E 1 E 2 E 3 E 4 E 5 E 6 E 7 E 8 E 9 E 10 P( Ei ) 1 / 20 1 / 20 1 / 20 1 / 20 1 / 20 1 / 20 1 / 5 1 / 5 1 / 5 1 / 10 Question: Calculate P ( A ) where A = {Ei, i ≥ 6 } . P ( A ) = P ( E 6) + P ( E 7) + P ( E 8) + P ( E 9) + P ( E 10) = 1 / 20 + 1 / 5 + 1 / 5 + 1 / 5 + 1 / 10 = 0 . 75 Varsha Varde
  • 35. Steps in calculating probabilities of events 1. Define the experiment 2. List all simple events 3. Assign probabilities to simple events 4. Determine the simple events that constitute the given event 5. Add up the simple events’ probabilities to obtain the probability of the given event Example Calculate the probability of observing one H in a toss of two fair coins. Solution. S = {HH,HT,TH, TT} A = {HT, TH} P ( A ) = 0 . 5 Varsha Varde
  • 36. Example. Example. Toss a fair coin 3 times. (i) List all the sample points in the sample space Solution: S = {HHH, · · ·TTT} (Complete this) (ii) Find the probability of observing exactly two heads and at most one head. Varsha Varde
  • 37. Probability Laws Complementation law: P ( A ) = 1 - P ( Ā ) Additive law: P ( A U B ) = P ( A ) + P ( B ) - P ( A ∩ B ) Moreover, if A and B are mutually exclusive, then P ( A ∩ B ) = 0 and P ( A U B ) = P ( A ) + P ( B ) Multiplicative law (Product rule) P ( A ∩ B ) = P ( A|B ) P ( B ) = P ( B|A ) P ( A ) Moreover, if A and B are independent P ( A ∩ B ) = P ( A ) P ( B ) Varsha Varde
  • 38. Example Let S = {E 1 , E 2 , . . ., E 6 } ; A = {E 1 , E 3 , E 5 } ; B = {E 1 , E 2 , E 3 } ; C = {E 2 , E 4 , E 6 } ; D = {E 6 } . Suppose that all elementary events are equally likely. (i) What does it mean that all elementary events are equally likely? (ii) Use the complementation rule to find P ( A c ). (iii) Find P ( A|B ) and P ( B|A ) (iv) Find P ( D ) and P ( D|C ) (v) Are A and B independent? Are C and D independent? (vi) Find P ( A ∩ B ) and P ( A U B ). Varsha Varde
  • 39. Law of total probability Let A, A c be complementary events and let B denote an arbitrary event. Then P(B) = P ( B ∩ A ) + P ( B ∩ A c ) , or P ( B ) = P ( B/A ) P ( A ) + P ( B/A c ) P ( A c ) . Varsha Varde
  • 40. Bayes’ Law Let A ,A c be complementary events and let B denote an arbitrary event. Then P (A |B)= P ( AB )/ P (B ) P (B /A ) P (A) P (A |B ) =- --------------------------------- P (B /A ) P (A) + P (B /A c ) P (A c ) Remarks. (i) The events of interest here are A , A c , (ii) P (A) and P (A c ) are called prior probabilities, (iii) P (A |B ) and P (A c |B ) are called posterior (revised) probabilities. (iv) Bayes’ Law is important in several fields of applications. Varsha Varde
  • 41. Bayesian Approach English mathematician Thomas Bayes (1702-61) set out his theory of probability It is being revived now 250 years later Step ahead from Subjective Prob Method A: Digestive disorder, B: Drinking Coke Bayes’ Rule: P(B|A) P(A) 0.65x0.3 P(A|B) = ------------------- = ----------- = 0.53 P(B) 0.37
  • 42. P(Ai) P(B/Ai) P(AiB) P(AiB)/P(B)= P(Ai/B) Prior Probabilities Conditional Probabilities Joint Probabilities Posterior Probabilities P(A1)=0.30 P(B/A1)=0.65 P(A1B)=0.195 P(A1/B)=.195/.37 =.527 P(A2)=0.70 P(B/A2)=0.25 P(A2B)=0.175 P(A2/B)=.175/.37=.473 P(B)=0.37
  • 43. Example . A laboratory blood test is 95 percent effective in detecting a certain disease when it is, in fact, present. However, the test also yields a “false positive” results for 1 percent of healthy persons tested. (That is, if a healthy person is tested, then, with probability 0.01, the test result will imply he or she has the disease.) If 0.5 percent of the population actually has the disease, what is the probability a person has the disease given that the test result is positive? Solution Let D be the event that the tested person has the disease and E the event that the test result is positive. The desired probability P ( D|E ) is obtained by P ( D/E ) = P ( D ∩ E )/ P ( E ) = P ( E/D ) P ( D )/ P ( E/D ) P ( D ) + P ( E/D c ) P ( D c ) =( . 95)( . 005)/( . 95)( . 005) + ( . 01)( . 995) =95/294 ≈0 . 323 . Thus only 32 percent of those persons whose test results are positive actually have the disease. Varsha Varde
  • 44. General Bayes’Theorom A1,A2,…..Ak are k mutually exclusive and exhaustive events with known prior probabilities P(A1),P(A2),….P(Ak) B is an event that follows or is caused by prior events A1,A2, …Ak with Conditional probabilities P(B/A1),P(B/A2),…P(B/Ak) which are known Bayes’ formula allows us to calculate posterior (revised) probabilities P(A1/B),P(A2/B),….P(Ak/B) P(Ai/B)=P(Ai)P(B/Ai)/{P(A1)P(B/A1)+…+P(Ak)P(B/Ak)}
  • 45. Counting Sample Points Is it always necessary to list all sample points in S ? Coin Tosses Coins sample-points Coins sample-points 1 2 2 4 3 8 4 16 5 32 6 64 10 1024 20 1,048,576 30 ≈ 10 9 40 ≈ 10 12 50 ≈ 10 15 60 ≈ 10 19 Note that 2 30 ≈ 10 9 = one billion, 2 40 ≈ 10 12 = one thousand billion, 2 50 ≈10 15 =one trillion. RECALL: P ( A ) = n A /n , so for some applications we need to find n, nA where n and n A are the number of points in S and A respectively. Varsha Varde
  • 46. Basic principle of counting: mn rule Suppose that two experiments are to be performed. Then if experiment 1 can result in any one of m possible outcomes and if, for each outcome of experiment 1, there are n possible outcomes of experiment 2, then together there are mn possible outcomes of the two experiments. Varsha Varde
  • 47. Examples. (i) Toss two coins: mn = 2 × 2 = 4 (ii) Throw two dice: mn = 6 × 6 = 36 (iii) A small community consists of 10 men, each of whom has 3 sons. If one man and one of his sons are to be chosen as father and son of the year, how many different choices are possible? Solution : Let the choice of the man as the outcome of the first experiment and the subsequent choice of one of his sons as the outcome of the second experiment, we see,from the basic principle, that there are 10 × 3 = 30 possible choices. Varsha Varde
  • 48. Generalized basic principle of counting If r experiments that are to be performed are such that the first one may result in any of n 1 possible outcomes, and if for each of these n 1 possible outcomes there are n 2 possible outcomes of the second experiment, and if for each of the possible outcomes of the first two experiments there are n 3 possible outcomes of the third experiment, and so on, . . . , then there are a total of n 1 x n 2 · · xn r possible outcomes of the r experiments. Varsha Varde
  • 49. Examples (i) There are 5 routes available between A and B ; 4 between B and C ; and 7 between C and D . What is the total number of available routes between A and D ? Solution: The total number of available routes is mnt = 5 . 4 . 7 = 140. (ii) A college planning committee consists of 3 freshmen, 4 parttimers, 5 juniors and 2 seniors. A subcommittee of 4, consisting of 1 individual from each class, is to be chosen. How many different subcommittees are possible? Solution: It follows from the generalized principle of counting that there are 3 · 4 · 5 · 2 = 120 possible subcommittees. Varsha Varde
  • 50. Examples (iii) How many different 7 - place license plates are possible if the first 3 places are to be occupied by letters and the final 4 by numbers? Solution: It follows from the generalized principle of counting that there are 26 · 26 · 26 · 10 · 10 · 10 · 10 = 175 , 760 , 000 possible license plates. (iv) In (iii), how many license plates would be possible if repetition among letters or numbers were prohibited? Solution: In this case there would be 26 · 25 · 24 · 10 · 9 · 8 · 7 = 78 , 624 , 000 possible license plates. Varsha Varde
  • 51. Permutations: (Ordered arrangements ) Permutations: (Ordered arrangements) The number of ways of ordering n distinct objects taken r at a time (order is important) is given by n ! /( n - r )! = n ( n - 1)( n - 2) · · · ( n - r + 1) Examples (i) In how many ways can you arrange the letters a , b and c . List all arrangements. Answer: There are 3! = 6 arrangements or permutations. (ii) A box contains 10 balls. Balls are selected without replacement one at a time. In how many different ways can you select 3 balls? Solution: Note that n = 10 , r = 3. Number of different ways is = 10! /7! = 10 · 9 · 8= 720, Varsha Varde
  • 52. Combinations Combinations For r ≤ n , we define nCr =n ! / ( n - r )! r ! and say that n and r represents the number of possible combinations of n objects taken r at a time (with no regard to order). Examples (i) A committee of 3 is to be formed from a group of 20 people. How many different committees are possible? Solution: There are 20C3 = 20! /3!17! = 20 . 19 . 18/3 . 2 . 1 = 1140 possible committees. (ii) From a group of 5 men and 7 women, how many different committees consisting of 2 men and 3 women can be formed? Solution: 5C2 x 27C3 = 350 possible committees. Varsha Varde
  • 53. Random Sampling Definition. A sample of size n is said to be a random sample if the n elements are selected in such a way that every possible combination of n elements has an equal probability of being selected .In this case the sampling process is called simple random sampling . Remarks. (i) If n is large, we say the random sample provides an honest representation of the population. (ii) For finite populations the number of possible samples of size n is N C n For instance the number of possible samples when N = 28 and n = 4 is 28 C 4 =20475 Tables of random numbers may be used to select random samples. Varsha Varde
  • 54. Frequency Distribution: Number of Sales Orders Booked by 50 Sales Execs April 2006 Varsha Varde Number of Orders Number of SEs 00 – 04 14 05 - 09 19 10 – 14 07 15 – 19 04 20 – 24 02 25 – 29 01 30 – 34 02 35 – 39 00 40 – 44 01 TOTAL 50
  • 55. Probability Distribution Varsha Varde Number of Orders Number of SEs Probability 00 – 04 14 0.28 05 - 09 19 0.38 10 – 14 07 0.14 15 – 19 04 0.08 20 – 24 02 0.04 25 – 29 01 0.02 30 – 34 02 0.04 35 – 39 00 0.00 40 – 44 01 0.02 TOTAL 50 1.00
  • 56. Standard Discrete Prob Distns Binomial Distribution: When a Situation can have Only Two Possible Outcomes e.g. PASS or FAIL, ACCEPT or REJECT. This distribution gives probability of an outcome (say, ACCEPT) occurring exactly m times out of n trials of the situation, i.e. probability of 10 ACCEPTANCES out of 15 items tested. Varsha Varde
  • 57. Standard Discrete Prob Distns Poisson Distribution: When a Situation can have Only Two Possible Outcomes, & When the Total Number of Observations is Large (>20), Unknown or Innumerable. This distribution gives the probability of an outcome (say, ACCEPT) occurring m times, i.e. probability of say 150 ACCEPTANCES. Varsha Varde
  • 58. Standard Continuous Prob Distn Normal Distribution: Useful & Important Several Variables Follow Normal Distn or a Pattern Nearing It. (Weights, Heights) Skewed Distns Assume This Shape After Getting Rid of Outliers For Large No. of Observations, Discrete Distributions Tend to Follow Normal Distn It is Amenable to Mathematical Processes Varsha Varde
  • 59. Features of Normal Distribution Symmetrical and Bell Shaped Mean at the Centre of the Distribution Mean = mode = Median Probabilities Cluster Around the Middle and Taper Off Gradually on Both Sides Very Few Values Beyond Three Times the Standard Deviation from the Mean Varsha Varde
  • 60. Probabilities in Normal Distn 68 % of Values Lie in the Span of Mean Plus / Minus One Standard Deviation. 95 % of Values Lie in the Span of Mean Plus / Minus Two Standard Deviation. 99 % of Values Lie in the Span of Mean Plus / Minus Three Standard Deviation. Standard Normal Distn Tables Readily Show Prob of Every Value. Use Them to Draw Inferences. Varsha Varde