Introduction  Probability Theory was first used to solve problems in gambling  Blaise Pascal (1623-1662) - laid the foundation for the Theory of Probability.

Slides:



Advertisements
Similar presentations
Probability II (2 nd Lesson) By Samuel Chukwuemeka (Samdom For Peace)
Advertisements

Probability.
Chapter 4 Probability and Probability Distributions
Mathematics.
Section 2 Union, Intersection, and Complement of Events, Odds
How likely something is to happen.
MAT 103 Probability In this chapter, we will study the topic of probability which is used in many different areas including insurance, science, marketing,
Probability Sample Space Diagrams.
Probability of two events Example A coin is tossed twice. Draw a probability sample space diagram showing all the possible outcomes. What is the probability.
Copyright © Cengage Learning. All rights reserved. 8.6 Probability.
Mathematics.
Business Statistics: A Decision-Making Approach, 7e © 2008 Prentice-Hall, Inc. Chap 4-1 Business Statistics: A Decision-Making Approach 7 th Edition Chapter.
Discrete Structures Chapter 4 Counting and Probability Nurul Amelina Nasharuddin Multimedia Department.
Math 310 Section 7.2 Probability. Succession of Events So far, our discussion of events have been in terms of a single stage scenario. We might be looking.
Applicable Mathematics “Probability”
Special Topics. Definitions Random (not haphazard): A phenomenon or trial is said to be random if individual outcomes are uncertain but the long-term.
5.1 Basic Probability Ideas
Lecture Slides Elementary Statistics Twelfth Edition
Chapter 3 Section 3.2 Basic Terms of Probability.
College Algebra Fifth Edition James Stewart Lothar Redlin Saleem Watson.
College Algebra Sixth Edition James Stewart Lothar Redlin Saleem Watson.
Warm-Up 1. What is Benford’s Law?
Chapter 1:Independent and Dependent Events
 History and Relevance of probability theory Probability theory began with the study of game of chance that were related to gambling, like throwing a.
Topic 4A: Independent and Dependent Events Using the Product Rule
Probability The calculated likelihood that a given event will occur
Copyright © Cengage Learning. All rights reserved. 8.6 Probability.
Rules of Probability. Recall: Axioms of Probability 1. P[E] ≥ P[S] = 1 3. Property 3 is called the additive rule for probability if E i ∩ E j =
Section 2 Union, Intersection, and Complement of Events, Odds
Sixth lecture Concepts of Probabilities. Random Experiment Can be repeated (theoretically) an infinite number of times Has a well-defined set of possible.
© 2010 Pearson Education, Inc. All rights reserved Chapter 9 9 Probability.
Probability A quantitative measure of uncertainty A quantitative measure of uncertainty A measure of degree of belief in a particular statement or problem.
Math 30-2 Probability & Odds. Acceptable Standards (50-79%)  The student can express odds for or odds against as a probability determine the probability.
Mathematics Probability: Events Science and Mathematics Education Research Group Supported by UBC Teaching and Learning Enhancement Fund Department.
Are these independent or dependent events?
Warm Up: Quick Write Which is more likely, flipping exactly 3 heads in 10 coin flips or flipping exactly 4 heads in 5 coin flips ?
Probability 9.8. Copyright © by Houghton Mifflin Company, Inc. All rights reserved. 2 Definition: Experiment Any activity with an unpredictable results.
Chapter 7 Sets & Probability Section 7.3 Introduction to Probability.
Probability is the study of the chance of events happening. A probability can be expressed as a fraction, decimal, or a percent. Experimental Probability.
PROBABILITY 1. Basic Terminology 2 Probability 3  Probability is the numerical measure of the likelihood that an event will occur  The probability.
Chapter 10 PROBABILITY. Probability Terminology  Experiment: take a measurement Like flipping a coin  Outcome: one possible result of an experiment.
1 What Is Probability?. 2 To discuss probability, let’s begin by defining some terms. An experiment is a process, such as tossing a coin, that gives definite.
Chapter 22 E. Outcomes of Different Events When the outcome of one event affects the outcome of a second event, we say that the events are dependent.
Essential Ideas for The Nature of Probability
An Introduction to Probability Theory
PROBABILITY Probability Concepts
What Is Probability?.
Copyright © 2016, 2013, and 2010, Pearson Education, Inc.
Subtopic : 10.1 Events and Probability
PROBABILITY AND PROBABILITY RULES
Sequences, Series, and Probability
PROBABILITY.
Copyright © 2016, 2013, and 2010, Pearson Education, Inc.
Basic Probability CCM2 Unit 6: Probability.
13.4 – Compound Probability
MUTUALLY EXCLUSIVE EVENTS
Probability II (2nd Lesson)
MODULE 15 - PROBABILITY.
Applicable Mathematics “Probability”
Chapter 3.1 Probability Students will learn several ways to model situations involving probability, such as tree diagrams and area models. They will.
Basic Probability CCM2 Unit 6: Probability.
Unit 1: Probability and Statistics
Probability.
PROBABILITY.
Statistical Inference for Managers
Combination and Permutations Quiz!
Digital Lesson Probability.
Probability of two events
Presentation transcript:

Introduction  Probability Theory was first used to solve problems in gambling  Blaise Pascal ( ) - laid the foundation for the Theory of Probability  Now this theory is used in business, Science and industry  Next we define-Experiment and Event

Simple Probability  An Experiment is an operation or a process with a result or an outcome which is determined by, or depends on, Chance.  Examples: (1) Tossing a coin.  (2) Tossing a die  An Event is the outcome of an experiment  Example: Tossing a HEAD, getting a SIX are events.

Definition of Probability  In an experiment resulting in n equally likely outcomes, if m of these outcomes are favour the occurrence of an event E Then the Probability of event E happening, written as P(E), is defined as No. of outcomes favourable to the occurance of E Total number of equally likely outcomes P(E) = = m n

A two-digit number is written down at random. Find the probability that the number will be (i) smaller than 20 (ii) even (iii) a multiple of 5 Example 1:

How many two digit numbers are there? Is it 100 or 90 or 91 The correct answer is 90 Now we will find the probabilities. How many numbers are less than 20 ? How many are even numbers ? How many are multiples of 5 ? Example 1:

Probability The possible outcomes is called the Sample space (S) Hence, the probability of an Event E, P(E) = n(E) n(S) If P(E) = 0, then the event cannot possibly occur If P(E) = 1, then the event will certainly occur. In the Probability Theory, an event is any subset of a Sample Space

Possible outcomes of the following experiments 1. Tossing a Coin: S = [ H, T ] 2. Tossing a die : S = [ 1, 2, 3, 4, 5, 6 ] 3. Tossing two coins: S = [ HH, HT, TH, TT ] 4. Tossing two dice : S = [ (1,1),(1,2) ….. (6,5),(6,6)] We can draw sample space for the above experiments

Example 2 : Two dice are thrown together. Find the probability that the sum of the resulting numbers is (a) odd (b) even (c) a prime number (d) a multiple of 4 (e) at least 7 First we draw the sample space, then using that we can find the probability.

All the possible sums are displayed in the above diagram This is called the sample space of this experiment + First die Second die

We define the following: A: the sum is odd B: the sum is even C: the sum is a prime number D: the sum is a multiple of 4 E: the sum is at least 7 Total possible outcomes are 36. Hence n(S) = 36 n(A) = 18 A and B are complementary events. n(B ) = 36 - n(A) n(C) = 15 n(D) = 9 n(E) = 21 Now, it is very easy to calculate the probabilities. Example 2 :

Answers: Hence P(E’) = 1 - P(E), where E’ is the complement of E

Box A contains 4 pieces of paper numbered 1,2,3,4 Box B contains 2 pieces of paper numbered 1,2. One piece of paper is removed at random from each box The sample space is as follows Box A Box B Another way to illustrate the possible outcome Example 3 :

TREE DIAGRAM Box A Box B Outcome (1,1) (1,2) (2,1) (2,2) (3,1) (3,2) (4,1) (4,2) Hence n (S) = 8

A coin is tossed three times. Display all the outcomes using a tree diagram find the probability of getting (i) three heads (ii) exactly two heads (iii) at least two heads T H H [T,H,H] T H [H,T,H] H H H[H,H,H] T [H,H,T] T [H,T,T] T[T,H,T] T H[T,T,H] T [T,T,T] n (S) = 8 Now it is very easy to find the probabilities.

Adding Probabilities - Mutually Exclusive Events Two events A and B are said to be Mutually Exclusive(ME) if the occurance of one event will not affect the occurance of the other event. Set theoritically Hence these two events A and B cannot occur simultaneously. If you want to calculate the probability of A or B, then P(A or B )= P(AUB) = P(A) + P(B) Example: A - getting an odd number B - getting an even number, while tossing a die once Also, P(AUBUC) = P(A) + P(B) + P(C)

The probabilities of three teams L, M and N, winning a football competition are 1/4, 1/8 and 1/10 respectively. Calculate the probability that (i) either L or M wins, (ii) neither L nor N wins. Example 4 :

 We assume that only one team can win, so the events are mutually exclusive. (i) P( L or M wins) = P(Lwins) + P(M wins) = 1/4 + 1/8 = 3/8 ( ii) P(L or N wins) = 1/4 + 1/10 = 7/20 P(neither L nor N wins ) = 1 - P(L or N wins) = 1 - 7/20 = 13/20 Note: “Branches” of a “Probability Tree” represent outcomes which are mutually exclusive Example 4 :

Example 5 Consider the experiment, Tossing a die once let A - getting an odd number [ 1,3,5] B - getting a prime number [2,3,5] Here, A intersection B is not empty P(A) = 3/6 = 1/2, P(B) = 3/6 = 1/2 A B = [3,5], P(A B) = 2/6 = 1/3 P(AUB) = P(A) + P(B) - P(A B) = 3/6 + 3/6 - 2/6 = 4/6 = 2/3

TREE DIAGRAM Box A Box B Outcomes (1,1) (1,2) (2,1) (2,2) (3,1) (3,2) (4,1) (4,2) Hence n (S) = 8

Now, we go back to the same example If we replace the numbers 1,2,3.. by the corresponding probabilities, we get Box A contains 4 pieces of paper numbered 1,2,3,4 Box B contains 2 pieces of paper numbered 1,2. One piece of paper is removed at random from each box

TREE DIAGRAM Box A Box B Probability P(1,1)= 1/8 1 1 P(3,2)=1/8 P(2,1)=1/8 P(3,1)=1/8 P(2,2)=1/8 P(4,2)=1/8 P(1,2)=1/8 P(4,1)=1/ To find P(1,2), we multiply along the branches

Multiplying Probabilities - Probability Tree The probability that two events, A and B, will both occur, written as P(A occurs and B occurs) or simply P(A and B), is given by P(A and B ) = P(A) x P(B) Note: we have to multiply the probabilities along the branch,

Consider the following example: Suppose in a bag, there are 5 blue and 3 yellow marbles. A marble is drawn at random from the bag, the colour in noted and the marble is replaced. A second marble is then drawn. Y B Y Y B B 1 st draw 2 st draw This shows the Probability Tree Since the first marble drawn is replaced, the total number of marbles in the bag remains the same for the second draw.

Hence, we can say that the results of the two draws are independent and the two outcomes from each of the two draws are independent events. If the marble is not replaced, then the probability of selecting a marble from the second draw is affected. This kind of events are called dependent events Probability Tree diagram for dependent events B Y Y Y B B

A garden has three flower beds. The first bed has 20 daffodils and 20 tulips, the second has 30 daffodils and 10 tulips and the third has 10 daffodils and 20 tulips. A flower bed is to be chosen by throwing a die which has its six faces numbered 1,1,1,2,2,3. If the die shows a ‘1’, the first flower bed is chosen, if it shows a ‘2’ the second bed is chosen and so on. A flower is then to be picked at random from the chosen bed. Copy and complete the Probability Tree:

Bed 1 Bed 2 Bed 3 daffodil Tulip ( ) Sample Space S = [ 1,1,1,2,2,3] [20] [30] [10] [20] [40] [30] Prob. of picking a daffodil =

SUMMARY  In an experiment which results in n equally likely outcomes, if m of these outcomes favour the occurrence of an event E, then probability of the event E is given by P(E) = m / n, also 0  P(E)  1  The Sample Space refers to the set of all the possible outcomes of an experiment.  An event is any subset of the sample space

 If A and B are Mutually Exclusive, then P(A or B) = P(A) + P(B)  If A and B are independent, then P(A and B) = P(A) x P(B) SUMMARY