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Randomness and Probability. Statistics Ch. 6. What is probability?. A probability is a numerical measure of the likelihood of the event First, think of some event where the outcome is uncertain. Examples --roll of a die, or the amount of rain that we get tomorrow.
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Randomness and Probability Statistics Ch. 6
What is probability? • A probability is a numerical measure of the likelihood of the event • First, think of some event where the outcome is uncertain. • Examples --roll of a die, or the amount of rain that we get tomorrow. • In each case, we don't know for sure what will happen.
What is Probability • The probability of an event is its long-run relative frequency • Empirical Probability ( Experimental Probability): For any event A, P( A)= # times A occurs total # of trials In the long run. • Law of Large number • Toss a coin 50 times record the number of heads ( we are experimenting)
More on Probability • Theoretical Probability: P(A): # outcomes in A # of possible outcomes • What is the Theoretical Probability of picking Heads with a toss of a fail coin? P (H)= How many heads on a coin How many total possible outcomes • P(H)=1/2 • The sample space is S={H,T}
Calculator Simulation • Look at calculator for simulation
Another example • Toss 2 dice at the same time, record their sum. Repeat this process 50 times. • What is the experimental probability that when you toss two dice that their sum will be 7? • What is the theoretical probability that your sum will be 7? Show the sample spaces
Tossing dice continue • What is the theoretical probability that your sum will be 7? • P(7)=6/36 =1/6
Tree Diagram • If a coin is tossed and the number cube is rolled simultaneously then the probability of getting head on the coin and the number 4 on the number cube is
Tree Diagram Cont. • The probability is 1/12. • Using the multiplication counting principle _______ times _________ # of choices # of choices for tossing a die picking a coin This gives us the total number of outcomes.
Another tree diagram • If two coins are tossed simultaneously then the possible outcomes are 4. The possible outcomes are HH, HT, TH, TT. The tree diagram below shows the possible outcomes.
Laws of Probability • Probability is between 0 and 1 • Probability =0 ( if you know it does not occur) • Probability =1 ( if you know it does occur) • The set of all possible outcomes of a trial must have a probability of 1 • The probability of an event occurring is 1 minus the probability that it doesn’t occur. P(A)=1-P(Ac)
Complement of a Event A • Example: The P(A)= .3 , then the P (Ac )=? • P (Ac )=.7 • Another example P (Bc )= .65, then P ( B)=? • P(B)=.35 • Notation Ac , ~A, A`, A with line above it
Addition rules of probability • Two events A and B are disjoint ( mutually exclusive) if they have no outcomes in common. P(A or B)= P (A) + P (B)
Example • Suppose you roll a die • Event A= rolling a 4 on a die Event B = rolling a 5 on a die Are Events A and B disjointed? • Yes- these events can not happen at the same time • What is the probability of rolling a 4 or 5? • P(4 or 5)= 1/6 + 1/6= 2/6=1/3 • What is the probability of not rolling a 3? • P(~3)= 5/6
Another Example • What is the probability of drawing an ace or a king from a deck of cards? • P(Ace or King) 4/52 + 4/52= 8/52=2/13
Not Disjointed Events • Not disjointed ( Have something in common) P(A or B)= P (A) + P ( B) – P ( A and B) We have to subtract what they have in common. If we do not we will count it twice. • Example: When picking a card from a standard deck, what is the probability that you pick a king or a spade? P(k or s)=P(k)+p(s)-P(k and s) • 4/52+ 13/52-1/52=16/52 =4/13
Applying the Addition Rule • When you get to the light at College and Main, it’s either red , green, or yellow. We know the P(green)=.35 and the P( yellow) =.04. What is the probability the light is red? • P (G or Y)= .35 + .04=.39 • Then the probability it is red is??? • 1-.39=.61 because the sum of the probabilities must equal 1
One more example • The American Red Cross says that about 45% of the U.S. population has Type O blood, 40% Type A, 11% Type B, and the rest Type AB. • Someone volunteers to give blood. What is the probability that this donor • A) has type AB blood • .04 • B) has type A or type B blood • .51 • C) is not type o? • .55
Multiplication Rule • For Independent events A and B, the probability that both A and B occur is the product of the probabilities of the two events • P(A and B)=P ( A ) times P(B) provide that A and B are independent. • Two events, A and B, are independent if the fact that A occurs does not affect the probability of B occurring.
Example of Independent Events • Landing on heads after tossing a coin AND rolling a 5 on a single 6-sided die. • Choosing a marble from a jar AND landing on heads after tossing a coin. • Choosing a 3 from a deck of cards, replacing it, AND then choosing an ace as the second card. • Rolling a 4 on a single 6-sided die, AND then rolling a 1 on a second roll of the die
Example of Multiplication Rule of Independent Events • A coin is tossed and a single 6-sided die is rolled. Find the probability of landing on the head side of the coin and rolling a 3 on the die • P(H and 3)= P(H) times P(3) ½ x 1/6= 1/12 • A card is chosen at random from a deck of 52 cards. It is then replaced and a second card is chosen. What is the probability of choosing a jack and an eight? • P(J and 8)= P ( J) ∙ P (8) 4/52 ∙ 4/52= 16/ 2704=1/169
Example of Multiplication Rule of Independent Events • A jar contains 3 red, 5 green, 2 blue and 6 yellow marbles. A marble is chosen at random from the jar. After replacing it, a second marble is chosen. What is the probability of choosing a green and a yellow marble? • P (G and Y)= P (G) ∙ P (Y) 5/16 ∙6/16=15/128
Another Example • We have determined that the probability that we encounter a green light at the corner of College and Main is .35, a yellow light 0.04, and a red light .61. Let’s think about your morning commute in the week ahead. What is the probability you find the light red both Monday and Tuesday? • .3761 • What is the probability you do not encounter a red light until Wednesday? • .1521
Slot Machine • A slot machine has three wheels that spin independently. Each has 10 equally likely symbols: 4 bars, 3 lemons, 2 cherries, and a bell. If you play, what is the probability that • You get 3 lemons? • 27/1000 or .027 • You get 3 bells (the jackpot)? • 1/1000 or .001
Slot Machine • A slot machine has three wheels that spin independently. Each has 10 equally likely symbols: 4 bars, 3 lemons, 2 cherries, and a bell. If you play, what is the probability that • You get no bells? • .729 or 729/1000 • You get at least one bar ( an automatic loser)? • 1- P(no bars)=1-(.60)(.60)(.60)= .784