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Probability  Ms. Aarti Kulachi Hansraj Model School Class X
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What Probability is??????…… Probability is the measure  of how likely  an event is. "the ratio of the number of favourable  cases to the number of all the cases"
History of the concept     Pierre de Fermat  ( 1601 – 1665) People started to use the principles of probability  many years ago. It is a well-known fact that the  elements of probability were applied for census of population in the ancient countries such as  China, India and Egypt. The same methods  were used for estimation of the overall strength  of enemy army. Blaise Pascal  (1623-1662)
Laws of  Probability ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
For any Event E , 0 < P ( E ) < 1 P(E ) = Total Favourable Outcomes Total Possible Outcomes
For a Sure Event E , P(E) = 1 Example: Tossing a dart For example,   Imagine throwing a dart at a square, and imagine that this square is the only thing in the universe.  There is physically nowhere else for the dart to land. Then, the event that &quot;the dart hits the square&quot; is a sure event. No other alternative is imaginable.
For a Impossible Event E , P(E) = 0 Example: Tossing a die For example,   Imagine  Tossing a die. What is the probability of getting a number greater than 6? On a die there are a total of six outcomes {1,2,3,4,5,6} so we can’t have a number greater than 6. Such a event is called an impossible event.
Game of Dice
Sample Space -  ( total outcomes ) when a die is thrown 1 2 3 6 5 4 Total Possible outcomes = 6 1  = 6
Lets take some examples Example : If a person rolls a dice, what is the probability of getting a five ? Sample Space 1 2 3 4 5 6 Favourable Outcomes 5 P ( Getting 5 )  = 1/6
Lets take another Example Example : If a person rolls a dice, what is the probability of getting a prime number? Sample Space Favourable Outcomes 2 P ( Getting a prime number )  = 3/6 3 5
Sample Space - ( total outcomes ) when 2 dice is thrown simultaneously Total Possible Outcomes =  6 2  =  36
Example :If a person rolls two dice, what is the probability  of getting a five as the sum of the two dice?   Sum Total of 5 3 2 1 4 2 3 4 1 , , P ( Getting a sum total of 5 )  = 4/36 Favourable Outcomes  = 4 Total Outcomes  = 36 Lets take another example
Game of  Cards & Coins
CARDS Total Outcomes : 52 26 Red Cards 26 Black Cards
  CARDS (4 Suits) Spade Club Diamond Heart (A, 2, 3, 4, 5, 6, 7, 8, 9, 10, J, Q, K)
Lets Take an example to understand the  Game of Cards Example 1. Find the probability of drawing a diamond from a deck of cards. Solution. There are a total of 13 diamonds in the  deck (A, 2, 3, 4, 5, 6, 7, 8, 9, 10, J, Q, K) and a total of 52 cards in the deck.  That leaves us with a probability of: 13/52 = ¼ , ¼ makes sense, since there are a total of 4 suits in the deck of cards . P(drawing a diamond from a deck of cards) = 1/4
Lets Take another example Example 2. Find the probability of drawing a queen of hearts from a deck of cards. Solution. In this case, there is only one queen of hearts in the deck, out of a total of 52  cards.  That leaves us with a probability of 1/52. P(drawing a queen of hearts from a deck of cards) = 1/52
Example 3. Find the probability of drawing a king of spade  from a deck of cards. Solution. In this case, there is only one king of spade in the deck, out of a total of 52 cards.  That leaves us with a probability of 1/52. P(drawing a king of spade from a deck of cards) = 1/52
  Total Outcomes - A Coin is tossed Head Tail Total Outcomes  = 2 1  = 2
  Total Outcomes  = 2 1  = 2 Example : What is the probability of getting a head when  a coin is tossed?  Total favourable outcomes  = 1 Head Tail P(getting a head) = 1/2
  Total Outcomes - Two Coins are tossed Total Outcomes  = 2 2  = 4 {HH, HT, TH, TT}
  {HH, HT, TH, TT} Sample Space =  Example : Two coins are tossed simultaneously .  What is the probability of getting at least one head? Total Favourable Outcomes = {HH} P ( Getting at most one head ) = 1/4
  {HH, HT, TH, TT} Sample Space =  Example : Two coins are tossed simultaneously .  What is the probability of getting at most one head? Total Favourable Outcomes = {TT, HT, TH} P ( Getting at most one head ) = 3/4
Applications of probability theory to everyday life Two major applications of probability theory in everyday life are in risk assessment and in trade on commodity markets Governments typically apply probability methods in  Environmental regulation where it is called “pathway analysis&quot;,  significant application of probability theory in everyday  life is reliabilty Many consumer products, such as automobiles and consumer electronics, utilize reliability theory in the design  of the product in order to reduce the probability of failure.
Resources : Text Book NCERT Mathematics X R.D.Sharma Inernet : Google Search  Yahoo search
THANK YOU!!

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Probability By Ms Aarti

  • 1. Probability Ms. Aarti Kulachi Hansraj Model School Class X
  • 2.
  • 3.
  • 4. What Probability is??????…… Probability is the measure of how likely an event is. &quot;the ratio of the number of favourable cases to the number of all the cases&quot;
  • 5. History of the concept Pierre de Fermat ( 1601 – 1665) People started to use the principles of probability many years ago. It is a well-known fact that the elements of probability were applied for census of population in the ancient countries such as China, India and Egypt. The same methods were used for estimation of the overall strength of enemy army. Blaise Pascal (1623-1662)
  • 6.
  • 7. For any Event E , 0 < P ( E ) < 1 P(E ) = Total Favourable Outcomes Total Possible Outcomes
  • 8. For a Sure Event E , P(E) = 1 Example: Tossing a dart For example, Imagine throwing a dart at a square, and imagine that this square is the only thing in the universe. There is physically nowhere else for the dart to land. Then, the event that &quot;the dart hits the square&quot; is a sure event. No other alternative is imaginable.
  • 9. For a Impossible Event E , P(E) = 0 Example: Tossing a die For example, Imagine Tossing a die. What is the probability of getting a number greater than 6? On a die there are a total of six outcomes {1,2,3,4,5,6} so we can’t have a number greater than 6. Such a event is called an impossible event.
  • 11. Sample Space - ( total outcomes ) when a die is thrown 1 2 3 6 5 4 Total Possible outcomes = 6 1 = 6
  • 12. Lets take some examples Example : If a person rolls a dice, what is the probability of getting a five ? Sample Space 1 2 3 4 5 6 Favourable Outcomes 5 P ( Getting 5 ) = 1/6
  • 13. Lets take another Example Example : If a person rolls a dice, what is the probability of getting a prime number? Sample Space Favourable Outcomes 2 P ( Getting a prime number ) = 3/6 3 5
  • 14. Sample Space - ( total outcomes ) when 2 dice is thrown simultaneously Total Possible Outcomes = 6 2 = 36
  • 15. Example :If a person rolls two dice, what is the probability of getting a five as the sum of the two dice? Sum Total of 5 3 2 1 4 2 3 4 1 , , P ( Getting a sum total of 5 ) = 4/36 Favourable Outcomes = 4 Total Outcomes = 36 Lets take another example
  • 16. Game of Cards & Coins
  • 17. CARDS Total Outcomes : 52 26 Red Cards 26 Black Cards
  • 18. CARDS (4 Suits) Spade Club Diamond Heart (A, 2, 3, 4, 5, 6, 7, 8, 9, 10, J, Q, K)
  • 19. Lets Take an example to understand the Game of Cards Example 1. Find the probability of drawing a diamond from a deck of cards. Solution. There are a total of 13 diamonds in the deck (A, 2, 3, 4, 5, 6, 7, 8, 9, 10, J, Q, K) and a total of 52 cards in the deck. That leaves us with a probability of: 13/52 = ¼ , ¼ makes sense, since there are a total of 4 suits in the deck of cards . P(drawing a diamond from a deck of cards) = 1/4
  • 20. Lets Take another example Example 2. Find the probability of drawing a queen of hearts from a deck of cards. Solution. In this case, there is only one queen of hearts in the deck, out of a total of 52 cards. That leaves us with a probability of 1/52. P(drawing a queen of hearts from a deck of cards) = 1/52
  • 21. Example 3. Find the probability of drawing a king of spade from a deck of cards. Solution. In this case, there is only one king of spade in the deck, out of a total of 52 cards. That leaves us with a probability of 1/52. P(drawing a king of spade from a deck of cards) = 1/52
  • 22. Total Outcomes - A Coin is tossed Head Tail Total Outcomes = 2 1 = 2
  • 23. Total Outcomes = 2 1 = 2 Example : What is the probability of getting a head when a coin is tossed? Total favourable outcomes = 1 Head Tail P(getting a head) = 1/2
  • 24. Total Outcomes - Two Coins are tossed Total Outcomes = 2 2 = 4 {HH, HT, TH, TT}
  • 25. {HH, HT, TH, TT} Sample Space = Example : Two coins are tossed simultaneously . What is the probability of getting at least one head? Total Favourable Outcomes = {HH} P ( Getting at most one head ) = 1/4
  • 26. {HH, HT, TH, TT} Sample Space = Example : Two coins are tossed simultaneously . What is the probability of getting at most one head? Total Favourable Outcomes = {TT, HT, TH} P ( Getting at most one head ) = 3/4
  • 27. Applications of probability theory to everyday life Two major applications of probability theory in everyday life are in risk assessment and in trade on commodity markets Governments typically apply probability methods in Environmental regulation where it is called “pathway analysis&quot;, significant application of probability theory in everyday life is reliabilty Many consumer products, such as automobiles and consumer electronics, utilize reliability theory in the design of the product in order to reduce the probability of failure.
  • 28. Resources : Text Book NCERT Mathematics X R.D.Sharma Inernet : Google Search Yahoo search