1 / 31

CS322

Week 11 - Wednesday. CS322. Last time. What did we talk about last time? Exam 2 post-mortem Combinations. Questions?. Logical warmup. This is a puzzle we should have done with sequences Consider the following sequence, which should be read from left to right, starting at the top row 1

elani
Download Presentation

CS322

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Week 11 - Wednesday CS322

  2. Last time • What did we talk about last time? • Exam 2 post-mortem • Combinations

  3. Questions?

  4. Logical warmup • This is a puzzle we should have done with sequences • Consider the following sequence, which should be read from left to right, starting at the top row 1 1 1 2 1 1 2 1 1 1 1 1 2 2 1 • What are the next two rows in the sequence?

  5. Back to Combinations

  6. Combinations example • How many ways are there to choose 5 people out of a group of 12? • What if two people don't get along? How many 5 person teams can you make from a group of 12 if those two people cannot both be on the team?

  7. Poker examples • How many five-card poker hands contain two pairs? • If a five-card hand is dealt at random from an ordinary deck of cards, what is the probability that the hand contains two pairs?

  8. r-combinations with repetitions • What if you want to take r things out of a set of n things, but you are allowed to have repetitions? • Think of it as putting r things in n categories • Example: n = 5, r = 4 • We could represent this as x||xx|x| • That's an rx's and n – 1 |'s

  9. r-combinations with repetitions • So, we can think of taking an r-combination with repetitions as choosing r items in a string that is r + n – 1 long and marking those as x's • Consequently, the number of r-combinations with repetitions is

  10. Example • Let's say you grab a handful of 10 Starbursts • Original Starbursts come in • Cherry • Lemon • Strawberry • Orange • How many different handfuls are possible? • How many possible handfuls will contain at least 3 cherry?

  11. Handy dandy guide to counting • This is a quick reminder of all the different ways you can count things:

  12. Bionomial Theorem and Pascal's Triangle Student Lecture

  13. Binomial Matters

  14. Pascal's Triangle • Hopefully, you are all familiar with Pascal's Triangle, the beginning of which is: • If we number rows and columns starting at 0, note that the value of row n, column r is exactly

  15. Pascal's Formula • Pascal's Triangle works because of Pascal's Formula: • We can easily show its truth:

  16. Binomial Theorem • a + b is called a binomial • Using combinations (or Pascal's Triangle) it is easy to compute (a + b)n • We could prove this by induction, but you probably don't care

  17. Binomial Example • Compute (1 – x)6 using the binomial theorem

  18. More on Probability

  19. Probability axioms • Let A and B be events in the sample space S • 0 ≤ P(A) ≤ 1 • P() = 0 and P(S) = 1 • If A  B = , then P(A  B) = P(A) + P(B) • It is clear then that P(Ac) = 1 – P(A) • More generally, P(A  B) = P(A) + P(B) – P(A  B) • All of these axioms can be derived from set theory and the definition of probability

  20. Union probability example • What is the probability that a card drawn randomly from an Anglo-American 52 card deck is a face card (jack, queen, or king) or is red (hearts or diamonds)? • Hint: • Compute the probability that it is a face card • Compute the probability that it is red • Compute the probability that it is both

  21. Expected value • Expected value is one of the most important concepts in probability, especially if you want to gamble • The expected value is simply the sum of all events, weighted by their probabilities • If you have n outcomes with real number values a1, a2, a3, … an, each of which has probability p1, p2, p3, … pn, then the expected value is:

  22. Expected value: Roulette • A normal American roulette wheel has 38 numbers: 1 through 36, 0, and 00 • 18 numbers are red, 18 numbers are black, and 0 and 00 are green • The best strategy you can have is always betting on black (or red) • If you bet $1 on black and win, you get $1, but you lose your dollar if it lands red or green • What is the expected value of a bet?

  23. Conditional probability • Given that some event A has happened, the probability that some event B will happen is called conditional probability • This probability is:

  24. Conditional probability example • Given two, fair, 6-sided dice, what is the probability that the sum of the numbers they show when rolled is 8, given that both of the numbers are even?

  25. Bayes' Theorem • Let sample space S be a union of mutually disjoint events B1, B2, B3, … Bn • Let A be an event in S • Let A and B1 through Bn have non-zero probabilities • For Bk where 1 ≤ k ≤ n

  26. Applying Bayes' theorem • Bayes' theorem is often used to evaluate tests that can have false positives and false negatives • Consider a test for a disease that 1 in 5000 people have • The false positive rate is 3% • The false negative rate is 1% • What's the probability that a person who tests positive for the disease has the disease? • Let A be the event that the person tests positively for the disease • Let B1 be the event that the person actually has the disease • Let B2 be the event that the person does not have the disease • Apply Bayes' theorem

  27. Independent events • If events A and B are events in a sample space S , then these events are independent if and only if P(A B) = P(A)∙P(B) • This should be clear from conditional probability • If A and B are independent, then P(B|A) = P(B)

  28. Quiz

  29. Upcoming

  30. Next time… • Finish probability • Graph basics

  31. Reminders • Work on Homework 8 • Due Friday • Start reading Chapter 10

More Related