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1 Basic Probability IBS-09-SL RM 501 – Ranjit Goswami 2 Introduction • • Probability is the study of randomness and uncertainty. In the early days, probability was associated with games of chance (gambling). IBS-09-SL RM 501 – Ranjit Goswami 3 Simple Games Involving Probability Game: A fair die is rolled. If the result is 2, 3, or 4, you win $1; if it is 5, you win $2; but if it is 1 or 6, you lose $3. Should you play this game? IBS-09-SL RM 501 – Ranjit Goswami 4 Random Experiment • a random experiment is a process whose outcome is uncertain. • • • • Examples: Tossing a coin once or several times Picking a card or cards from a deck Measuring temperature of patients ... IBS-09-SL RM 501 – Ranjit Goswami 5 Events & Sample Spaces Sample Space The sample space is the set of all possible outcomes. Simple Events The individual outcomes are called simple events. Event An event is any collection of one or more simple events IBS-09-SL RM 501 – Ranjit Goswami 6 Example Experiment: Toss a coin 3 times. • Sample space • = {HHH, HHT, HTH, HTT, THH, THT, TTH, TTT}. • Examples of events include • • A = {HHH, HHT,HTH, THH} = {at least two heads} B = {HTT, THT,TTH} = {exactly two tails.} IBS-09-SL RM 501 – Ranjit Goswami 7 Basic Concepts (from Set Theory) • The union of two events A and B, A B, is the event consisting of all outcomes that are either in A or in B or in both events. • The complement of an event A, Ac, is the set of all outcomes in that are not in A. • The intersection of two events A and B, A B, is the event consisting of all outcomes that are in both events. • When two events A and B have no outcomes in common, they are said to be mutually exclusive, or disjoint, events. IBS-09-SL RM 501 – Ranjit Goswami 8 Example Experiment: toss a coin 10 times and the number of heads is observed. • Let A = { 0, 2, 4, 6, 8, 10}. • B = { 1, 3, 5, 7, 9}, C = {0, 1, 2, 3, 4, 5}. • A B= {0, 1, …, 10} = . • A B contains no outcomes. So A and B are mutually exclusive. • Cc = {6, 7, 8, 9, 10}, A C = {0, 2, 4}. IBS-09-SL RM 501 – Ranjit Goswami 9 Rules • • • Commutative Laws: • A B = B A, A B = B A Associative Laws: • • (A B) C = A (B C ) (A B) C = A (B C) . Distributive Laws: • • (A B) C = (A C) (B C) (A B) C = (A C) (B C) IBS-09-SL RM 501 – Ranjit Goswami 10 Venn Diagram A A∩B B IBS-09-SL RM 501 – Ranjit Goswami 11 Probability • • A Probability is a number assigned to each subset (events) of a sample space . Probability distributions satisfy the following rules: IBS-09-SL RM 501 – Ranjit Goswami 12 Axioms of Probability • For any event A, 0 P(A) 1. • P() =1. • If A1, A2, … An is a partition of A, then P(A) = P(A1) + P(A2) + ...+ P(An) (A1, A2, … An is called a partition of A if A1 A2 … An = A and A1, A2, … An are mutually exclusive.) IBS-09-SL RM 501 – Ranjit Goswami 13 Properties of Probability • For any event A, P(Ac) = 1 - P(A). • If A B, then P(A) P(B). • For any two events A and B, P(A B) = P(A) + P(B) - P(A B). For three events, A, B, and C, P(ABC) = P(A) + P(B) + P(C) P(AB) - P(AC) - P(BC) + P(AB C). IBS-09-SL RM 501 – Ranjit Goswami 14 Example • In a certain population, 10% of the people are rich, 5% are famous, and 3% are both rich and famous. A person is randomly selected from this population. What is the chance that the person is • • • not rich? rich but not famous? either rich or famous? IBS-09-SL RM 501 – Ranjit Goswami 15 Intuitive Development (agrees with axioms) • Intuitively, the probability of an event a could be defined as: Where N(a) is the number that event a happens in n trials IBS-09-SL RM 501 – Ranjit Goswami Here We Go Again: Not So Basic Probability 17 More Formal: • • • is the Sample Space: • Contains all possible outcomes of an experiment w in is a single outcome A in is a set of outcomes of interest IBS-09-SL RM 501 – Ranjit Goswami 18 Independence • The probability of independent events A, B and C is given by: P(A,B,C) = P(A)P(B)P(C) A and B are independent, if knowing that A has happened does not say anything about B happening IBS-09-SL RM 501 – Ranjit Goswami 19 Bayes Theorem • Provides a way to convert a-priori probabilities to aposteriori probabilities: IBS-09-SL RM 501 – Ranjit Goswami 20 Conditional Probability • One of the most useful concepts! A B IBS-09-SL RM 501 – Ranjit Goswami 21 Bayes Theorem • Provides a way to convert a-priori probabilities to aposteriori probabilities: IBS-09-SL RM 501 – Ranjit Goswami 22 Using Partitions: • If events Ai are mutually exclusive and partition IBS-09-SL RM 501 – Ranjit Goswami 23 Random Variables • A (scalar) random variable X is a function that maps the outcome of a random event into real scalar values X(w) w IBS-09-SL RM 501 – Ranjit Goswami 24 Random Variables Distributions • Cumulative Probability Distribution (CDF): • Probability Density Function (PDF): IBS-09-SL RM 501 – Ranjit Goswami 25 Random Distributions: • From the two previous equations: IBS-09-SL RM 501 – Ranjit Goswami 26 Uniform Distribution • A R.V. X that is uniformly distributed between x1 and x2 has density function: X1 X2 IBS-09-SL RM 501 – Ranjit Goswami 27 Gaussian (Normal) Distribution • A R.V. X that is normally distributed has density function: m IBS-09-SL RM 501 – Ranjit Goswami 28 Statistical Characterizations • Expectation (Mean Value, First Moment): •Second Moment: IBS-09-SL RM 501 – Ranjit Goswami 29 Statistical Characterizations • Variance of X: • Standard Deviation of X: IBS-09-SL RM 501 – Ranjit Goswami 30 Mean Estimation from Samples • Given a set of N samples from a distribution, we can estimate the mean of the distribution by: IBS-09-SL RM 501 – Ranjit Goswami 31 Variance Estimation from Samples • Given a set of N samples from a distribution, we can estimate the variance of the distribution by: IBS-09-SL RM 501 – Ranjit Goswami Pattern Classification Chapter 1: Introduction to Pattern Recognition (Sections 1.1-1.6) • Machine Perception • An Example • Pattern Recognition Systems • The Design Cycle • Learning and Adaptation • Conclusion 34 Machine Perception • Build a machine that can recognize patterns: • Speech recognition • Fingerprint identification • OCR (Optical Character Recognition) • DNA sequence identification IBS-09-SL RM 501 – Ranjit Goswami 35 An Example • “Sorting incoming Fish on a conveyor according to species using optical sensing” Sea bass Species Salmon IBS-09-SL RM 501 – Ranjit Goswami 36 • Problem Analysis • Set up a camera and take some sample images to extract features • Length • Lightness • Width • Number and shape of fins • Position of the mouth, etc… • This is the set of all suggested features to explore for use in our classifier! IBS-09-SL RM 501 – Ranjit Goswami 37 • Preprocessing • Use a segmentation operation to isolate fishes from one another and from the background • Information from a single fish is sent to a feature extractor whose purpose is to reduce the data by measuring certain features • The features are passed to a classifier IBS-09-SL RM 501 – Ranjit Goswami 38 IBS-09-SL RM 501 – Ranjit Goswami 39 • Classification • Select the length of the fish as a possible feature for discrimination IBS-09-SL RM 501 – Ranjit Goswami 40 IBS-09-SL RM 501 – Ranjit Goswami 41 The length is a poor feature alone! Select the lightness as a possible feature. IBS-09-SL RM 501 – Ranjit Goswami 42 IBS-09-SL RM 501 – Ranjit Goswami 43 • Threshold decision boundary and cost relationship • Move our decision boundary toward smaller values of lightness in order to minimize the cost (reduce the number of sea bass that are classified salmon!) Task of decision theory IBS-09-SL RM 501 – Ranjit Goswami 44 • Adopt the lightness and add the width of the fish Fish xT = [x1, x2] Lightness Width IBS-09-SL RM 501 – Ranjit Goswami 45 IBS-09-SL RM 501 – Ranjit Goswami 46 • We might add other features that are not correlated with the ones we already have. A precaution should be taken not to reduce the performance by adding such “noisy features” • Ideally, the best decision boundary should be the one which provides an optimal performance such as in the following figure: IBS-09-SL RM 501 – Ranjit Goswami 47 IBS-09-SL RM 501 – Ranjit Goswami 48 • However, our satisfaction is premature because the central aim of designing a classifier is to correctly classify novel input Issue of generalization! IBS-09-SL RM 501 – Ranjit Goswami 49 IBS-09-SL RM 501 – Ranjit Goswami