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1. Probability 2. Random variables 3. Inequalities 4. Convergence of random variables 5. Point and interval estimation 6. Hypotheses testing 7. Nonparametric inference Statistics 1
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1. Probability Introduction Uniform sample spaces. Laplace’s rule Independent events Conditional probability Total probability theorem Bayes’ theorem 2
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PROBABILIDAD Introduction Random experiments verify: Each result is not known beforehand. All possible results are known in advance. Can be repeated in the same conditions. 3 Elements: Sample space Events Probability
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PROBABILITY Introduction Sample space ( ): Set of possible outcomes of an experiment. Events: Subsets of the sample space. Union: A B Intersection: A B Complement of A: A C 4
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Introduction Probability: P assigning a real number P(A) to each event A, verifying: (i)0 P(A) 1 (ii)P( )=1 (iii){A i } disjoint P( A i )= i P(A i ) A i, A j disjoint if A i A j = Properties (i)P(A C ) = 1 - P(A) (ii)P( ) = 0 (iii)A B P(A) P(B) (iv)P(A B) = P(A) + P(B) - P(A B) 5 PROBABILITY
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Uniform sample spaces ={ω 1,...,ω n } is a uniform sample space if all the elements have the same probability. = {ω 1 } {ω 2 } ... {ω n } Since P( ) =1, P(ω i ) =1/n. 6 PROBABILITY
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Laplace’s rule A={ω 1,...,ω r } ; P(A) = P( {ω 1 } {ω 2 } ... {ω r } ) = =1/n +... + 1/n = r/n P(A)= favorable outcomes / possible outcomes Remark: only for uniform sample spaces. 7 r PROBABILITY
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Independent events A and B are independent if P(A B) = P(A) P(B) Remark: P(A B) = P(AB) 8 PROBABILITY
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Conditional probability A and B; P(B) > 0; P(A | B) = P(A B) / P(B) Multiplication law: P(A B) = P(A | B) P(B) Property If A and B are independent then P(A | B) = P(A) 9 PROBABILITY
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Total probability theorem Let with B is any event. Then: 10 B A4A4 A3A3 A2A2 A1A1 AiAi A7A7 A6A6 A5A5 PROBABILITY
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Bayes’ theorem Let with B any event. Then : 11 PROBABILITY
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