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Published byMoris Clarke Modified over 6 years ago
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Probability Review Definitions/Identities Random Variables
Expected Value Joint Distributions Conditional Probabilities
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Probability Defined an event (experiment) has a set of possible outcomes, each with a probability, that measures their relative (anticipated) frequencies of occurrence normalized to 1.
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Probability Identities
Events and outcomes: Probability of each outcome: Probability distribution:
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Joint Distributions Two (or more) events Each event has an outcome
Joint distribution stipulates the probability of every combination of outcomes
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Two Events
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Random Variables
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Multiple Random Variables
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Joint probability matrix
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Conditional Probability
Random variables are often NOT independent P(rain in Pittsburgh), P(rain in Monroeville), P(rain in New York), P(rain in Hong Kong) P(Heads up), P(Tails down) P(D1=5), P(D2=6) P(D1=1), P(D1 + D2=2)
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Dice Example
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Conditional Probability
P(A|B) = P(AB) P(B) AB
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Example p(y1) = 0.2 p(y2) = 0.1 p(y3) = 0.7
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Markov Processes State transition probabilities Matrix or Diagram
Matrix Multiplication predicts multiple transition probabilities Mk Converges to steady state
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