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  2. Convergence of Probability Measures - Wikipedia

    en.wikipedia.org/wiki/Convergence_of_Probability...

    Convergence of Probability Measures is a graduate textbook in the field of mathematical probability theory. It was written by Patrick Billingsley and published by Wiley in 1968. A second edition in 1999 both simplified its treatment of previous topics and updated the book for more recent developments. [1]

  3. Patrick Billingsley - Wikipedia

    en.wikipedia.org/wiki/Patrick_Billingsley

    Patrick Paul Billingsley (May 3, 1925 – April 22, 2011 [1] [2]) was an American mathematician and stage and screen actor, noted for his books in advanced probability theory and statistics. He was born and raised in Sioux Falls, South Dakota , and graduated from the United States Naval Academy in 1946.

  4. Probability measure - Wikipedia

    en.wikipedia.org/wiki/Probability_measure

    For instance, a risk-neutral measure is a probability measure which assumes that the current value of assets is the expected value of the future payoff taken with respect to that same risk neutral measure (i.e. calculated using the corresponding risk neutral density function), and discounted at the risk-free rate.

  5. Convergence of random variables - Wikipedia

    en.wikipedia.org/wiki/Convergence_of_random...

    If X n converges in probability to X, and if P(| X n | ≤ b) = 1 for all n and some b, then X n converges in rth mean to X for all r ≥ 1. In other words, if X n converges in probability to X and all random variables X n are almost surely bounded above and below, then X n converges to X also in any rth mean. [10] Almost sure representation ...

  6. Tightness of measures - Wikipedia

    en.wikipedia.org/wiki/Tightness_of_measures

    Very often, the measures in question are probability measures, so the last part can be written as μ ( K ε ) > 1 − ε . {\displaystyle \mu (K_{\varepsilon })>1-\varepsilon .\,} If a tight collection M {\displaystyle M} consists of a single measure μ {\displaystyle \mu } , then (depending upon the author) μ {\displaystyle \mu } may either ...

  7. Convergence of measures - Wikipedia

    en.wikipedia.org/wiki/Convergence_of_measures

    The weak limit of a sequence of probability measures, provided it exists, is a probability measure. In general, if tightness is not assumed, a sequence of probability (or sub-probability) measures may not necessarily converge vaguely to a true probability measure, but rather to a sub-probability measure (a measure such that μ ( X ) ≤ 1 ...

  8. Probability distribution - Wikipedia

    en.wikipedia.org/wiki/Probability_distribution

    The concept of probability function is made more rigorous by defining it as the element of a probability space (,,), where is the set of possible outcomes, is the set of all subsets whose probability can be measured, and is the probability function, or probability measure, that assigns a probability to each of these measurable subsets .

  9. Empirical measure - Wikipedia

    en.wikipedia.org/wiki/Empirical_measure

    The empirical measure P n is defined for measurable subsets of S and given by = = = = where is the indicator function and is the Dirac measure. Properties. For a fixed measurable set A, nP n (A) is a binomial random variable with mean nP(A) and variance nP(A)(1 − P(A)). In particular, P n (A) is an unbiased estimator of P(A).