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  • {{r|Continuous probability distribution}} {{r|Discrete probability distribution}}
    670 bytes (76 words) - 07:31, 16 April 2010
  • Auto-populated based on [[Special:WhatLinksHere/Discrete probability distribution]]. Needs checking by a human. {{r|Continuous probability distribution}}
    674 bytes (82 words) - 16:00, 11 January 2010
  • Auto-populated based on [[Special:WhatLinksHere/Continuous probability distribution]]. Needs checking by a human. {{r|Discrete probability distribution}}
    674 bytes (82 words) - 15:40, 11 January 2010
  • Auto-populated based on [[Special:WhatLinksHere/Entropy of a probability distribution]]. Needs checking by a human. {{r|Continuous probability distribution}}
    549 bytes (67 words) - 16:19, 11 January 2010
  • ...ion|exponential distribution]]''' is any member of a class of [[continuous probability distribution|continuous probability distributions]] assigning probability *[[Continuous probability distribution]]
    1 KB (164 words) - 06:14, 14 September 2013
  • ...distribution''' and '''zeta distribution''' refer to a class of [[discrete probability distribution]]s. They have been used to model the distribution of words in words in a t
    1 KB (168 words) - 16:41, 6 February 2009
  • {{r|Continuous probability distribution}} {{r|Discrete probability distribution}}
    687 bytes (82 words) - 20:38, 11 January 2010
  • The '''Poisson distribution''' is any member of a class of [[discrete probability distribution|discrete probability distributions]] named after [[Simeon Denis Poisson]]. *[[Probability distribution]]
    2 KB (233 words) - 09:15, 14 September 2013
  • {{r|Continuous probability distribution}} {{r|Discrete probability distribution}}
    771 bytes (95 words) - 18:24, 11 January 2010
  • {{r|Continuous probability distribution}} {{r|Discrete probability distribution}}
    812 bytes (100 words) - 20:22, 11 January 2010
  • #REDIRECT [[Probability distribution]]
    38 bytes (3 words) - 00:11, 7 May 2007
  • The '''entropy''' of a [[probability distribution]] is a number that describes the degree of uncertainty or disorder the dist #Given a [[discrete probability distribution]] function f, the entropy H of the distribution (measured in [[bits]]) is
    1 KB (232 words) - 07:17, 4 January 2008
  • Probability distribution where variables can take on arbitrary values in a continuum.
    122 bytes (15 words) - 11:04, 4 September 2009
  • {{r|Probability distribution}}
    575 bytes (70 words) - 07:35, 16 April 2010
  • ...], along with [[discrete probability distribution|discrete]] and [[hybrid probability distribution|hybrid]] ones. A continuous probability distribution is a function that, whren integrated over a set representing an event, give
    3 KB (390 words) - 07:22, 26 September 2007
  • a measure of the "lobsideness" of a probability distribution. Positive skewness indicates that the tail of the distribution is more str
    287 bytes (43 words) - 16:21, 23 May 2009
  • a test for comparing a mathematical probability distribution with observed data.
    117 bytes (14 words) - 05:21, 30 June 2009
  • {{r|conditional probability distribution}}
    223 bytes (23 words) - 14:30, 29 June 2009
  • a symmetrical bell-shaped probability distribution representing the frequency of random variations of a quantity from its mean
    163 bytes (20 words) - 12:25, 1 July 2009
  • {{r|Discrete probability distribution}}
    619 bytes (77 words) - 19:36, 11 January 2010
  • a probability distribution that is typically used to model the number of independent events (occurring
    202 bytes (29 words) - 02:35, 10 February 2010
  • a mathematical expression defining the shape of a symmetrical probability distribution curve - sometimes referred to as "peakiness". It is sometimes adjusted to p
    464 bytes (64 words) - 16:24, 23 May 2009
  • ...ns]]. The other main class in basic [[probability theory]] is [[continuous probability distribution|continuous probability distributions]]. ...bers ranging from 0 to 1 and their sum is exactly 1, we have a [[discrete probability distribution]], and each "degree of belief" is called a [[probability]].
    4 KB (590 words) - 09:17, 26 September 2007
  • {{r|Continuous probability distribution}}
    508 bytes (63 words) - 16:27, 11 January 2010
  • {{r|Discrete probability distribution}}
    456 bytes (57 words) - 21:48, 11 January 2010
  • * In [[probability theory]], the '''characteristic function''' of any [[probability distribution]] on the [[real number|real]] line is given by the following formula, where
    2 KB (242 words) - 02:01, 2 February 2009
  • A [[probability distribution]] is a mathematical approach to quantifying uncertainty. ...discrete values only (typically the positive integers), while [[continuous probability distribution|continuous distributions]] describe variables that can take on arbitrary v
    6 KB (870 words) - 12:20, 15 November 2007
  • In this definition, ''P'' is a probability distribution on the real numbers.
    4 KB (543 words) - 08:41, 21 January 2010
  • taken from a probability distribution — depends on the size ''n'' of the sample
    4 KB (694 words) - 17:28, 25 August 2013
  • taken from a probability distribution — depends on the size ''n'' of the sample
    4 KB (694 words) - 17:27, 25 August 2013
  • {{r|Probability distribution}}
    617 bytes (78 words) - 18:24, 11 January 2010
  • *That the probability distribution describing the next outcome may grow increasingly similar to a certain dist ...ence of random experiments becoming better and better modeled by a given [[probability distribution]].
    11 KB (1,680 words) - 19:57, 29 September 2020
  • ...om variables]]: non-deterministic (single) quantities which have certain [[probability distribution]]s. Random variables corresponding to various times (or points, in the cas ...>. There is an obvious compatibility condition, namely, that this marginal probability distribution be the same as the one derived from the full-blown stochastic process. When
    12 KB (1,781 words) - 14:50, 7 December 2008
  • ...</math> Thus, the phrase "an integer chosen at random" is meaningless if a probability distribution on the integers is not specified. "The uniform distribution on the integers ...screte distributions converging to the normal shape. However, [[Continuous probability distribution|continuous distributions]] (normal, uniform etc.) of random variables are n
    18 KB (2,797 words) - 14:37, 30 January 2011
  • ...so on. However, the term is typically used in the context of power-law [[probability distribution]]s such as the [[Gutenberg-Richter law]] for earthquake sizes, or scaling r
    9 KB (1,454 words) - 08:23, 18 October 2013
  • ...ility distribution|distributions]] are treated on three levels: [[Discrete probability distribution|discrete probabilities]], [[probability density function]]s, and [[measure ...istributions. In general, conditional distributions need not be [[discrete probability distribution|atomic]] or [[Absolutely continuous random variable|absolutely continuous]]
    32 KB (5,149 words) - 15:48, 29 June 2009
  • ...ssessment of risk is possible only on the basis of an assumption about the probability distribution of the relevant variables, and the assumption made in the risk-management m
    5 KB (801 words) - 08:31, 11 January 2010
  • ...[0,5] (measured in metres) and distributed according to some ''unknown'' [[probability distribution]]<ref>This is the case in [[non-parametric statistics]]. On the other hand,
    9 KB (1,291 words) - 04:36, 27 June 2009
  • ...ssessment of risk is possible only on the basis of an assumption about the probability distribution of the relevant variables, and the assumption made in the risk-management m
    7 KB (1,053 words) - 05:17, 8 March 2010
  • {{Image|Normal probability distribution function.gif|right|350px|Plot of the standard normal probability density fu
    18 KB (2,448 words) - 05:50, 13 June 2011
  • Eigenstates of the time-independent Schrödinger equation have a probability distribution that does not change with time, as <math>|\psi(x,t)|^2 = |\psi(x,0)|^2</mat
    16 KB (2,810 words) - 11:31, 5 April 2011
  • ...[0,5] (measured in metres) and distributed according to some ''unknown'' [[probability distribution]]<ref>This is the case in [[non-parametric statistics]]. On the other hand,
    15 KB (2,373 words) - 12:26, 20 February 2021
  • :<math>N(d_1)</math> is the cumulative probability distribution for the standard normal variate from -∞ to <math> d_1 </math>;
    3 KB (552 words) - 11:02, 7 December 2009
  • ...of the distribution to astronomical data (Havil, 2003)) is a [[continuous probability distribution]] of great importance in many fields. ...]], the cumulant-[[generating function]], and [[Maxwell's theorem]]. See [[probability distribution]] for a discussion.
    46 KB (6,956 words) - 07:01, 9 June 2009
  • ...measure generalizes area, length, mass (or charge) distribution, and also probability distribution, according to Andrei Kolmogorov's approach to probability theory.
    28 KB (4,311 words) - 08:36, 14 October 2010
  • ...sign definite values to observables. Instead, it makes predictions about [[probability distribution]]s; that is, the probability of obtaining each of the possible outcomes fro ...itian'' operators, for which all the eigenvalues are real. We can find the probability distribution of an observable in a given state by computing the [[spectral theorem|spect
    37 KB (5,578 words) - 04:54, 21 March 2024
  • ...ssian distribution]], meaning that the pollutant distribution has a normal probability distribution. Gaussian models are most often used for predicting the dispersion of conti
    19 KB (2,906 words) - 10:19, 30 July 2023
  • ...ssian distribution]], meaning that the pollutant distribution has a normal probability distribution. Gaussian models are most often used for predicting the dispersion of conti
    19 KB (2,906 words) - 10:19, 30 July 2023
  • 31 KB (4,704 words) - 00:37, 21 October 2013
  • ...pact factor refers to the average number of citations per paper, and the [[probability distribution]] of that number is not [[Normal distribution|Gaussian]]. Most papers publi
    24 KB (3,547 words) - 19:52, 15 September 2014
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