Page title matches

  • ...obability of one proposition given that another proposition holds. For the probability of proposition A given proposition B, we write P(A|B).</p> ...)</math> and <math>P(\lnot A \cap B)</math>. Therefore, we must divide the probability we are looking for, <math>P(A \cap B)</math>, by the sum of all probabiliti
    1 KB (245 words) - 12:18, 17 March 2008
  • #redirect: [[Conditional probability_Old Kiwi]]
    47 B (5 words) - 12:19, 17 March 2008
  • ...[Category:probability]] [[Category:problem solving]][[Category:conditional probability]]
    770 B (129 words) - 08:10, 28 January 2013
  • [[ECE600_F13_probability_spaces_mhossain|Previous Topic: Probability Spaces]]<br/> [[Category:probability]]
    6 KB (1,023 words) - 12:11, 21 May 2014

Page text matches

  • What is the expression for the probability of getting at least one trial with no outliers given <math>N</math> trials? * Let <math>\epsilon</math> be the probability that a data element is an ''outlier''
    14 KB (2,253 words) - 12:21, 9 January 2009
  • ...is tricky because we don't care about the probability that Bob WON but the probability that he has won on his second turn GIVEN the fact that he won at all. Therefore, we need to calculate the conditional probability.
    1 KB (223 words) - 02:41, 18 February 2009
  • * [[Conditional PDFs - random breaking of a stick, Lec 15 on 10/6_ECE302Fall2008sanghavi]] * [[Example for continuous Probability Distributions. Vivek_ECE302Fall2008sanghavi]]
    5 KB (663 words) - 13:02, 22 November 2011
  • Bob, Carol, Ted and Alice take turns (in that order) tossing a coin with probability of tossing a Head, <math>P (H) = p</math>, where <math>0 < p < 1</math>. Th ...ne of its faces is randomly looked at. It turns out to be red. What is the probability the other face of the SAME card is ALSO red?
    3 KB (555 words) - 12:54, 22 November 2011
  • Since the product of the two probabilities is equal to overall probability, the events are independent. ==Conditional Probability==
    977 B (158 words) - 13:00, 22 November 2011
  • The theorem of total probability states that <math>P(A) = P(A|C)P(C) + P(A|C^c)P(C^c)</math>. Show that thi ...s are down on the same day. How large should <math>k</math> be so that the probability total outage occurs at least one day in a year is less than or equal to 0.0
    6 KB (998 words) - 12:55, 22 November 2011
  • Tip: Just expand the right hand side by using the conditional probability and simplify.
    88 B (14 words) - 08:06, 13 September 2008
  • ...be complicated easily because what we have to deal with is the conditional probability in the second roll. ...t I must calculate as each possibility of second roll times first red roll probability.
    731 B (116 words) - 07:07, 15 September 2008
  • ...(Red1), P(Red1 Red2), and P(Red1 Red2 Red3). From this values, We can find conditional probabilty of each case.
    254 B (47 words) - 08:35, 16 September 2008
  • '''Sample Space, Axioms of probability (finite spaces, infinite spaces)''' '''Properties of Probability laws'''
    3 KB (525 words) - 13:04, 22 November 2011
  • Probability of getting heads given a particular coin q is: ...g the above answers into the conditional probability formula will give the probability of H2|H1.
    449 B (89 words) - 10:33, 18 October 2008
  • ...andom variables, we can do this. We don't have to worry about finding the conditional PDF of Q given H1, making this pretty easy.
    333 B (64 words) - 10:26, 20 October 2008
  • Here are some concepts taught in class about conditional probability which can be useful to solve the problem. Some of us have given the procedu ...bability of any event A given the event X = 0, and also of the conditional probability of A given the event X = 1. The former is denoted P(A|X = 0) and the latter
    2 KB (332 words) - 16:52, 20 October 2008
  • Pick hypothesis that maxes conditional PDF Probability of Type I : Pr(x E R|H0)
    489 B (102 words) - 10:56, 3 December 2008
  • Pick hypothesis that maxes conditional PDF Probability of Type I : Pr(x E R|H0)
    687 B (125 words) - 13:43, 22 November 2011
  • *I believe the definition of the conditional expectation on page 8 is not true, possibly what was meant was: <math>E[X|Y ...nts regarding the lab, I want to correct my stated results. To recap, the conditional from which <math>W</math> was drawn should indeed depend on the neighborhoo
    3 KB (543 words) - 12:55, 12 December 2008
  • ...one out of so many theorems. However, Bayes' theorem which I learned in my probability class is one of these that dazzles me. I especially like its alternative fo ...re events from sample space S: P(F)!=0, P(E)!=0. P(F|E) is the conditional probability of F given E. P(E), P(F) are marginal probabilities of E and F respectively
    713 B (137 words) - 07:32, 31 August 2008
  • ===Conditional Probability=== This problem can be solved using conditional probability. Once the door is opened, you have some extra information.
    11 KB (1,998 words) - 12:45, 24 September 2008
  • ...E''' and '''F''' are events in '''S''' (sample space) the the conditional probability of '''E''' and '''F''' is '''P(E|F) = P(E intersect F)'''. the conditional probability of "E" given "F" is =<math> \frac {P(EnF)}{P(F)}</math>
    860 B (130 words) - 08:16, 20 May 2013
  • ...he solution usually given is that if you choose a door and not switch, the probability you were right is 1/3 -- there's one treasure door and 3 doors in total. ...ragon to treasure). There's two dragon doors and 3 doors in total, so this probability is 2/3.
    539 B (97 words) - 09:49, 7 October 2008
  • Bayes' decision rule creates an objective function which minimizes the probability of error (misclassification). This method assumes a known distribution for ...an Parameter Estimation is a technique for parameter estimation which uses probability densities as estimates of the parameters instead of exact deterministic one
    31 KB (4,832 words) - 18:13, 22 October 2010
  • * Parametric Estimation of Class Conditional Density The class conditional density <math>p(\vec{x}|w_i)</math> can be estimated using training data. W
    10 KB (1,488 words) - 10:16, 20 May 2013
  • *Determining probability of a new point requires one calculation: P(x|theta) *Probabilistic (probability density) estimate of parameters, p(theta | Data)
    6 KB (995 words) - 10:39, 20 May 2013
  • ...ty density function) and cdf (cumulative distribution function), or simply probability distribution function. The probability density function or pdf is defined as: <math>p({x}) = p(x_1,\cdots , x_n) =
    8 KB (1,360 words) - 08:46, 17 January 2013
  • ...obability of one proposition given that another proposition holds. For the probability of proposition A given proposition B, we write P(A|B).</p> ...)</math> and <math>P(\lnot A \cap B)</math>. Therefore, we must divide the probability we are looking for, <math>P(A \cap B)</math>, by the sum of all probabiliti
    1 KB (245 words) - 12:18, 17 March 2008
  • ...nd argument, holding the first fixed. Eg: consider a model which gives the probability density function of observable random variable X as a function of parameter
    708 B (126 words) - 01:55, 17 April 2008
  • == Example of Turning Conditional Distributions Around == Suppose that the conditional distributions <math>P_{\mathbb{X}|\mathbb{Y}}</math> are empirically estima
    7 KB (948 words) - 04:35, 2 February 2010
  • '''Topics Covered''': An introductory treatment of probability theory including distribution and density functions, moments and random var i. an ability to solve simple probability problems in electrical and computer engineering applications.
    2 KB (231 words) - 07:20, 4 May 2010
  • Bayes' decision rule creates an objective function which minimizes the probability of error (misclassification). This method assumes a known distribution for ...an Parameter Estimation is a technique for parameter estimation which uses probability densities as estimates of the parameters instead of exact deterministic one
    31 KB (4,787 words) - 18:21, 22 October 2010
  • [[Category:probability]] *[[Probability_Formulas|Probability Formulas]]
    2 KB (238 words) - 12:14, 25 September 2013
  • [[Category:probability]] Question 1: Probability and Random Processes
    1 KB (191 words) - 17:42, 13 March 2015
  • Find the conditional density of <math>\mathbf{Y}</math> conditioned on <math>\mathbf{X}=x</math> Find a maximum aposteriori probability estimator.
    7 KB (1,103 words) - 05:27, 15 November 2010
  • What is the probability that this experiment terminates on or before the seventh coin toss? What is the probability that this experiment terminates with an even number of coin tosses?
    10 KB (1,827 words) - 08:33, 27 June 2012
  • ...tion consists of two separate short questions relating to the structure of probability space: ...}P_{2}\left(A\right),\qquad\forall A\in\mathcal{F}</math> is also a valid probability measure on <math class="inline">\mathcal{F}</math> if <math class="inline"
    7 KB (1,210 words) - 08:31, 27 June 2012
  • ...th> is the power set of <math class="inline">\mathcal{S}</math> , and the probability measure <math class="inline">\mathcal{P}</math> is specified by the pmf <m ...math class="inline">f_{\mathbf{X}}\left(x|\mathbf{Z}=z\right)</math> , the conditional pdf of <math class="inline">\mathbf{X}</math> given the event <math class=
    14 KB (2,358 words) - 08:31, 27 June 2012
  • ..."inline">\mathbf{X}</math> is a binomial distributed random variable with probability mass function (pmf) given by <math class="inline">p_{n}\left(k\right)=\left ...random variables, with <math class="inline">\mathbf{X}_{n}</math> having probability mass function <math class="inline">p_{n}\left(k\right)=\left(\begin{array}{
    10 KB (1,754 words) - 08:30, 27 June 2012
  • ...on values <math class="inline">0,1,2,\cdots</math> and having conditional probability mass function <math class="inline">p_{\mathbf{N}}\left(n|\left\{ \mathbf{X} Find the probability that \mathbf{N}=n .
    9 KB (1,560 words) - 08:30, 27 June 2012
  • Find the conditional density of <math class="inline">\mathbf{Y}</math> conditioned on <math cla Find a maximum aposteriori probability estimator.
    2 KB (416 words) - 11:47, 3 December 2010
  • [[Category:probability]] [https://www.projectrhea.org/learning/practice.php Practice Problems] on Probability
    7 KB (960 words) - 18:17, 23 February 2015
  • ...ty density function) and cdf (cumulative distribution function), or simply probability distribution function. The probability density function or pdf is defined as: <math>p({x}) = p(x_1,\cdots , x_n) =
    8 KB (1,403 words) - 11:17, 10 June 2013
  • * Parametric Estimation of Class Conditional Density The class conditional density <math>p(\vec{x}|w_i)</math> can be estimated using training data. W
    10 KB (1,472 words) - 11:16, 10 June 2013
  • *Determining probability of a new point requires one calculation: P(x|theta) *Probabilistic (probability density) estimate of parameters, p(theta | Data)
    6 KB (976 words) - 13:25, 8 March 2012
  • =Student Project for [[MA375]]: Mysteries of Probability= ...lity of an event, the more certain we are that the event will occur. Thus, probability in an applied sense is a measure of the confidence a person has that a (ran
    12 KB (2,113 words) - 06:50, 21 March 2013
  • [[Category:probability]] Question 1: Probability and Random Processes
    5 KB (780 words) - 01:25, 9 March 2015
  • [[Category:probability]] Question 1: Probability and Random Processes
    5 KB (735 words) - 01:17, 10 March 2015
  • [[Category:probability]] Question 1: Probability and Random Processes
    4 KB (609 words) - 01:54, 10 March 2015
  • [[Category:probability]] Question 1: Probability and Random Processes
    4 KB (572 words) - 10:24, 10 March 2015
  • [[Category:probability]] Question 1: Probability and Random Processes
    5 KB (748 words) - 01:01, 10 March 2015
  • [[Category:probability]] Probability, Statistics, and Random Processes for Electrical Engineering, 3rd Edition,
    10 KB (1,422 words) - 20:14, 30 April 2013
  • *1.2 Probability Models **Probability Laws (axioms, properties
    4 KB (498 words) - 10:18, 17 April 2013

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