a Markov information source, or simply, a Markov source, is an information source whose underlying dynamics are given by a stationary finite Markov chain...
2 KB (238 words) - 03:32, 13 March 2024
method Markov chain geostatistics Markov chain mixing time Markov chain tree theorem Markov decision process Markov information source Markov odometer...
96 KB (12,900 words) - 11:52, 1 June 2025
decision process Markov's inequality Markov brothers' inequality Markov information source Markov network Markov number Markov property Markov process Stochastic...
10 KB (1,072 words) - 21:36, 10 June 2025
Gauss–Markov theorem Gauss–Markov process Markov blanket Markov boundary Markov chain Markov chain central limit theorem Additive Markov chain Markov additive...
2 KB (229 words) - 07:10, 17 June 2024
A hidden Markov model (HMM) is a Markov model in which the observations are dependent on a latent (or hidden) Markov process (referred to as X {\displaystyle...
52 KB (6,811 words) - 15:47, 11 June 2025
\dots ,X_{n-1},X_{n})}{n+1}}.} Markov information source Asymptotic equipartition property Robert B. Ash, Information Theory, (1965) Dover Publications...
1 KB (188 words) - 08:47, 23 September 2021
Entropy rate (redirect from Source information rate)
used for feature selection in machine learning. Information source (mathematics) Markov information source Asymptotic equipartition property Maximal entropy...
5 KB (804 words) - 00:13, 3 June 2025
In statistics, Markov chain Monte Carlo (MCMC) is a class of algorithms used to draw samples from a probability distribution. Given a probability distribution...
62 KB (8,540 words) - 04:31, 9 June 2025
Markov decision process (MDP), also called a stochastic dynamic program or stochastic control problem, is a model for sequential decision making when outcomes...
35 KB (5,156 words) - 11:15, 25 May 2025
In probability theory, a Markov model is a stochastic model used to model pseudo-randomly changing systems. It is assumed that future states depend only...
10 KB (1,231 words) - 16:39, 29 May 2025
Viterbi algorithm (category Markov models)
observed events. This is done especially in the context of Markov information sources and hidden Markov models (HMM). The algorithm has found universal application...
20 KB (2,664 words) - 22:57, 10 April 2025
Kolmogorov complexity (category Algorithmic information theory)
that for the output of Markov information sources, Kolmogorov complexity is related to the entropy of the information source. More precisely, the Kolmogorov...
60 KB (7,894 words) - 12:09, 23 June 2025
Science and Technology - Volume 14: Very Large Data Base Systems to Zero-Memory and Markov Information Source. Marcel Dekker Inc. ISBN 978-0-8247-2214-2....
12 KB (1,415 words) - 16:07, 23 May 2025
common way to define entropy for text is based on the Markov model of text. For an order-0 source (each character is selected independent of the last characters)...
72 KB (10,220 words) - 13:03, 6 June 2025
computer science, a Markov algorithm is a string rewriting system that uses grammar-like rules to operate on strings of symbols. Markov algorithms have been...
7 KB (1,105 words) - 18:48, 23 June 2025
process Markov information source Markov kernel Markov logic network Markov model Markov network Markov process Markov property Markov random field Markov renewal...
87 KB (8,280 words) - 23:04, 12 March 2025
bioinformatics Margin Markov chain geostatistics Markov chain Monte Carlo (MCMC) Markov information source Markov logic network Markov model Markov random field...
39 KB (3,386 words) - 19:51, 2 June 2025
maximum-entropy Markov model (MEMM), or conditional Markov model (CMM), is a graphical model for sequence labeling that combines features of hidden Markov models...
7 KB (1,025 words) - 08:23, 21 June 2025
A continuous-time Markov chain (CTMC) is a continuous stochastic process in which, for each state, the process will change state according to an exponential...
23 KB (4,240 words) - 18:35, 6 May 2025
Terra (character) (redirect from Tara Markov)
Comics. The first Terra, Tara Markov, joins the Teen Titans as a double agent for the supervillain Deathstroke. Markov was created by Marv Wolfman and...
22 KB (2,187 words) - 12:46, 24 June 2025
mixtures, Bayesian networks, neural networks, radial basis functions, hidden Markov models, stochastic context-free grammars, reduced rank regressions, Boltzmann...
52 KB (7,376 words) - 12:50, 8 June 2025
Oleg Markov (Belarusian: Олег Маркаў, born 8 May 1996) is a professional Australian rules footballer who plays for the Collingwood Football Club in the...
46 KB (4,265 words) - 16:11, 13 June 2025
of information theory include source coding, algorithmic complexity theory, algorithmic information theory and information-theoretic security. Applications...
64 KB (7,973 words) - 23:39, 4 June 2025
Technology: Volume 14 - Very Large Data Base Systems to Zero-Memory and Markov Information Source. CRC Press. pp. 1–18. ISBN 9780824722142. Gerritsen, Rob; Morgan...
19 KB (1,525 words) - 21:22, 28 August 2024
Catalog of articles in probability theory (section Markov chains, processes, fields, networks (Mar))
Markov additive process Markov blanket / Bay Markov chain mixing time / (L:D) Markov decision process Markov information source Markov kernel Markov logic...
35 KB (3,026 words) - 12:15, 30 October 2023
Kullback–Leibler divergence (redirect from Information gain)
Monroe D.; Varadhan, SR Srinivasa (1983). "Asymptotic evaluation of certain Markov process expectations for large time. IV". Communications on Pure and Applied...
77 KB (13,067 words) - 01:45, 24 June 2025
List of statistical software (redirect from List of open-source statistical packages)
hierarchical models using Markov chain Monte Carlo developed by Martyn Plummer. It is similar to WinBUGS KNIME – An open source analytics platform built...
14 KB (1,449 words) - 20:02, 21 June 2025
Kalman filter (redirect from Information Filter)
_{0}\right)} , and because the Kalman filter describes a Markov process, all relevant information from previous observations is contained in the current...
127 KB (20,447 words) - 05:33, 8 June 2025
is equal to the mutual information, maximized over all input distributions. Discriminative training procedures for hidden Markov models have been proposed...
56 KB (8,853 words) - 23:22, 5 June 2025
Reinforcement learning (category Markov models)
exploration–exploitation dilemma. The environment is typically stated in the form of a Markov decision process (MDP), as many reinforcement learning algorithms use dynamic...
69 KB (8,194 words) - 13:01, 17 June 2025