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| Domain | Definition |
Computing | Stochastic model used as a discrete-time, discrete-range Markov process, called a Markov chain, modeling transitions between phonemic units. Source: European Union. (references) |
Math | A variant of a finite state machine having a set of states, Q, an output alphabet, O, transition probabilities, A, output probabilities, B, and initial state probabilities, . The current state is not observable. Instead, each state produces an output with a certain probability, B. Usually the states, Q, and outputs, O, are understood, so an HMM is said to be a triple, (A, B, ). (references) |
Source: compiled by the editor from various references; see credits. | |
(From Wikipedia, the free Encyclopedia)
The notions of observable and hidden are similar to Plato's notions of shadows and forms in the allegory of the cave. The allegory claims that perceived reality is but the shadow thrown into the world of experience of a true reality which is inaccessible to direct sensory experience. `Forms' in the true reality contain the essence of a class of object which can be experienced only incompletely in perceived reality. This analogy is particularly strong when modelling parts of speech and sentences, and other entities which have a strongly defined semantic meaning independent of the myriad of possible representations in the observable sequence.
In a regular Markov model, the state is directly visible to the observer, and therefore the state transition probabilities are the only parameters. A hidden Markov model adds outputs: each state has a probability distribution over the possible output tokens. Therefore, looking at a sequence of tokens generated by an HMM does not directly indicate the sequence of states.
There are 3 canonical problems to solve with HMMs:
Example (H)MM

Using Markov Models
Applications of hidden Markov models
See also
External links
Source: adapted by the editor from Wikipedia, the free encyclopedia under a copyleft GNU Free Documentation License (GFDL) from the article "Hidden Markov model."
Crosswords: HIDDEN MARKOV MODEL |
| Specialty definitions using "HIDDEN MARKOV MODEL": Baum Welch algorithm. (references) |
| The following statistics estimate the number of searches per day across the major English-language search engines as identified by various trade publications. Hyperlinks lead to commercial use of the expression at Amazon.com. |
| Expression | Frequency per Day |
hidden markov model | 18 |
hidden markov model note | 3 |
hidden markov model software | 2 |
| Source: compiled by the editor from various references; see credits. | |
| Language | Translations for "HIDDEN MARKOV MODEL"; alternative meanings/domain in parentheses. | ||||||||||
Finnish | kätketty Markov-malli, kätketty Markovin malli. (various references) | ||||||||||
French | source de Markov, modèle semimarkovien, modèle de Markov caché. (various references) | ||||||||||
German | Hidden Markov Modell. (various references) | ||||||||||
Pig Latin | iddenhay arkovmay odelmay osynlig markovmodell. (various references) | ||||||||||
Hexadecimal (or equivalents, 770AD-1900s) (references)48 49 44 44 45 4E      4D 41 52 4B 4F 56      4D 4F 44 45 4C |
| Leonardo da Vinci (1452-1519; backwards) (references)
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Binary Code (1918-1938, probably earlier) (references)01001000 01001001 01000100 01000100 01000101 01001110 00100000 01001101 01000001 01010010 01001011 01001111 01010110 00100000 01001101 01001111 01000100 01000101 01001100 |
HTML Code (1990) (references)H I D D E N   M A R K O V   M O D E L |
ISO 10646 (1991-1993) (references)0048 0049 0044 0044 0045 004E      004D 0041 0052 004B 004F 0056      004D 004F 0044 0045 004C |
Encryption (beginner's substitution cypher): (references)424338383948247355245495624749383946 |
| 1. Crosswords 2. Expressions: Internet 3. Translations: Modern 4. Orthography | 5. Bibliography |
Copyright © Philip M. Parker, INSEAD. Terms of Use.