International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B3. Istanbul 2004
In case of syntax analyzers (parsers) planned on the basis of
context-free, non stochastic (i.e. traditional) grammars, the two |
classes of patterns could not be distinguished: that could mean |
the string belong to both patterns. |
However, what we already know about probable occurrence |
plays a meaningful role.The parsers, in many cases, are made up |
according to a likelihood criterion. However, parsers may also |
be built according to a further criterion, i.e. the Bayes’s theorem
Stochastic context free grammars are more powerful in order to |
describe languages: additional rules allow to create nested, r |
long-distance pairwise correlations between terminal symbols. |
In the case of complex patterns, with more articulated relations | KEY
between sub-patterns, regular grammars (even in stochastic |
form) are not adequate: stochastic context-free grammars, also |
more compact, should prove more efficient, altough more | ABS”
expensive in terms of memory and computational time. |
A variety of Cocke-Younger-Kasami (CYK) algorithm allows | ithe
to find out an optimal parse tree (alignment problem) for | hiehe
stochastic context free grammars in Chomsky Normal Form; the beer
so called “inside algorithm” allows to find out probability of a | qualit
given sequence (string) if the grammar is previously known. | Birds
The inside algorithm can be compared with the forward | resol
algorithm for HMMs, the same as the CYK algorithm can be | imas
compared with the Viterbi algorithm used for HMMs. | image
| univei
References
Aho, A., Ullman, J., 1972. The theory of Parsing Translation, |
and Compiling. Prentice Hall, Englewood Cliffs. |
Chomsky, N., 1957. Syntactic structures. Mouton, The Hague | In dis
Fu, K., 1974. Syntactic Methods in Pattern Recognition. high :
Academic Press, New York. image
Markov, A., 1913. An example of statistical investigation in the say th
text of "Eugene Onegin". In: Proceedings of the Academy of | charge
Sciences of St. Petersburg. | precis
Rabiner, L. 1989. A tutorial on hidden Markov models and purpo:
selected applications in speech recognition. In: Proceedings of | and hi
the IEEE, 77 (2). | high-r
Rabiner, L., Juang, B. 1993. Fundamentals of Speech | dimen
Recognition. Prentice Hall, NJ. | algorit
Sester, M., 1992. Automatic model acquisition by Learning. In: image
The International Archives of the Photogrammetry, Remote |
Sensing and Spatial Information Sciences, Whashington USA, | Recen
Vol. XXIX, Part B3. enhan«
Resch B. Hidden Markov Models. | resolu
http://www.igi.tugraz.at/lehre/CI | receive
researc
| 1984 (
| domai
engine
| algorit
1985),
| 1989;
| approa
1995))
| adaptiy
| In 200
| geome!
from s
| resolut
This al
where
previot
input i
688