Title :
Fisher information, stochastic complexity, and universal modeling
Author_Institution :
IBM Res. Div., Almaden Res. Center, San Jose, CA, USA
Abstract :
The main objective in universal modeling is to construct a process for a class of model processes which for long strings, generated by any of the models in the class, behaves like the data generating one. Hence, such a universal process may be taken as a representation of the entire model class to be used for statistical inference. If f(xn) denotes the probability or density it assigns to the data string xn =x1,..,xn, then the negative logarithm - log f(xn), which may be viewed as the shortest ideal code length for the data obtainable with the model class, is called the stochastic complexity of the string, relative to the considered model class. Unlike in related universal modeling, where the mean code length is sufficient, we also need an explicit asymptotic formula for the stochastic complexity. This is because it permits a comparison of different model classes by their stochastic complexity in accordance with the MDL (minimum description length) principle
Keywords :
encoding; information theory; probability; statistical analysis; stochastic processes; Fisher information; MDL; asymptotic formula; data string; density; long strings; mean code length; minimum description length; model class; model processes; probability; shortest ideal code length; statistical inference; stochastic complexity; universal modeling; universal process; Codes; Length measurement; Markov processes; Maximum likelihood estimation; Probability; Random processes; State estimation; Stochastic processes; Stochastic resonance; Zinc;
Conference_Titel :
Information Theory and Statistics, 1994. Proceedings., 1994 IEEE-IMS Workshop on
Conference_Location :
Alexandria, VA
Print_ISBN :
0-7803-2761-6
DOI :
10.1109/WITS.1994.513849