DocumentCode :
2169554
Title :
Always Good Turing: asymptotically optimal probability estimation
Author :
Orlitsky, Alon ; Santhanam, Narayana P. ; Zhang, Junan
Author_Institution :
ECE, UCSD, La Jolla, CA, USA
fYear :
2003
fDate :
11-14 Oct. 2003
Firstpage :
179
Lastpage :
188
Abstract :
While deciphering the German Enigma code during World War II, I.J. Good and A.M. Turing considered the problem of estimating a probability distribution from a sample of data. They derived a surprising and unintuitive formula that has since been used in a variety of applications and studied by a number of researchers. Borrowing an information-theoretic and machine-learning framework, we define the attenuation of a probability estimator as the largest possible ratio between the per-symbol probability assigned to an arbitrarily-long sequence by any distribution, and the corresponding probability assigned by the estimator. We show that some common estimators have infinite attenuation and that the attenuation of the Good-Turing estimator is low, yet larger than one. We then derive an estimator whose attenuation is one, namely, as the length of any sequence increases, the per-symbol probability assigned by the estimator is at least the highest possible. Interestingly, some of the proofs use celebrated results by Hardy and Ramanujan on the number of partitions of an integer. To better understand the behavior of the estimator, we study the probability it assigns to several simple sequences. We show that some sequences this probability agrees with our intuition, while for others it is rather unexpected.
Keywords :
Turing machines; estimation theory; learning (artificial intelligence); number theory; probability; Good-Turing estimator; Turing estimator; asymptotically optimal probability estimation; information-theoretic; machine-learning framework; per symbol probability; probability distribution; Computer science;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Foundations of Computer Science, 2003. Proceedings. 44th Annual IEEE Symposium on
ISSN :
0272-5428
Print_ISBN :
0-7695-2040-5
Type :
conf
DOI :
10.1109/SFCS.2003.1238192
Filename :
1238192
Link To Document :
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