DocumentCode :
13872
Title :
Finite-Memory Prediction as Well as the Empirical Mean
Author :
Dar, Ronen ; Feder, Meir
Author_Institution :
Sch. of Electr. Eng., Tel Aviv Univ., Ramat Aviv, Israel
Volume :
60
Issue :
8
fYear :
2014
fDate :
Aug. 2014
Firstpage :
4526
Lastpage :
4543
Abstract :
The problem of universally predicting an individual continuous sequence using a deterministic finite-state machine (FSM) is considered. The empirical mean is used as a reference as it is the constant that fits a given sequence within a minimal square error. A reasonable prediction performance is the regret, namely the excess square-error over the reference loss. This paper analyzes the tradeoff between the number of states of the universal FSM and the attainable regret. This paper first studies the case of a small number of states. A class of machines, termed degenerated tracking memory (DTM), is defined and shown to be optimal for small enough number of states. Unfortunately, DTM machines become suboptimal and their regret does not vanish as the number of available states increases. Next, the exponential decaying memory (EDM) machine, previously used for predicting binary sequences, is considered. While the EDM machine has poorer performance for small number of states, it achieves a vanishing regret for large number of states. Following that, an asymptotic lower bound of O(k-2/3) on the achievable regret of any k-state machine is derived. This bound is attained asymptotically by the EDM machine. Finally, the enhanced exponential decaying memory machine is presented and shown to outperform the EDM machine for any number of states.
Keywords :
binary sequences; finite state machines; least mean squares methods; DTM machine; EDM machine; asymptotic lower bound; binary sequences; continuous sequence; degenerated tracking memory machine; deterministic FSM; deterministic finite-state machine; empirical mean; exponential decaying memory machine; finite-memory prediction; k-state machine; minimal square error; reference loss; Abstracts; Educational institutions; Estimation; Indexes; Memory management; Prediction algorithms; Silicon; Universal prediction; finite-memory; individual continuous sequences; least-squares;
fLanguage :
English
Journal_Title :
Information Theory, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9448
Type :
jour
DOI :
10.1109/TIT.2014.2325819
Filename :
6819047
Link To Document :
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