Title :
On-line decision making for a class of loss functions via Lempel-Ziv parsing
Author :
Weinberger, Marcelo J. ; Ordentlich, Erik
Author_Institution :
Hewlett-Packard Labs., Palo Alto, CA, USA
Abstract :
Prefetching in computer memory architectures is formalized as a sequential decision problem in which the instantaneous losses depend not only on the current action-observation pair, as in the traditional formulation, but also on past pairs. Motivated by the prefetching application, we study a class of loss functions that admit an efficient on-line decision algorithm. The algorithm uses the LZ78 parsing rule to dynamically build a tree, different from the classical LZ78 tree, and makes decisions based on the current node in a traversal path, determined by the sequence of observations. The asymptotic performance is essentially as good as that of the best finite-state strategy determined in hindsight, with full knowledge of the given sequence of observations. The related notion of delayed FS predictability is introduced, and its properties are studied
Keywords :
data compression; decision trees; grammars; tree data structures; LZ78 parsing rule; Lempel-Ziv parsing; action-observation pair; asymptotic performance; computer memory architectures; decision tree; loss functions; observation sequence; on-line decision making; past pairs; prefetching; sequential decision problem; traversal path; Application software; Data compression; Decision making; Delay effects; Game theory; Laboratories; Memory architecture; Portfolios; Prefetching;
Conference_Titel :
Data Compression Conference, 2000. Proceedings. DCC 2000
Conference_Location :
Snowbird, UT
Print_ISBN :
0-7695-0592-9
DOI :
10.1109/DCC.2000.838156