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Journal ArticleDOI

Compression of individual sequences via variable-rate coding

TLDR
The proposed concept of compressibility is shown to play a role analogous to that of entropy in classical information theory where one deals with probabilistic ensembles of sequences rather than with individual sequences.
Abstract
Compressibility of individual sequences by the class of generalized finite-state information-lossless encoders is investigated. These encoders can operate in a variable-rate mode as well as a fixed-rate one, and they allow for any finite-state scheme of variable-length-to-variable-length coding. For every individual infinite sequence x a quantity \rho(x) is defined, called the compressibility of x , which is shown to be the asymptotically attainable lower bound on the compression ratio that can be achieved for x by any finite-state encoder. This is demonstrated by means of a constructive coding theorem and its converse that, apart from their asymptotic significance, also provide useful performance criteria for finite and practical data-compression tasks. The proposed concept of compressibility is also shown to play a role analogous to that of entropy in classical information theory where one deals with probabilistic ensembles of sequences rather than with individual sequences. While the definition of \rho(x) allows a different machine for each different sequence to be compressed, the constructive coding theorem leads to a universal algorithm that is asymptotically optimal for all sequences.

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Citations
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Journal ArticleDOI

Evaluating Next-Cell Predictors with Extensive Wi-Fi Mobility Data

TL;DR: The first extensive empirical evaluation of location predictors using a two-year trace of the mobility patterns of more than 6,000 users on Dartmouth's campus-wide Wi-Fi wireless network finds that low-order Markov predictors performed as well or better than the more complex and more space-consuming compression-based predictors.
Proceedings Article

Off-line dictionary-based compression

TL;DR: In this article, a dictionary-based compression scheme is proposed, which is a combination of a simple but powerful phrase derivation method and a compact dictionary encoding, and it is shown to be highly efficient in decompression.
Proceedings ArticleDOI

A corpus for the evaluation of lossless compression algorithms

TL;DR: A principled technique for collecting a corpus of test data for compression methods is developed, and a corpus, called the Canterbury corpus, is developed using this technique, and the performance of a collection of compression methods using the new corpus is reported.
Proceedings ArticleDOI

Compression of DNA sequences

TL;DR: The authors propose a lossless algorithm based on regularities, such as the presence of palindromes, in the DNA, which is far beyond classical algorithms.
Dissertation

Unsupervised language acquisition

TL;DR: In this article, a computational theory of unsupervised language acquisition is presented, which is based heavily on concepts borrowed from machine learning and statistical estimation, and can be used for data compression, speech recognition, machine translation, information retrieval, and other tasks that rely on either structural or stochastic descriptions of language.
References
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Book

Information Theory and Reliable Communication

TL;DR: This chapter discusses Coding for Discrete Sources, Techniques for Coding and Decoding, and Source Coding with a Fidelity Criterion.
Journal ArticleDOI

A universal algorithm for sequential data compression

TL;DR: The compression ratio achieved by the proposed universal code uniformly approaches the lower bounds on the compression ratios attainable by block-to-variable codes and variable- to-block codes designed to match a completely specified source.
Journal ArticleDOI

On the Complexity of Finite Sequences

TL;DR: A new approach to the problem of evaluating the complexity ("randomness") of finite sequences is presented, related to the number of steps in a self-delimiting production process by which a given sequence is presumed to be generated.
Journal ArticleDOI

Coding theorems for individual sequences

TL;DR: The finite-state complexity of a sequence plays a role similar to that of entropy in classical information theory (which deals with probabilistic ensembles of sequences rather than an individual sequence).
Journal ArticleDOI

On Information Lossless Automata of Finite Order

TL;DR: The application of the tests to finite deterministic automata is discussed and a method of constructing a decoder for a given finite automaton that is information lossless of finite order, is described.