Compression-Based Methods of Statistical Analysis and Prediction of Time Series
tarafından
Ryabko, Boris. author.
Başlık
:
Compression-Based Methods of Statistical Analysis and Prediction of Time Series
Yazar
:
Ryabko, Boris. author.
ISBN
:
9783319322537
Yazar
:
Ryabko, Boris. author.
Fiziksel Niteleme
:
IX, 144 p. 29 illus., 21 illus. in color. online resource.
İçindekiler
:
Statistical Methods Based on Universal Codes -- Applications to Cryptography -- SCOT-Modeling and Nonparametric Testing of Stationary Strings.
Özet
:
Universal codes efficiently compress sequences generated by stationary and ergodic sources with unknown statistics, and they were originally designed for lossless data compression. In the meantime, it was realized that they can be used for solving important problems of prediction and statistical analysis of time series, and this book describes recent results in this area. The first chapter introduces and describes the application of universal codes to prediction and the statistical analysis of time series; the second chapter describes applications of selected statistical methods to cryptography, including attacks on block ciphers; and the third chapter describes a homogeneity test used to determine authorship of literary texts. The book will be useful for researchers and advanced students in information theory, mathematical statistics, time-series analysis, and cryptography. It is assumed that the reader has some grounding in statistics and in information theory.
Konu Başlığı
:
Computer science.
Data structures (Computer science).
Computer science -- Mathematics.
Computational linguistics.
Statistics.
Data Structures, Cryptology and Information Theory.
Mathematics of Computing.
Language Translation and Linguistics.
Statistics for Engineering, Physics, Computer Science, Chemistry and Earth Sciences.
Yazar Ek Girişi
:
Astola, Jaakko.
Malyutov, Mikhail.
Ek Kurum Yazar
:
SpringerLink (Online service)
Elektronik Erişim
:
Materyal Türü | Barkod | Yer Numarası | Durumu/İade Tarihi |
---|
Electronic Book | 17725-1001 | QA76.9 .D35 | Springer E-Book Collection |