
A Practical Guide to Heavy Tails
Statistical Techniques and Applications
Birkhauser Boston Inc (Publisher)
Published on 26. October 1998
Book
Hardback
XVI, 534 pages
978-0-8176-3951-8 (ISBN)
Description
Presents techniques and approaches for the statistical analysis of heavy-tailed distributions and processes, with a focus on applicability rather than theory. Emphasis is placed upon numerical problems associated with stable distributions, time series analysis and regression.
Reviews / Votes
"The editors and contributors have done a marvelous job. Professional statisticians and applied mathematicians will find it fascinating for its presentation and documentation of versatile methods for handling troublesome data." -Computing Reviews
More details
Edition
1998 ed.
Language
English
Place of publication
Boston
United States
Target group
Professional and scholarly
Research
Edition type
New edition
Illustrations
XVI, 534 p.
Dimensions
Height: 260 mm
Width: 183 mm
Thickness: 35 mm
Weight
1221 gr
ISBN-13
978-0-8176-3951-8 (9780817639518)
Schweitzer Classification
Other editions
Previous edition
Robert J. Adler | Raisa E. Feldman | Murad S. Taqqu
A Practical Guide to Heavy Tails
Statistical Techniques and Applications
Book
07/1998
2nd Edition
Birkhäuser Verlag GmbH
€66.85
Article exhausted; check for reprint
Content
Part 1 Applications: heavy tailed probability distributions in the World Wide Web, M.E. Crovella et al; self-similarity and heavy tails - structural modelling of network traffic, W. Willinger et al; heavy tails in high-frequency financial data, U.A. Muller et al; stable paretian modelling in finance - some empirical and theoretical aspects, S. Mittnik et al; risk management and quantile estimation, F. Bassi et al. Part 2 Time series: analyzing stable time series, R.J. Adler et al; inference for linear processes with stable noise, m. Calder, R.A. Davis; on estimating the intensity of long-range dependence in finite and infinite variance time series, M.S. Taqqu, V. Teverovsky; why non-linearities can ruin the heavy tailed modeller's day, S.I. Resnick; periodogram estimates from heavy-tailed data, T. Mikosch; Bayesian inference for time series with infinite variance stable innovations, N. Ravishanker, Z. Qiou. Part 3 Heavy tail estimation: hill, bootstrap and jackknife estimators for heavy tails, O.V. Pictet et al; characteristic function based estimation of stable distribution parameters, S.M. Kogan. D.B. Williams. Part 4 Regression: bootstrapping signs and permutations for regression with heavy tailed errors - a robust resampling, R. LePage et al; linear regression with stable disturbances, J.H. McCulloch. Part 5 Signal processing: deviation from normality in statistical signal processing - parameter estimation with alpha-stable distributions, P. Tsakalides, C.L. Nikias; statistical modelling and receiver design for multi-user communication networks, G.A. Tsihrintzis. Part 6 Model structures: subexponential distributions, C.M. Goldie, C. Kluppelberg; structure of stationary stable processes, J. Rosinski; tail behaviour of some shot noise processes, G. Samorodnitsky. Part 7 Numerical procedures: numerical approximation of the symmetric stable distribution and density, J.H. McCulloch; table of the maximally-skewed stable distributions, J.H. McCulloch, D.B. Panton; multivariate stable distributions - approximation, estimation, simulation and identification, J.P. Nolan; univariate stable distributions -parametrizations and software, J.P. Nolan.