Time Series Analysis

Regular price €127.99
A01=Henrik Madsen
advanced linear stochastic modeling applications
ARMA Model
ARMAX Model
Author_Henrik Madsen
Autocorrelation Function
Autocovariance Function
Bivariate AR
Category=KCH
Category=PBT
Conditional Expectation
dynamic process identification
eq_bestseller
eq_business-finance-law
eq_isMigrated=1
eq_isMigrated=2
eq_nobargain
eq_non-fiction
Frequency Response Function
Impulse Response Function
Kalman Filter
Laplace Transform
linear systems analysis
Model Checking
Multivariate ARMA
multivariate statistics
Optimal Linear Predictor
Partial Autocorrelation Function
Partial Correlation Matrix
Persistent Predictor
RLS
RLS Algorithm
Smoothing Constant
spectral methods
State Space Form
State Space Model
statistical forecasting
stochastic modeling
Transfer Function Component
Transfer Function Model
Variance ?2?
Variance Σ2ε
Vice Versa

Product details

  • ISBN 9781420059670
  • Weight: 900g
  • Dimensions: 156 x 234mm
  • Publication Date: 28 Nov 2007
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Hardback
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With a focus on analyzing and modeling linear dynamic systems using statistical methods, Time Series Analysis formulates various linear models, discusses their theoretical characteristics, and explores the connections among stochastic dynamic models. Emphasizing the time domain description, the author presents theorems to highlight the most important results, proofs to clarify some results, and problems to illustrate the use of the results for modeling real-life phenomena.

The book first provides the formulas and methods needed to adapt a second-order approach for characterizing random variables as well as introduces regression methods and models, including the general linear model. It subsequently covers linear dynamic deterministic systems, stochastic processes, time domain methods where the autocorrelation function is key to identification, spectral analysis, transfer-function models, and the multivariate linear process. The text also describes state space models and recursive and adaptivemethods. The final chapter examines a host of practical problems, including the predictions of wind power production and the consumption of medicine, a scheduling system for oil delivery, and the adaptive modeling of interest rates.

Concentrating on the linear aspect of this subject, Time Series Analysis provides an accessible yet thorough introduction to the methods for modeling linear stochastic systems. It will help you understand the relationship between linear dynamic systems and linear stochastic processes.

Technical University Denmark, Lyngby, Denmark