Time Series Modelling with Unobserved Components

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A01=Matteo M. Pelagatti
advanced unobserved components analysis
ARMA Model
ARMA Process
Author_Matteo M. Pelagatti
Autocovariance Function
band-pass filters using UCMs
BK Filter
business cycle analysis
Category=KCH
Category=PBT
Common Cycle
Conditional Expectation
Covariance Matrices
cycle
Dummy Variables
eq_bestseller
eq_business-finance-law
eq_isMigrated=1
eq_isMigrated=2
eq_nobargain
eq_non-fiction
estimation of models in state space form
HP Filter
integrated
Integrated Random Walk
Kalman Filter
linear
LLT
local
missing data handling
multivariate time series
Optimal Linear Predictor
Optimal Predictor
Quadratic Loss Function
random
Random Walk
seasonal
Seasonal Component
software for UCM
Stamp
State Space Form
state space modeling
statistical forecasting methods
stochastic
Stochastic Cycle
Time Series
time series analysis
time series and prediction theory
time series decomposition
trend
UCM
UCMs to model time series data
Unobserved Components
unobserved components model (UCM)
walk
walks
White Noise Sequences
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Product details

  • ISBN 9781482225006
  • Weight: 521g
  • Dimensions: 156 x 234mm
  • Publication Date: 28 Jul 2015
  • Publisher: Taylor & Francis Inc
  • Publication City/Country: US
  • Product Form: Hardback
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Despite the unobserved components model (UCM) having many advantages over more popular forecasting techniques based on regression analysis, exponential smoothing, and ARIMA, the UCM is not well known among practitioners outside the academic community. Time Series Modelling with Unobserved Components rectifies this deficiency by giving a practical overview of the UCM approach, covering some theoretical details, several applications, and the software for implementing UCMs.

The book’s first part discusses introductory time series and prediction theory. Unlike most other books on time series, this text includes a chapter on prediction at the beginning because the problem of predicting is not limited to the field of time series analysis.

The second part introduces the UCM, the state space form, and related algorithms. It also provides practical modeling strategies to build and select the UCM that best fits the needs of time series analysts.

The third part presents real-world applications, with a chapter focusing on business cycle analysis and the construction of band-pass filters using UCMs. The book also reviews software packages that offer ready-to-use procedures for UCMs as well as systems popular among statisticians and econometricians that allow general estimation of models in state space form.

This book demonstrates the numerous benefits of using UCMs to model time series data. UCMs are simple to specify, their results are easy to visualize and communicate to non-specialists, and their forecasting performance is competitive. Moreover, various types of outliers can easily be identified, missing values are effortlessly managed, and working contemporaneously with time series observed at different frequencies poses no problem.

Matteo M. Pelagatti

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