1. Working with Data Collected Over Time, 2. Exploring Time Series Data, 3. Statistical Basics for Time Series Analysis, 4. The Frequency Domain, 5. ARMA Models, 6. ARMA Fitting and Forecasting, 7. ARIMA, Seasonal,and ARCH/GARCH Models, 8. Time Series Regression, 9. Model Assessment, 10. Multivariate Time Series, 11. Deep Neural Network Based Time Series Models
Wayne Woodward, Bivin Sadler, Stephen Robertson
"A well-structured text aimed at undergraduates pursuing a data
science curriculum, or MBA students. The authors draw upon their
vast combined experience in research and teaching to a variety of
audiences to present the classical material on ARMA-based
Box-Jenkins methodology without assuming a calculus background.
Yet, their approach manages to be heuristic, while not sacrificing
relevant theoretical detail that enriches understanding. The
authors complement this material with chapters on multivariate
models, and, refreshingly, a very enlightening discussion on neural
networks. The exposition is lucid, well-organized, and copiously
illustrated to reinforce comprehension of concepts. The companion R
package (tswge) finds a niche in the growing list of time series
toolboxes, by providing clean, straightforward functionality on
such essentials as spectrum reconstruction and model factor tables
to glean the structure of AR and MA polynomials."
- Alex Trindade, Texas Tech University
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