Applied Time Series Analysis for the Social Sciences

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A01=Regina Baker
A01=Regina M. Baker
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Arima probability
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Author_Regina M. Baker
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lag operator algebra
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pooled cross-section time series model
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social science time series
social science time series

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time series estimation
time series forecasting
vector autoregression

Product details

  • ISBN 9780470749937
  • Weight: 454g
  • Dimensions: 152 x 229mm
  • Publication Date: 25 Dec 2025
  • Publisher: John Wiley & Sons Inc
  • Publication City/Country: US
  • Product Form: Hardback
  • Language: English
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EXPLORE THIS INDISPENSABLE AND COMPREHENSIVE GUIDE TO TIME SERIES ANALYSIS FOR STUDENTS AND PRACTITIONERS IN A WIDE VARIETY OF DISCIPLINES

Applied Time Series Analysis for the Social Sciences: Specification, Estimation, and Inference delivers an accessible guide to time series analysis that includes both theory and practice. The coverage spans developments from ARIMA intervention models and generalized least squares to the London School of Economics (LSE) approach and vector autoregression. Designed to break difficult concepts into manageable pieces while offering plenty of examples and exercises, the author demonstrates the use of lag operator algebra throughout to provide a better understanding of dynamic specification and the connections between model specifications that appear to be more different than they are.

The book is ideal for those with minimal mathematical experience, intended to follow a course in multiple regression, and includes exercises designed to build general skills such as mathematical expectation calculations to derive means and variances. Readers will also benefit from the inclusion of:

  • A focus on social science applications and a mix of theory and detailed examples provided throughout
  • An accompanying website with data sets and examples in Stata, SAS and R
  • A simplified unit root testing strategy based on recent developments
  • An examination of various uses and interpretations of lagged dependent variables and the common pitfalls students and researchers face in this area
  • An introduction to LSE methodology such as the COMFAC critique, general-to-specific modeling, and the use of forecasting to evaluate and test models

Perfect for students and professional researchers in the political sciences, public policy, sociology, and economics, Applied Time Series Analysis for the Social Sciences: Specification, Estimation, and Inference will also earn a place in the libraries of post graduate students and researchers in public health, public administration and policy, and education.

REGINA M. BAKER has extensive experience teaching a time series course for the Inter-University Consortium for Political and Social Research summer program, the University of Oregon and the University of Notre Dame.

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