Description

Book Synopsis
Time series, or longitudinal, data are ubiquitous in the social sciences. Unfortunately, analysts often treat the time series properties of their data as a nuisance rather than a substantively meaningful dynamic process to be modeled and interpreted. Time Series Analysis for the Social Sciences provides accessible, up-to-date instruction and examples of the core methods in time series econometrics. Janet M. Box-Steffensmeier, John R. Freeman, Jon C. Pevehouse and Matthew P. Hitt cover a wide range of topics including ARIMA models, time series regression, unit-root diagnosis, vector autoregressive models, error-correction models, intervention models, fractional integration, ARCH models, structural breaks, and forecasting. This book is aimed at researchers and graduate students who have taken at least one course in multivariate regression. Examples are drawn from several areas of social science, including political behavior, elections, international conflict, criminology, and comparative

Table of Contents
1. Modeling social dynamics; 2. Univariate time series models; 3. Dynamic regression models; 4. Modeling the dynamics of social systems; 5. Univariate, nonstationary processes: tests and modeling; 6. Co-integration and error-correction models; 7. Selections on time series analysis; 8. Concluding thoughts for the time series analyst.

Time Series Analysis for the Social Sciences

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    Order before 4pm tomorrow for delivery by Sat 27 Jun 2026.

    A Paperback by Janet M. Box-Steffensmeier, John R. Freeman, Matthew P. Hitt

    15 in stock


      View other formats and editions of Time Series Analysis for the Social Sciences by Janet M. Box-Steffensmeier

      Publisher: Cambridge University Press
      Publication Date: 12/22/2014 12:00:00 AM
      ISBN13: 9780521691550, 978-0521691550
      ISBN10: 0521691559

      Description

      Book Synopsis
      Time series, or longitudinal, data are ubiquitous in the social sciences. Unfortunately, analysts often treat the time series properties of their data as a nuisance rather than a substantively meaningful dynamic process to be modeled and interpreted. Time Series Analysis for the Social Sciences provides accessible, up-to-date instruction and examples of the core methods in time series econometrics. Janet M. Box-Steffensmeier, John R. Freeman, Jon C. Pevehouse and Matthew P. Hitt cover a wide range of topics including ARIMA models, time series regression, unit-root diagnosis, vector autoregressive models, error-correction models, intervention models, fractional integration, ARCH models, structural breaks, and forecasting. This book is aimed at researchers and graduate students who have taken at least one course in multivariate regression. Examples are drawn from several areas of social science, including political behavior, elections, international conflict, criminology, and comparative

      Table of Contents
      1. Modeling social dynamics; 2. Univariate time series models; 3. Dynamic regression models; 4. Modeling the dynamics of social systems; 5. Univariate, nonstationary processes: tests and modeling; 6. Co-integration and error-correction models; 7. Selections on time series analysis; 8. Concluding thoughts for the time series analyst.

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