Summary
Contents
Subject index
Many analyses of time series data involve multiple, related variables. Multiple Time Series Models presents many specification choices and special challenges. This book reviews the main competing approaches to modeling multiple time series: simultaneous equations, ARIMA, error correction models, and vector autoregression. The text focuses on vector autoregression (VAR) models as a generalization of the other approaches mentioned. Specification, estimation, and inference using these models is discussed. The authors also review arguments for and against using multi-equation time series models. Two complete, worked examples show how VAR models can be employed. An appendix discusses software that can be used for multiple time series models and software code for replicating the examples is available.Key FeaturesOffers a detailed comparison of different time series methods and approaches. Includes a self-contained introduction to vector autoregression modeling. Situates multiple time series modeling as a natural extension of commonly taught statistical models.
Introduction to Multiple Time Series Models
Introduction to Multiple Time Series Models
Many social science data problems are multivariate and dynamic in nature. For example, how is public sentiment about the president's job performance related to the aggregate economic performance of the country? Are arms expenditures by a series of countries related to each other or exogenous? Are the actions directed ...
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