Co-Integration, Error Correction, and the Econometric Analysis of Non-Stationary Data

A. Banerjee, J. Dolado, John W. Galbraith, D. Hendry
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引用次数: 2340

Abstract

This book provides a wide-ranging account of the literature on co-integration and the modelling of integrated processes (those which accumulate the effects of past shocks). Data series which display integrated behaviour are common in economics, although techniques appropriate to analysing such data are of recent origin and there are few existing expositions of the literature. This book focuses on the exploration of relationships among integrated data series and the exploitation of these relationships in dynamic econometric modelling. The concepts of co-integration and error-correction models are fundamental components of the modelling strategy. This area of time-series econometrics has grown in importance over the past decade and is of interest to econometric theorists and applied econometricians alike. By explaining the important concepts informally, but also presenting them formally, the book bridges the gap between purely descriptive and purely theoretical accounts of the literature. The asymptotic theory of integrated processes is described and the tools provided by this theory are used to develop the distributions of estimators and test statistics. Practical modelling advice, and the use of techniques for systems estimation, are also emphasized. A knowledge of econometrics, statistics, and matrix algebra at the level of a final-year undergraduate or first-year undergraduate course in econometrics is sufficient for most of the book. Other mathematical tools are described as they occur.
协整、误差校正与非平稳数据的计量经济学分析
这本书提供了广泛的文献对协整和综合过程的建模(那些积累过去冲击的影响)。显示综合行为的数据系列在经济学中很常见,尽管适合分析此类数据的技术是最近才出现的,而且现有的文献论述很少。这本书的重点是综合数据系列之间的关系的探索和利用这些关系在动态计量经济建模。协整和误差校正模型的概念是建模策略的基本组成部分。时间序列计量经济学的这一领域在过去十年中变得越来越重要,并且引起了计量经济学理论家和应用计量经济学家的兴趣。通过非正式地解释重要的概念,但也正式地提出它们,这本书弥合了纯粹描述性和纯粹理论性文献之间的差距。描述了积分过程的渐近理论,并利用该理论提供的工具来推导估计量的分布和检验统计量。还强调了实际建模建议和系统评估技术的使用。计量经济学,统计学和矩阵代数的知识在最后一年或第一年的计量经济学本科课程的水平是足够的,大部分的书。其他数学工具也会如实描述。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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