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Enviado por Gilmar flag Denunciar. The first three chapters of the book are introductory and review material extensively used in later chapters.
Methods for applied macroeconomic research – Canova F. (PUP, 2007)
In particular, chapter 1 presents basic time series and probability concepts, a list of useful law of large numbers and central limit theorems, which are employed in the discussions of chapters 4 to 8, and gives a brief overview of the basic elements of spectral analysis, heavily used in chapters 3, 5 and 7.
Chapter 2 presents a number of macroeconomic models currently ii used in appliied profession and discusses numerical methods needed to solve them.
Most of the examples and exercises of this book are based on versions of these models. Chapter 3 discusses procedures used to obtain interesting macroeconoomic about secular and cyclical fluctuations in the data.
In the remaining chapters we present various methodologies to confront models to the data and discuss how they can be used to address other interesting economic questions. Given our empirical perspective, formal results are researvh stated without proofs and em- phasis is given to their use in particular macroeconomic applications.
Chapter 4 describes minimalist vector autoregressive VAR approaches, where a limited amount of economic theory is used to structure the data. Chapter 6 examines full information Maximum Likeli- hood and in chapter 7 Calibration techniques are discussed.
The book is largely self-contained but presumes a basic knowledge of modern macroeco- nomic theory say, one or two quarters of a Ph. Roughly, the first 5 chapters and the seventh could be thought in eesearch part, chapter 6 and the last four in the second part. This is the setup I have used in teaching this material over a number years and it seems the natural division between what I consider basic and advanced material.
To all goes my thanks. I have learned a lot through the process of writing this book mtehods teaching its material, probably as much as students have learned from the lectures and practical sessions. Three people taught me to approach empirical problems in a sensible but rigorous way, combining economic theory with advanced statistical tools and numerical methods, and to be suspicious and critical of analyses which leave out one of the main ingredients of the cake.
Adrian Pagan shaped my somewhat cynical view mwcroeconomic what should and can be done with the data and the models. I always like to argue with him because his unconventional views helped to bring out often forgotten methodological and practical aspects. And on most issues of interest to applied macroeconomists he mwthods more often right than wrong.
Fabio Canova (Author of Methods for Applied Macroeconomic Research)
This book would not have been possible without their fundamental inputs. As mentors, there was no one comparable to them. I also have an intellectual debit with Ed Prescott. Yet, when I found a new example or an application where the ideas of this book could be used, I regained the excitement of the first days. I need to thank my restricted and extended family for the patience they endured during the long process that lead to the completion of this book.
Dynamic macroeconomics is in part about intertemporal substitution. Patience is probably built on the same principle. Preliminaries This chapter is introductory and it is intended for readers who are unfamiliar with time series concepts, with macroeconomid properties of stochastic processes, with basic asymptotic theory results and with the a-b-c of spectral analysis.
Those who feel comfortable with these topics can skip.