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In Time Series Analysis and Adjustment the authors explain how the
last four decades have brought dramatic changes in the way
researchers analyze economic and financial data on behalf of
economic and financial institutions and provide statistics to
whomsoever requires them. Such analysis has long involved what is
known as econometrics, but time series analysis is a different
approach driven more by data than economic theory and focused on
modelling. An understanding of time series and the application and
understanding of related time series adjustment procedures is
essential in areas such as risk management, business cycle
analysis, and forecasting. Dealing with economic data involves
grappling with things like varying numbers of working and trading
days in different months and movable national holidays. Special
attention has to be given to such things. However, the main problem
in time series analysis is randomness. In real-life, data patterns
are usually unclear, and the challenge is to uncover hidden
patterns in the data and then to generate accurate forecasts. The
case studies in this book demonstrate that time series adjustment
methods can be efficaciously applied and utilized, for both
analysis and forecasting, but they must be used in the context of
reasoned statistical and economic judgment. The authors believe
this is the first published study to really deal with this issue of
context.
In Time Series Analysis and Adjustment the authors explain how the
last four decades have brought dramatic changes in the way
researchers analyze economic and financial data on behalf of
economic and financial institutions and provide statistics to
whomsoever requires them. Such analysis has long involved what is
known as econometrics, but time series analysis is a different
approach driven more by data than economic theory and focused on
modelling. An understanding of time series and the application and
understanding of related time series adjustment procedures is
essential in areas such as risk management, business cycle
analysis, and forecasting. Dealing with economic data involves
grappling with things like varying numbers of working and trading
days in different months and movable national holidays. Special
attention has to be given to such things. However, the main problem
in time series analysis is randomness. In real-life, data patterns
are usually unclear, and the challenge is to uncover hidden
patterns in the data and then to generate accurate forecasts. The
case studies in this book demonstrate that time series adjustment
methods can be efficaciously applied and utilized, for both
analysis and forecasting, but they must be used in the context of
reasoned statistical and economic judgment. The authors believe
this is the first published study to really deal with this issue of
context.
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