The paper presents forecasts of headline and core inflation in Estonia with factor models in a recursive pseudo out-of-sample framework. The factors are constructed with a principal component analysis and are then incorporated into vector autoregressive (VAR) forecasting models. The analyses show that certain factor-augmented VAR models improve upon a simple univariate autoregressive model but the forecasting gains are small and not systematic. Models with a small number of factors extracted from a large dataset are best suited for forecasting headline inflation. The results also show that models with a larger number of factors extracted from a small dataset outperform the benchmark model in the forecast of Estonian headline and, especially...
Inflation is a constant and consistent increase in the general price level in the country, due to wh...
VAR modeling in inflation forecasting has been widely used, and rather successful, even if there hav...
Forecasting inflation accurately in a data-rich environment is a challenging task and an active rese...
In this paper, the application of two different unobserved factor models to a data set from Estonia ...
The purpose of this thesis is to investigate whether factor augmented vectorautoregression (FAVAR) m...
This paper tests whether information derived from 144 economic variables (represented by only a few ...
In this paper we apply the factor models to produce short-term forecasts for Lithuanian consumer and...
Vector autoregression (VAR) models are widely used in an attempt to identify and measure the effect ...
VAR modeling in inflation forecasting has been widely used, and rather successful, even if there hav...
Montenegro started using the euro in 2002 and regained independence in 2006. Its main economic pa...
In this paper, the dynamic common factors method of Forni et al. (2000) is applied to a large panel ...
The objective of model-building was an inflation model suitable for prognosis as well as for simulat...
Forecasting inflation is of key relevance for central banks, not least because the objective of low ...
Inflation is one of the crucial modern macroeconomic problems. Nowadays the issue of inflation is ve...
Inflation is one of the crucial modern macroeconomic problems. Nowadays the issue of inflation is ve...
Inflation is a constant and consistent increase in the general price level in the country, due to wh...
VAR modeling in inflation forecasting has been widely used, and rather successful, even if there hav...
Forecasting inflation accurately in a data-rich environment is a challenging task and an active rese...
In this paper, the application of two different unobserved factor models to a data set from Estonia ...
The purpose of this thesis is to investigate whether factor augmented vectorautoregression (FAVAR) m...
This paper tests whether information derived from 144 economic variables (represented by only a few ...
In this paper we apply the factor models to produce short-term forecasts for Lithuanian consumer and...
Vector autoregression (VAR) models are widely used in an attempt to identify and measure the effect ...
VAR modeling in inflation forecasting has been widely used, and rather successful, even if there hav...
Montenegro started using the euro in 2002 and regained independence in 2006. Its main economic pa...
In this paper, the dynamic common factors method of Forni et al. (2000) is applied to a large panel ...
The objective of model-building was an inflation model suitable for prognosis as well as for simulat...
Forecasting inflation is of key relevance for central banks, not least because the objective of low ...
Inflation is one of the crucial modern macroeconomic problems. Nowadays the issue of inflation is ve...
Inflation is one of the crucial modern macroeconomic problems. Nowadays the issue of inflation is ve...
Inflation is a constant and consistent increase in the general price level in the country, due to wh...
VAR modeling in inflation forecasting has been widely used, and rather successful, even if there hav...
Forecasting inflation accurately in a data-rich environment is a challenging task and an active rese...