Using methods from machine learning we show that fundamentals from simple exchange rate models (PPP or UIRP) or Taylor-rule based models lead to improved exchange rate forecasts for major currencies over the floating period era 1973--2014 at a 1-month forecast horizon which beat the no-change forecast. Fundamentals thus contain useful information and exchange rates are forecastable even for short horizons. Such conclusions cannot be obtained when using rolling or recursive OLS regressions as used in the literature. The methods we use -- sequential ridge regression and the exponentially weighted average strategy, both with discount factors -- do not estimate an underlying model but combine the fundamentals to directly output forecasts
This paper presents unprecedented exchange rate forecasting results based upon a new model which app...
A major puzzle in international finance is the well-documented inability of models based on monetary...
© 2020, Springer Science+Business Media, LLC, part of Springer Nature.Exchange rate movements can si...
Using methods from machine learning – adaptive sequential ridge regression with dis-count factors – ...
Data set and programs to reproduce the forecasts in "Fundamentals and exchange rate forecastabi...
Data set and programs to reproduce the forecasts in "Fundamentals and exchange rate forecastability ...
Historically, exchange rate forecasting models have exhibited poor out-of-sample performances and we...
Actually, exchange rate is a kind of important data in economy. There is immense economic informatio...
This study uses innovative tools recently proposed in the statistical learning literature to assess ...
The project titled "Currency Exchange Rate Prediction'' is the regression problem in Machine Learnin...
This paper focuses on an integration of the exchange rate theory in a machinery learning process for...
The exchange rate forecast is an important topic in international finance especially after the break...
In this article multiple Machine Learning algorithms have been analyzed in terms of currency rate fo...
Exchange rate models with uncertain and incomplete information predict that investors focus on a sma...
Exchange rate forecasting has become an arena for many researchers the last decades while predictabi...
This paper presents unprecedented exchange rate forecasting results based upon a new model which app...
A major puzzle in international finance is the well-documented inability of models based on monetary...
© 2020, Springer Science+Business Media, LLC, part of Springer Nature.Exchange rate movements can si...
Using methods from machine learning – adaptive sequential ridge regression with dis-count factors – ...
Data set and programs to reproduce the forecasts in "Fundamentals and exchange rate forecastabi...
Data set and programs to reproduce the forecasts in "Fundamentals and exchange rate forecastability ...
Historically, exchange rate forecasting models have exhibited poor out-of-sample performances and we...
Actually, exchange rate is a kind of important data in economy. There is immense economic informatio...
This study uses innovative tools recently proposed in the statistical learning literature to assess ...
The project titled "Currency Exchange Rate Prediction'' is the regression problem in Machine Learnin...
This paper focuses on an integration of the exchange rate theory in a machinery learning process for...
The exchange rate forecast is an important topic in international finance especially after the break...
In this article multiple Machine Learning algorithms have been analyzed in terms of currency rate fo...
Exchange rate models with uncertain and incomplete information predict that investors focus on a sma...
Exchange rate forecasting has become an arena for many researchers the last decades while predictabi...
This paper presents unprecedented exchange rate forecasting results based upon a new model which app...
A major puzzle in international finance is the well-documented inability of models based on monetary...
© 2020, Springer Science+Business Media, LLC, part of Springer Nature.Exchange rate movements can si...