In this paper, a large amount of different financial and macroeconomic variables are used to predict the U.S. recession periods. We propose a new cost-sensitive extension to the gradient boosting model which can take into account the class imbalance problem of the binary response variable. The class imbalance, caused by the scarcity of recession periods in our application, is a problem that is emphasized with high-dimensional datasets. Our empirical results show that the introduced cost-sensitive extension outperforms the traditional gradient boosting model in both in-sample and out-of-sample forecasting. Among the large set of candidate predictors, different types of interest rate spreads turn out to be the most important predictors when f...
This paper advances beyond the prediction of the probability of a recession by also considering its ...
This paper analyses to what extent a selection of leading indicators is able to forecast U.S. recess...
Thesis (Ph.D.)--University of Washington, 2021This dissertation studies how and if mixed frequency t...
In this paper, a large amount of different financial and macroeconomic variables are used to predict...
Economic recessions are costly, and are among other things associated with high unemployment rates, ...
The most representative machine learning techniques are implemented for modeling and forecasting U.S...
The recession forecasting literature has invested the use of different machine learning algorithms t...
Most representative decision-tree ensemble methods have been used to examine the variable importance...
This paper introduces the Super Learner to nowcast and forecast the probability of a US economy rece...
In this paper, I use a large set of macroeconomic and financial predictors to forecast U.S. recessio...
This paper explores the effectiveness of boosting, often regarded as the state of the art classifica...
In the process of bankruptcy prediction models, a class imbalanced problem has occurred which limits...
Abstract. This paper explores the effectiveness of boosting, often regarded as the state of the art ...
The negative effects of data shifts on machine learning (ML) model performance have been extensively...
In the recent years there has been an explosive increase in the number of research papers using mach...
This paper advances beyond the prediction of the probability of a recession by also considering its ...
This paper analyses to what extent a selection of leading indicators is able to forecast U.S. recess...
Thesis (Ph.D.)--University of Washington, 2021This dissertation studies how and if mixed frequency t...
In this paper, a large amount of different financial and macroeconomic variables are used to predict...
Economic recessions are costly, and are among other things associated with high unemployment rates, ...
The most representative machine learning techniques are implemented for modeling and forecasting U.S...
The recession forecasting literature has invested the use of different machine learning algorithms t...
Most representative decision-tree ensemble methods have been used to examine the variable importance...
This paper introduces the Super Learner to nowcast and forecast the probability of a US economy rece...
In this paper, I use a large set of macroeconomic and financial predictors to forecast U.S. recessio...
This paper explores the effectiveness of boosting, often regarded as the state of the art classifica...
In the process of bankruptcy prediction models, a class imbalanced problem has occurred which limits...
Abstract. This paper explores the effectiveness of boosting, often regarded as the state of the art ...
The negative effects of data shifts on machine learning (ML) model performance have been extensively...
In the recent years there has been an explosive increase in the number of research papers using mach...
This paper advances beyond the prediction of the probability of a recession by also considering its ...
This paper analyses to what extent a selection of leading indicators is able to forecast U.S. recess...
Thesis (Ph.D.)--University of Washington, 2021This dissertation studies how and if mixed frequency t...