Recent empirical approaches in forecasting equity returns or premiums found that dynamic interactions among the stock and bond are relevant for long term pension products. Automatic procedures to upgrade or downgrade risk exposure could potentially improve long term performance for such products. The risk and return of bonds is more easy to predict than the risk and return of stocks. This and the well known stock-bond correlation motivates the inclusion of the current bond yield in a model for the prediction of excess stock returns. Here, we take the actuarial long term view using yearly data, and focus on nonlinear relationships between a set of covariates.Weemploy fully nonparametric models and apply for estimation a local-linear kernel s...
We systematically examine the comparative predictive performance of a number of alternative linear a...
This article investigates the out-of-sample predictability of bond excess returns. We assess the eco...
The paper proposes a class of nonlinear additive predictive regression models, which improve the lin...
Recent empirical approaches in forecasting equity returns or premiums found that dynamic interaction...
One of the most studied questions in economics and finance is whether empirical models can be used t...
With the prominent role of government debt in economic growth in recent decades, one would expect th...
We propose two new nonparametric predictive models: the multi-step nonparametric predictive regressi...
Few studies have been conducted to explain the variation in stock-bond correlations. However, to con...
This study examines the relationship between the high-yield bonds market and the stock market and in...
Since the 1990's run up in stock prices and subsequent crashes, the financial community has taken a ...
Abstract: This paper explores the implications of asset return predictability on long-term portfolio...
This paper explores the implications of asset return predictability for long-term portfolio choice w...
We systematically examine the comparative predictive performance of a number of linear and non-linea...
Since the 1990s run up in stock prices and the subsequent crashes, the financial community has taken...
We construct predicting factors based on the predictive errors of bond yields and macro variables im...
We systematically examine the comparative predictive performance of a number of alternative linear a...
This article investigates the out-of-sample predictability of bond excess returns. We assess the eco...
The paper proposes a class of nonlinear additive predictive regression models, which improve the lin...
Recent empirical approaches in forecasting equity returns or premiums found that dynamic interaction...
One of the most studied questions in economics and finance is whether empirical models can be used t...
With the prominent role of government debt in economic growth in recent decades, one would expect th...
We propose two new nonparametric predictive models: the multi-step nonparametric predictive regressi...
Few studies have been conducted to explain the variation in stock-bond correlations. However, to con...
This study examines the relationship between the high-yield bonds market and the stock market and in...
Since the 1990's run up in stock prices and subsequent crashes, the financial community has taken a ...
Abstract: This paper explores the implications of asset return predictability on long-term portfolio...
This paper explores the implications of asset return predictability for long-term portfolio choice w...
We systematically examine the comparative predictive performance of a number of linear and non-linea...
Since the 1990s run up in stock prices and the subsequent crashes, the financial community has taken...
We construct predicting factors based on the predictive errors of bond yields and macro variables im...
We systematically examine the comparative predictive performance of a number of alternative linear a...
This article investigates the out-of-sample predictability of bond excess returns. We assess the eco...
The paper proposes a class of nonlinear additive predictive regression models, which improve the lin...