This paper describes a forecasting exercise of close-to-open returns on major global stock indices, based on price patterns from foreign markets that have become available overnight. As the close-to-open gap is a scalar response variable to a functional variable, it is natural to focus on functional data analysis. Both parametric and non-parametric modeling strategies are considered, and compared with a simple linear benchmark model. The overall best performing model is nonparametric, suggesting the presence of nonlinear relations between the overnight price patterns and the opening gaps. This effect is mainly due to the European and Asian markets. The North-American and Australian markets appear to be informationally more efficient in that...
In this paper we study how overnight price movements in local markets affect the trading activity of...
This thesis provides additional evidence for the existence of an overnight effect on daily stock ret...
The increased availability of high frequency data sets have led to important new insights in underst...
This paper describes a forecasting exercise of close-to-open returns on major global stock indices, ...
This paper describes a forecasting exercise of close-to-open returns on major global stock indices, ...
This paper describes a forecasting exercise of close-to-open returns on major global stock indices, ...
Based on the theory of international stock market co-movements, this study shows that a profitable t...
In this paper we study how overnight price movements in local markets affect the trading activity of...
The present research analyses overnight returns’ outperformance in relation to daytime returns. In a...
This paper provides a comprehensive evaluation of the predictive ability of information accumulated ...
This paper provides a comprehensive evaluation of the predictive ability of information accumulated ...
This paper proposes a new bivariate modeling approach for setting daily equity-trading risk limits u...
In this paper we study how overnight price movements in local markets affect the trading activity of...
This paper examines the interaction between international national stock markets using daily data an...
This paper uses the foreign information transmission (FIT) model of Ibrahim and Brzeszczynski [Inter...
In this paper we study how overnight price movements in local markets affect the trading activity of...
This thesis provides additional evidence for the existence of an overnight effect on daily stock ret...
The increased availability of high frequency data sets have led to important new insights in underst...
This paper describes a forecasting exercise of close-to-open returns on major global stock indices, ...
This paper describes a forecasting exercise of close-to-open returns on major global stock indices, ...
This paper describes a forecasting exercise of close-to-open returns on major global stock indices, ...
Based on the theory of international stock market co-movements, this study shows that a profitable t...
In this paper we study how overnight price movements in local markets affect the trading activity of...
The present research analyses overnight returns’ outperformance in relation to daytime returns. In a...
This paper provides a comprehensive evaluation of the predictive ability of information accumulated ...
This paper provides a comprehensive evaluation of the predictive ability of information accumulated ...
This paper proposes a new bivariate modeling approach for setting daily equity-trading risk limits u...
In this paper we study how overnight price movements in local markets affect the trading activity of...
This paper examines the interaction between international national stock markets using daily data an...
This paper uses the foreign information transmission (FIT) model of Ibrahim and Brzeszczynski [Inter...
In this paper we study how overnight price movements in local markets affect the trading activity of...
This thesis provides additional evidence for the existence of an overnight effect on daily stock ret...
The increased availability of high frequency data sets have led to important new insights in underst...