© The Author, 2015. Published by Oxford University Press. All rights reserved.When excess returns are used to estimate linear stochastic discount factor (SDF) models, researchers often adopt a normalization of the SDF that sets its mean to 1, or one that sets its intercept to 1. These normalizations are often treated as equivalent, but they are subtly different both in population, and in finite samples. Standard asymptotic inference relies on rank conditions that differ across the two normalizations, and which can fail to differing degrees. I first establish that failure of the rank conditions is a genuine concern for many well-known SDF models in the literature. I also describe how failure of the rank conditions can affect inference, both ...
textabstractThis paper discusses statistical inference on the second-order stochastic dominance (SSD...
Canada. In a simple standardized factor model, Kan and Zhou (1999) show that the estimate of the par...
Thesis (Ph. D.)--University of Washington, 1997This paper introduces a new approach to testing conti...
When excess returns are used to estimate linear stochastic discount factor (SDF) models, researchers...
In this paper, we point out that the widely used stochastic discount factor (SDF) methodology ignore...
In this paper, we point out that the widely used stochastic discount factor (SDF) methodology ignore...
Lots of risk factors have been published in Finance papers in the last 20 years. Under a large menu,...
In a recent Journal of Finance article, Kan and Zhou (1999) find that the “Stochastic discount facto...
Risk factors in many consumption-based asset pricing models display statistically weak correlation w...
We propose a novel statistic to test the rank of a matrix. The rank statistic overcomes deficiencies...
Title: Stochastical inference in the model of extreme events Author: Jan Dienstbier Department/Insti...
We present a theorem helpful in estimating the mean and variance of a linear function with arbitrary...
This dissertation establishes tools for valid inference in models that are only generically identifi...
AbstractIn reduced-rank regression, a matrix of expectations is modeled as a lower rank matrix. In f...
We aim to provide a review of the stochastic discount factor bounds usually applied to diagnose asse...
textabstractThis paper discusses statistical inference on the second-order stochastic dominance (SSD...
Canada. In a simple standardized factor model, Kan and Zhou (1999) show that the estimate of the par...
Thesis (Ph. D.)--University of Washington, 1997This paper introduces a new approach to testing conti...
When excess returns are used to estimate linear stochastic discount factor (SDF) models, researchers...
In this paper, we point out that the widely used stochastic discount factor (SDF) methodology ignore...
In this paper, we point out that the widely used stochastic discount factor (SDF) methodology ignore...
Lots of risk factors have been published in Finance papers in the last 20 years. Under a large menu,...
In a recent Journal of Finance article, Kan and Zhou (1999) find that the “Stochastic discount facto...
Risk factors in many consumption-based asset pricing models display statistically weak correlation w...
We propose a novel statistic to test the rank of a matrix. The rank statistic overcomes deficiencies...
Title: Stochastical inference in the model of extreme events Author: Jan Dienstbier Department/Insti...
We present a theorem helpful in estimating the mean and variance of a linear function with arbitrary...
This dissertation establishes tools for valid inference in models that are only generically identifi...
AbstractIn reduced-rank regression, a matrix of expectations is modeled as a lower rank matrix. In f...
We aim to provide a review of the stochastic discount factor bounds usually applied to diagnose asse...
textabstractThis paper discusses statistical inference on the second-order stochastic dominance (SSD...
Canada. In a simple standardized factor model, Kan and Zhou (1999) show that the estimate of the par...
Thesis (Ph. D.)--University of Washington, 1997This paper introduces a new approach to testing conti...