This paper promotes information theoretic inference in the context of minimum distance estimation. Various score test statistics differ only through the embedded estimator of the variance of estimating functions. We resort to implied probabilities provided by the constrained maximization of generalized entropy to get a more accurate variance estimator under the null. We document, both by theoretical higher order expansions and by Monte-Carlo evidence, that our improved score tests have better finite-sample size properties. The competitiveness of our non-simulation based method with respect to bootstrap is confirmed in the example of inference on covariance structures previously studied by Horowitz (1998)
This thesis documents three different contributions in statistical learning theory. They were develo...
summary:The paper deals with sufficient conditions for the existence of general approximate minimum ...
In this paper, we construct two tests for the weights of the global minimum variance portfolio (GMVP...
The optimal minimum distance (OMD) estimator for models of covariance structures is asymptotically e...
In this doctoral thesis, we establish a method which aims to improve the maximum likelihood estimato...
The aim of this paper is to complement the minimum distance estimation-structural vector autoregress...
Jagannathan andWang (1996) derive the asymptotic distribution of the Hansen-Jagannathan distance (HJ...
Jagannathan andWang (1996) derive the asymptotic distribution of the Hansen-Jagannathan distance (HJ...
To test whether a set of data has a specific distribution or not, we can use the goodness of fit te...
The Minimum Distance test in the DIEHARD suite for validating random number generators often indicat...
Consider testing the null hypothesis that a given population has location parameter greater than or ...
This paper studies the Minimum Divergence (MD) class of estimators for econometric models specified...
We study Kolmogorov–Smirnov goodness-of-fit tests for evaluating distributional hypotheses where unk...
The proof of consistency for the kth nearest neighbour distance estimator of the Shannon entropy fo...
We study the influence of a bandwidth parameter in inference with conditional estimating equations. ...
This thesis documents three different contributions in statistical learning theory. They were develo...
summary:The paper deals with sufficient conditions for the existence of general approximate minimum ...
In this paper, we construct two tests for the weights of the global minimum variance portfolio (GMVP...
The optimal minimum distance (OMD) estimator for models of covariance structures is asymptotically e...
In this doctoral thesis, we establish a method which aims to improve the maximum likelihood estimato...
The aim of this paper is to complement the minimum distance estimation-structural vector autoregress...
Jagannathan andWang (1996) derive the asymptotic distribution of the Hansen-Jagannathan distance (HJ...
Jagannathan andWang (1996) derive the asymptotic distribution of the Hansen-Jagannathan distance (HJ...
To test whether a set of data has a specific distribution or not, we can use the goodness of fit te...
The Minimum Distance test in the DIEHARD suite for validating random number generators often indicat...
Consider testing the null hypothesis that a given population has location parameter greater than or ...
This paper studies the Minimum Divergence (MD) class of estimators for econometric models specified...
We study Kolmogorov–Smirnov goodness-of-fit tests for evaluating distributional hypotheses where unk...
The proof of consistency for the kth nearest neighbour distance estimator of the Shannon entropy fo...
We study the influence of a bandwidth parameter in inference with conditional estimating equations. ...
This thesis documents three different contributions in statistical learning theory. They were develo...
summary:The paper deals with sufficient conditions for the existence of general approximate minimum ...
In this paper, we construct two tests for the weights of the global minimum variance portfolio (GMVP...