5,756 research outputs found
Improved maximum likelihood estimators in a heteroskedastic errors-in-variables model
This paper develops a bias correction scheme for a multivariate
heteroskedastic errors-in-variables model. The applicability of this model is
justified in areas such as astrophysics, epidemiology and analytical chemistry,
where the variables are subject to measurement errors and the variances vary
with the observations. We conduct Monte Carlo simulations to investigate the
performance of the corrected estimators. The numerical results show that the
bias correction scheme yields nearly unbiased estimates. We also give an
application to a real data set.Comment: 12 pages. Statistical Paper
Bias correction in a multivariate normal regression model with general parameterization
This paper develops a bias correction scheme for a multivariate normal model
under a general parameterization. In the model, the mean vector and the
covariance matrix share the same parameters. It includes many important
regression models available in the literature as special cases, such as
(non)linear regression, errors-in-variables models, and so forth. Moreover,
heteroscedastic situations may also be studied within our framework. We derive
a general expression for the second-order biases of maximum likelihood
estimates of the model parameters and show that it is always possible to obtain
the second order bias by means of ordinary weighted lest-squares regressions.
We enlighten such general expression with an errors-in-variables model and also
conduct some simulations in order to verify the performance of the corrected
estimates. The simulation results show that the bias correction scheme yields
nearly unbiased estimators. We also present an empirical ilustration.Comment: 1 Figure, 17 page
Software-defined networking: guidelines for experimentation and validation in large-scale real world scenarios
Part 1: IIVC WorkshopInternational audienceThis article thoroughly details large-scale real world experiments using Software-Defined Networking in the testbed setup. More precisely, it provides a description of the foundation technology behind these experiments, which in turn is focused around OpenFlow and on the OFELIA testbed. In this testbed preliminary experiments were performed in order to tune up settings and procedures, analysing the encountered problems and their respective solutions. A methodology consisting of five large-scale experiments is proposed in order to properly validate and improve the evaluation techniques used in OpenFlow scenarios
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