11,679 research outputs found
The Earth's Gamma-ray Albedo as observed by EGRET
The Earth's high energy gamma-ray emission is caused by cosmic ray
interactions with the atmosphere. The EGRET detector on-board the CGRO
satellite is only the second experiment (after SAS-2) to provide a suitable
dataset for the comprehensive study of this emission. Approximately 60% of the
EGRET dataset consist of gamma photons from the Earth. This conference
contribution presents the first results from the first analysis project to
tackle this large dataset. Ultimate purpose is to develop an analytical model
of the Earth's emission for use in the GLAST project. The results obtained so
far confirm the earlier results from SAS-2 and extend them in terms of
statistical precision and angular resolution.Comment: To be published in the proceedings of the Gamma 2004 Symposium on
High-Energy Gamma-Ray Astronomy, Heidelberg, July, 2004 (AIP Proceedings
Series
Faster Background Determination - a method for gaining time coverage and flux measurement accuracy with Cherenkov telescopes
An improved way of taking off-source data for background determination in
Cherenkov telescope observations is proposed. Generalizing the traditional
concept of taking on-source/off-source observations of equal duration (e.g. 30
minutes ON followed by 30 minutes OFF), Faster Background Determination (FBD)
permits an off-source observation with the same zenith angle distribution as
the on-source observation to be obtained within less time. The method permits
the on-source observation time to be maximized without compromising the quality
of the background determination. It also increases the signal significance for
strong sources. The only modification necessary in the data acquisition is a
small change to the tracking algorithm. The only modification necessary in the
data analysis is to introduce a time normalization which does not increase the
systematic errors. The method could become the normal observing mode for
Cherenkov telescopes when observing strong sources.Comment: LaTeX, 13 pages, 4 figures, Astropart. Phys., in pres
Nonparametric Estimation of the Link Function Including Variable Selection
Nonparametric methods for the estimation of the link function in generalized linear models are able to avoid bias in the regression parameters. But for the estimation of the link typically the full model, which includes all predictors, has been used. When the number of predictors is large these methods fail since the full model can not be estimated. In the present article a boosting type method is proposed that simultaneously selects predictors and estimates the link function. The method performs quite well in simulations and real data examples
Shrinkage and Variable Selection by Polytopes
Constrained estimators that enforce variable selection and grouping of highly correlated data have been shown to be successful in finding sparse representations and obtaining good performance in prediction. We consider polytopes as a general class of compact and convex constraint regions. Well
established procedures like LASSO (Tibshirani, 1996) or OSCAR (Bondell and Reich, 2008) are shown to be based on specific subclasses of polytopes. The general framework of polytopes can be used to investigate the geometric structure that underlies these procedures. Moreover, we propose a specifically designed class of polytopes that enforces variable selection and grouping. Simulation studies and an application illustrate the usefulness of the proposed method
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