13,500 research outputs found
Molecular alignment from circular dichroic photoelectron angular distributions in (n+1) resonance enhanced multiphoton ionization
The theory for determination of molecular alignment from circular dichroism in photoelectron angular distributions is generalized to treat the case in which the excitation polarization direction and the laboratory z axis do not coincide. A new method of data analysis is presented here. Alignment created by surface scattering or photofragmentation should be obtainable by these procedures. For studies of orientation with elliptically polarized excitation, differential cross sections at a given collection angle are found to be, to a good approximation, independent of excited-state alignment. Orientation can thus be obtained from differential cross sections by the methods developed by Kummel, Sitz, and Zare [J. Chem. Phys. 88, 6707 (1988)]
Matched subspace detection with hypothesis dependent noise power
We consider the problem of detecting a subspace signal in white Gaussian noise when the noise power may be different under the null hypothesisâwhere it is assumed to be knownâand the alternative hypothesis. This situation occurs when the presence of the signal of interest (SOI) triggers an increase in the noise power. Accordingly, it may be
relevant in the case of a mismatch between the actual SOI subspace and its presumed value, resulting in a modelling error. We derive the generalized likelihood ratio test
(GLRT) for the problem at hand and contrast it with the GLRT which assumes known and equal noise power under the two
hypotheses. A performance analysis is carried out and the distributions of the two test statistics are derived. From this analysis, we discuss the differences between the two detectors and provide explanations for the improved performance of the new detector. Numerical simulations attest to the validity of the analysis
Speed of coming down from infinity for birth and death processes
We finely describe the speed of "coming down from infinity" for birth and
death processes which eventually become extinct. Under general assumptions on
the birth and death rates, we firstly determine the behavior of the successive
hitting times of large integers. We put in light two different regimes
depending on whether the mean time for the process to go from to is
negligible or not compared to the mean time to reach from infinity. In the
first regime, the coming down from infinity is very fast and the convergence is
weak. In the second regime, the coming down from infinity is gradual and a law
of large numbers and a central limit theorem for the hitting times sequence
hold. By an inversion procedure, we deduce that the process is a.s. equivalent
to a non-increasing function when the time goes to zero. Our results are
illustrated by several examples including applications to population dynamics
and population genetics. The particular case where the death rate varies
regularly is studied in details.Comment: 30 pages. arXiv admin note: text overlap with arXiv:1310.740
Penalized estimation in large-scale generalized linear array models
Large-scale generalized linear array models (GLAMs) can be challenging to
fit. Computation and storage of its tensor product design matrix can be
impossible due to time and memory constraints, and previously considered design
matrix free algorithms do not scale well with the dimension of the parameter
vector. A new design matrix free algorithm is proposed for computing the
penalized maximum likelihood estimate for GLAMs, which, in particular, handles
nondifferentiable penalty functions. The proposed algorithm is implemented and
available via the R package \verb+glamlasso+. It combines several ideas --
previously considered separately -- to obtain sparse estimates while at the
same time efficiently exploiting the GLAM structure. In this paper the
convergence of the algorithm is treated and the performance of its
implementation is investigated and compared to that of \verb+glmnet+ on
simulated as well as real data. It is shown that the computation time fo
Impact Of Content Features For Automatic Online Abuse Detection
Online communities have gained considerable importance in recent years due to
the increasing number of people connected to the Internet. Moderating user
content in online communities is mainly performed manually, and reducing the
workload through automatic methods is of great financial interest for community
maintainers. Often, the industry uses basic approaches such as bad words
filtering and regular expression matching to assist the moderators. In this
article, we consider the task of automatically determining if a message is
abusive. This task is complex since messages are written in a non-standardized
way, including spelling errors, abbreviations, community-specific codes...
First, we evaluate the system that we propose using standard features of online
messages. Then, we evaluate the impact of the addition of pre-processing
strategies, as well as original specific features developed for the community
of an online in-browser strategy game. We finally propose to analyze the
usefulness of this wide range of features using feature selection. This work
can lead to two possible applications: 1) automatically flag potentially
abusive messages to draw the moderator's attention on a narrow subset of
messages ; and 2) fully automate the moderation process by deciding whether a
message is abusive without any human intervention
Abusive Language Detection in Online Conversations by Combining Content-and Graph-based Features
In recent years, online social networks have allowed worldwide users to meet
and discuss. As guarantors of these communities, the administrators of these
platforms must prevent users from adopting inappropriate behaviors. This
verification task, mainly done by humans, is more and more difficult due to the
ever growing amount of messages to check. Methods have been proposed to
automatize this moderation process, mainly by providing approaches based on the
textual content of the exchanged messages. Recent work has also shown that
characteristics derived from the structure of conversations, in the form of
conversational graphs, can help detecting these abusive messages. In this
paper, we propose to take advantage of both sources of information by proposing
fusion methods integrating content-and graph-based features. Our experiments on
raw chat logs show that the content of the messages, but also of their dynamics
within a conversation contain partially complementary information, allowing
performance improvements on an abusive message classification task with a final
F-measure of 93.26%
Extraction of alignment parameters from circular dichroic photoelectron angular distribution (CDAD) measurements
In a previous paper, we showed that circular dichroism in photoelectron angular distributions (CDAD) can be used to probe alignment in gas phase atoms and linear molecules. Often this alignment is parametrized through the moments of alignment A(2), A(4), etc., which are commonly extracted from fluorescence polarization measurements. In this paper we show how these can be simply extracted from CDAD spectra. This technique can be used in principle to extract the moments to any order
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