49 research outputs found
The Bjorken sum rule with Monte Carlo and Neural Network techniques
Determinations of structure functions and parton distribution functions have
been recently obtained using Monte Carlo methods and neural networks as
universal, unbiased interpolants for the unknown functional dependence. In this
work the same methods are applied to obtain a parametrization of polarized Deep
Inelastic Scattering (DIS) structure functions. The Monte Carlo approach
provides a bias--free determination of the probability measure in the space of
structure functions, while retaining all the information on experimental errors
and correlations. In particular the error on the data is propagated into an
error on the structure functions that has a clear statistical meaning. We
present the application of this method to the parametrization from polarized
DIS data of the photon asymmetries and from which we determine
the structure functions and , and discuss the
possibility to extract physical parameters from these parametrizations. This
work can be used as a starting point for the determination of polarized parton
distributions.Comment: 24 pages, 6 figure
Neural network determination of parton distributions: the nonsinglet case
We provide a determination of the isotriplet quark distribution from
available deep--inelastic data using neural networks. We give a general
introduction to the neural network approach to parton distributions, which
provides a solution to the problem of constructing a faithful and unbiased
probability distribution of parton densities based on available experimental
information. We discuss in detail the techniques which are necessary in order
to construct a Monte Carlo representation of the data, to construct and evolve
neural parton distributions, and to train them in such a way that the correct
statistical features of the data are reproduced. We present the results of the
application of this method to the determination of the nonsinglet quark
distribution up to next--to--next--to--leading order, and compare them with
those obtained using other approaches.Comment: 46 pages, 18 figures, LaTeX with JHEP3 clas
Neural network parametrization of the lepton energy spectrum in semileptonic B meson decays
We construct a parametrization of the lepton energy spectrum in inclusive
semileptonic decays of B mesons, based on the available experimental
information: moments of the spectrum with cuts, their errors and their
correlations, together with kinematical constraints. The result is obtained in
the form of a Monte Carlo sample of neural networks trained on replicas of the
experimental data, which represents the probability density in the space of
lepton energy spectra. This parametrization is then used to extract the b quark
mass m_b^{1S} in a way that theoretical uncertainties are minimized, for which
the value m_b^{1S}=4.84 \pm 0.14^{exp}\pm 0.05^{th} GeV is obtained.Comment: 32 pages, 22 figures, JHEP3 class. v4 version accepted for
publication in JHE
Polarized Parton Distributions at an Electron-Ion Collider
We study the potential impact of inclusive deep-inelastic scattering data
from a future electron-ion collider (EIC) on longitudinally polarized parton
distribution (PDFs). We perform a PDF determination using the NNPDF
methodology, based on sets of deep-inelastic EIC pseudodata, for different
realistic choices of the electron and proton beam energies. We compare the
results to our current polarized PDF set, NNPDFpol1.0, based on a fit to
fixed-target inclusive DIS data. We show that the uncertainties on the first
moments of the polarized quark singlet and gluon distributions are
substantially reduced in comparison to NNPDFpol1.0, but also that more
measurements may be needed to ultimately pin down the size of the gluon
contribution to the nucleon spin.Comment: 11 pages, 6 figures. Two plots in Fig.5 added and discussion of
extrapolation uncertainties expanded. Final version, published in Phys. Lett.
Recent progress on NNPDF for LHC
We present recent results of the NNPDF collaboration on a full DIS analysis
of Parton Distribution Functions (PDFs). Our method is based on the idea of
combining a Monte Carlo sampling of the probability measure in the space of
PDFs with the use of neural networks as unbiased universal interpolating
functions. The general structure of the project and the features of the fit are
described and compared to those of the traditional approaches.Comment: 4 pages, 6 figures, contribution for the proceedings of the
conference "Rencontres de Moriond, QCD and High Energy Interactions
Progress on neural parton distributions
We give a status report on the determination of a set of parton distributions
based on neural networks. In particular, we summarize the determination of the
nonsinglet quark distribution up to NNLO, we compare it with results obtained
using other approaches, and we discuss its use for a determination of
.Comment: 4 pages, 2 figs, uses dis2007.cls, to appear in the DIS 2007 workshop
proceeding
Parton distributions: determining probabilities in a space of functions
We discuss the statistical properties of parton distributions within the
framework of the NNPDF methodology. We present various tests of statistical
consistency, in particular that the distribution of results does not depend on
the underlying parametrization and that it behaves according to Bayes' theorem
upon the addition of new data. We then study the dependence of results on
consistent or inconsistent datasets and present tools to assess the consistency
of new data. Finally we estimate the relative size of the PDF uncertainty due
to data uncertainties, and that due to the need to infer a functional form from
a finite set of data.Comment: 11 pages, 8 figures, presented by Stefano Forte at PHYSTAT 2011 (to
be published in the proceedings
EPS09 - a New Generation of NLO and LO Nuclear Parton Distribution Functions
We present a next-to-leading order (NLO) global DGLAP analysis of nuclear
parton distribution functions (nPDFs) and their uncertainties. Carrying out an
NLO nPDF analysis for the first time with three different types of experimental
input -- deep inelastic +A scattering, Drell-Yan dilepton production in
p+ collisions, and inclusive pion production in d+Au and p+p collisions at
RHIC -- we find that these data can well be described in a conventional
collinear factorization framework. Although the pion production has not been
traditionally included in the global analyses, we find that the shape of the
nuclear modification factor of the pion -spectrum at
midrapidity retains sensitivity to the gluon distributions, providing evidence
for shadowing and EMC-effect in the nuclear gluons. We use the Hessian method
to quantify the nPDF uncertainties which originate from the uncertainties in
the data. In this method the sensitivity of to the variations of the
fitting parameters is mapped out to orthogonal error sets which provide a
user-friendly way to calculate how the nPDF uncertainties propagate to any
factorizable nuclear cross-section. The obtained NLO and LO nPDFs and the
corresponding error sets are collected in our new release called {\ttfamily
EPS09}. These results should find applications in precision analyses of the
signatures and properties of QCD matter at the LHC and RHIC.Comment: 34 pages, 16 figures. The version accepted for publicatio
PENGARUH PENGGUNAAN METODE PEMBELAJARAN KOOPERATIF MAKE A MATCH TERHADAP
bstract: The purpose of this research is to looking for the influence of the using Cooperative learning type make a match to the studentâs achievment. This research uses experiment method. The population is all students of 5 grade elementary school Wonogiri Wonogiri. The sample was selected using stratified cluster random sampling. The data resources focused in the achievement learning that gotten by pretest and posttest using questions test that had trough the research of validity, reability, difficulty index and ability of differentiation of question test. The pre-analytic of data are test of balance, normality test, and homogenity test. The technique of analytic of data that used to hipotesis test is t test. The result of the research can be concluded that there is a positif influence of using cooperative learning type make a match to the studentâs achievement (t calculate > t table=56,691>2,00).
Abstrak: Tujuan penelitian ini adalah untuk mengetahui pengaruh metode pembelajaran kooperatif make a match terhadap hasil belajar IPS. Penelitian ini menggunakan metode eksperimen. Populasi penelitian ini adalah siswa kelas 5 SDN Wonogiri, Wonogiri. Teknik pengambilan sampel yang digunakan adalah stratified cluster random sampling. Sumber data difokuskan pada proses belajar dan hasil belajar yang diperoleh melalui pretest dan posttest dengan instrument soal yang telah melalui uji validitas, reabilitas, indeks kesukaran dan daya pembeda soal. Uji prasyarat analisis menggunakan uji keseimbangan, uji normalitas, uji homogenitas. Sedangkan teknik analisis data sebagai uji hipotesis memakai uji t. Hasil dari penelitian ini dapat disimpulkan ada pengaruh yang positif signifikan model pembelajaran kooperatif Make a Match terhadap hasil belajar IPS (t hitung > t tabel =56,691>2,00).
Kata Kunci: Pembelajaran Kooperatif, Make a Matc
Update on Neural Network Parton Distributions: NNPDF1.1
We present recent progress within the NNPDF parton analysis framework. After
a brief review of the results from the DIS NNPDF analysis, NNPDF1.0, we discuss
results from an updated analysis with independent parametrizations for the
strange and anti-strange distributions, denoted by NNPDF1.1. We examine the
phenomenological implications of this improved analysis for the strange PDFs.Comment: 5 pages, 6 figures, proceedings of the International Symposium on
Multiparticle Dynamics 08, 15-20 september 2008, DES