123 research outputs found
Constraining the Parameters of High-Dimensional Models with Active Learning
Constraining the parameters of physical models with parameters is a
widespread problem in fields like particle physics and astronomy. The
generation of data to explore this parameter space often requires large amounts
of computational resources. The commonly used solution of reducing the number
of relevant physical parameters hampers the generality of the results. In this
paper we show that this problem can be alleviated by the use of active
learning. We illustrate this with examples from high energy physics, a field
where simulations are often expensive and parameter spaces are
high-dimensional. We show that the active learning techniques
query-by-committee and query-by-dropout-committee allow for the identification
of model points in interesting regions of high-dimensional parameter spaces
(e.g. around decision boundaries). This makes it possible to constrain model
parameters more efficiently than is currently done with the most common
sampling algorithms and to train better performing machine learning models on
the same amount of data. Code implementing the experiments in this paper can be
found on GitHub
The case for 100 GeV bino dark matter: A dedicated LHC tri-lepton search
Global fit studies performed in the pMSSM and the photon excess signal
originating from the Galactic Center seem to suggest compressed electroweak
supersymmetric spectra with a 100 GeV bino-like dark matter particle. We
find that these scenarios are not probed by traditional electroweak
supersymmetry searches at the LHC. We propose to extend the ATLAS and CMS
electroweak supersymmetry searches with an improved strategy for bino-like dark
matter, focusing on chargino plus next-to-lightest neutralino production, with
a subsequent decay into a tri-lepton final state. We explore the sensitivity
for pMSSM scenarios with
GeV in the TeV run of the LHC. Counterintuitively, we find that
the requirement of low missing transverse energy increases the sensitivity
compared to the current ATLAS and CMS searches. With 300 fb of data we
expect the LHC experiments to be able to discover these supersymmetric spectra
with mass gaps down to GeV for DM masses between 40 and 140
GeV. We stress the importance of a dedicated search strategy that targets
precisely these favored pMSSM spectra.Comment: Published in JHE
Comparing Galactic Center MSSM dark matter solutions to the Reticulum II gamma-ray data
Observations with the Fermi Large Area Telescope (LAT) indicate a possible
small photon signal originating from the dwarf galaxy Reticulum II that exceeds
the expected background between 2 GeV and 10 GeV. We have investigated two
specific scenarios for annihilating WIMP dark matter within the
phenomenological Minimal Supersymmetric Standard Model (pMSSM) framework as a
possible source for these photons. We find that the same parameter ranges in
pMSSM as reported by an earlier paper to be consistent with the Galactic center
excess, is also consistent with the excess observed in Reticulum II, resulting
in a J-factor of . This J-factor is consistent with
GeVcm,
which is derived using an optimized spherical Jeans analysis of kinematic data
obtained from the Michigan/Magellan Fiber System (M2FS).Comment: 4 pages, 2 figures, accepted in JCA
Analyzing {\gamma}-rays of the Galactic Center with Deep Learning
We present a new method to interpret the -ray data of our inner
Galaxy as measured by the Fermi Large Area Telescope (Fermi LAT). We train and
test convolutional neural networks with simulated Fermi-LAT images based on
models tuned to real data. We use this method to investigate the origin of an
excess emission of GeV -rays seen in previous studies. Interpretations
of this excess include rays created by the annihilation of dark matter
particles and rays originating from a collection of unresolved point
sources, such as millisecond pulsars. Our new method allows precise
measurements of the contribution and properties of an unresolved population of
-ray point sources in the interstellar diffuse emission model.Comment: 24 pages, 11 figure
SPOT: Open Source framework for scientific data repository and interactive visualization
SPOT is an open source and free visual data analytics tool for
multi-dimensional data-sets. Its web-based interface allows a quick analysis of
complex data interactively. The operations on data such as aggregation and
filtering are implemented. The generated charts are responsive and OpenGL
supported. It follows FAIR principles to allow reuse and comparison of the
published data-sets. The software also support PostgreSQL database for
scalability
The BSM-AI project: SUSY-AI - Generalizing LHC limits on Supersymmetry with Machine Learning
A key research question at the Large Hadron Collider (LHC) is the test of
models of new physics. Testing if a particular parameter set of such a model is
excluded by LHC data is a challenge: It requires the time consuming generation
of scattering events, the simulation of the detector response, the event
reconstruction, cross section calculations and analysis code to test against
several hundred signal regions defined by the ATLAS and CMS experiment. In the
BSM-AI project we attack this challenge with a new approach. Machine learning
tools are thought to predict within a fraction of a millisecond if a model is
excluded or not directly from the model parameters. A first example is SUSY-AI,
trained on the phenomenological supersymmetric standard model (pMSSM). About
300,000 pMSSM model sets - each tested with 200 signal regions by ATLAS - have
been used to train and validate SUSY-AI. The code is currently able to
reproduce the ATLAS exclusion regions in 19 dimensions with an accuracy of at
least 93 percent. It has been validated further within the constrained MSSM and
a minimal natural supersymmetric model, again showing high accuracy. SUSY-AI
and its future BSM derivatives will help to solve the problem of recasting LHC
results for any model of new physics.
SUSY-AI can be downloaded at http://susyai.hepforge.org/. An on-line
interface to the program for quick testing purposes can be found at
http://www.susy-ai.org/
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