IML Machine Learning Working Group: unsupervised searches and unfolding with ML
Friday 12 October 2018 -
15:00
Monday 8 October 2018
Tuesday 9 October 2018
Wednesday 10 October 2018
Thursday 11 October 2018
Friday 12 October 2018
15:00
Introduction and news
-
Markus Stoye
(
Imperial College (GB)
)
Steven Schramm
(
Universite de Geneve (CH)
)
Paul Seyfert
(
CERN
)
Rudiger Haake
(
Yale University (US)
)
Lorenzo Moneta
(
CERN
)
Introduction and news
Markus Stoye
(
Imperial College (GB)
)
Steven Schramm
(
Universite de Geneve (CH)
)
Paul Seyfert
(
CERN
)
Rudiger Haake
(
Yale University (US)
)
Lorenzo Moneta
(
CERN
)
15:00 - 15:10
Room: 40/S2-A01 - Salle Anderson
15:10
ML community white paper path forward
-
Sergei Gleyzer
(
University of Florida (US)
)
ML community white paper path forward
Sergei Gleyzer
(
University of Florida (US)
)
15:10 - 15:20
Room: 40/S2-A01 - Salle Anderson
15:25
Guiding New Physics Searches with Unsupervised Learning
-
Andrea De Simone
(
SISSA
)
Guiding New Physics Searches with Unsupervised Learning
Andrea De Simone
(
SISSA
)
15:25 - 15:55
Room: 40/S2-A01 - Salle Anderson
I will describe an approach to search for new phenomena in data, by detecting discrepancies between two datasets. These could be, for example, a simulated standard-model background, and an observed dataset containing a potential hidden signal of New Physics. I will propose a new statistical test, built upon a test statistic which measures deviations between two samples, using a Nearest Neighbors approach to estimate the local ratio of the density of points. The test is model-independent and non-parametric, requiring no knowledge of the shape of the underlying distributions, and it does not bin the data, thus retaining full information from the multidimensional feature space. As a by-product, the technique is also a useful tool to identify regions of interest for further study. As a proof-of-concept, I will show the power of the method when applied to synthetic Gaussian data, and to a simulated dark matter signal at the LHC.
16:00
Learning New Physics from a machine
-
Andrea Wulzer
(
CERN
)
Learning New Physics from a machine
Andrea Wulzer
(
CERN
)
16:00 - 16:30
Room: 40/S2-A01 - Salle Anderson
We propose using neural networks to detect data departures from a given reference model, with no prior bias on the nature of the new physics responsible for the discrepancy. The model-independent nature of our approach, and its ability to deal with rare signals such as those expected at the LHC, is quantitatively assessed in toy examples.
16:35
Machine learning as an instrument for data unfolding
-
Alexander Glazov
(
Deutsches Elektronen-Synchrotron (DE)
)
Machine learning as an instrument for data unfolding
Alexander Glazov
(
Deutsches Elektronen-Synchrotron (DE)
)
16:35 - 16:55
Room: 40/S2-A01 - Salle Anderson