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A convolutional neural network based cascade reconstruction for the IceCube Neutrino Observatory
The IceCube Collaboration
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Article
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peer-review
18
Citations (Scopus)
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Engineering & Materials Science
High energy physics
84%
Observatories
77%
Telescopes
72%
Deep neural networks
59%
Convolutional neural networks
56%
Deep learning
55%
Poles
53%
Detectors
48%
Uncertainty
38%
Experiments
21%
Mathematics
Observatory
100%
Neutrinos
95%
Cascade
65%
Neural Networks
58%
Telescope
15%
High Energy
12%
Detector
12%
Real-time
11%
Architecture
11%
Experimental Data
10%
Resources
9%
Learning
9%
Pole
9%
Uncertainty
8%
Physics
8%
Experiment
7%
kernel
7%
Necessary
6%
Simulation
6%
Standards
5%
Physics & Astronomy
observatories
56%
cascades
53%
neutrinos
51%
learning
11%
resources
10%
poles
9%
telescopes
7%
physics
6%
detectors
5%
simulation
3%
energy
3%