- TensorFlow with Keras
- Training and testing based on simulation for: CERN 18
Dense layer:
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Dense neuron math:
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"Gauss neuron":
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Sum of "Gauss neurons" to represent data (time specter of typical channel @ CERN18):
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Use sum of gaussian and dense neurons:
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