dlcp2021:abstracts
Book of Abstracts
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The technology of long-term forecasting of water inflow into reservoirs using a multi-parameter neural network
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Legacy of Tunka-Rex software and data.
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Equivariant Gaussian Processes as Limiting Convolutional Networks with Infinite Number of Channels
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Modeling images of proton events for the TAIGA project using a generative adversarial network: features of the network architecture and the learning process
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Use of conditional generative adversarial networks to improve representativity of data in optical spectroscopy
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A convolutional hierarchical neural network classifier
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The preliminary results on analysis of TAIGA-IACT images using Convolutional Neural Networks
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Neural network solution of inverse problems of geological prospecting with discrete output
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Graph Neural Networks and application for Cosmic-Ray Analysis
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Identifying partial differential equations of land surface schemes in INM climate models with neural networks
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TAIGA: status, results and perspectives
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The Russian language corpus and a neural network to analyse Internet tweet reports about Covid-19
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Performance of convolutional neural networks processing simulated IACT images in the TAIGA experiment
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EVALUATION OF MACHINE LEARNING METHODS FOR RELATION EXTRACTION BETWEEN DRUG ADVERSE EFFECTS AND MEDICATIONS IN RUSSIAN TEXTS OF INTERNET USER REVIEWS
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Using modern machine learning methods on KASCADE data for science and education
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Gamma/hadron separation for a ground based IACT (imaging atmospheric Cherenkov telescope) in experiment TAIGA using machine learning methods Random Forest
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Using convolutional neural network for analysis of HiSCORE events
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Application of deep learning technique to an analysis of hard scattering processes at colliders
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