KIAM Main page Web Library  •  Publication Searh  Русский 

KIAM Preprint № 60, Moscow, 2022
Authors: Baluta V.I.
Formation of synthetic data in the preparation of training sets for emergency warning systems
The preprint contains a brief overview of information materials on the problem of synthetic data formation and substantiation of the possibility of using mathematical modeling to prepare training sets in the interests of creating predictive and analytical models used in emergency warning and response systems by means of machine learning. An assessment of the current state of research in the field of machine learning is given, an analysis and generalization of practical methods for obtaining synthetic data for the formation of training sets with detailed features in relation to the presentation of information in the form of numerical, textual or figurative formats is carried out, recommendations are made on the use of various mechanisms for creating synthetic data in order to prepare training sets of predictive and analytical models for the main types threats.
artificial intelligence, synthetic data, data generation, machine learning, mathematical modeling
Publication language: russian,  pages: 28
Research direction:
Mathematical modelling in actual problems of science and technics
Russian source text:
Export link to publication in format:   RIS    BibTeX
View statistics (updated once a day)
over the last 30 days — 6 (-1), total hit from 13.10.2022 — 150
About authors:
  • Baluta Victor Ivanovich, RAS