Intelligent technology forecasting time series based on the tensor technology
DOI:
https://doi.org/10.18372/2073-4751.2.6992Abstract
Investigated prediction technology of so-called «diluted» series based on their structuring and shows the feasibility of using such methodology. Examples of what tensor characteristics (first, second and third invariants) can be used to predict the time seriesReferences
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