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The Procedure for Defining the Best Recognition Module of the Algorithms for Calculating Estimates

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Abstract

We have considered the problem of finding the optimal procedure for constructing improved results in some sense, the algorithms for calculating estimates. Such a procedure has been carried out by the selection of optimal values of the parameters of extreme algorithms. This serves to reduce the number of calculations in the algorithms for calculating estimates (ACE) and to increase the quality of the recognition process.

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Acknowledgments

This work was supported partly by the Grant А-5-004 of the Committee of Sciences and Technologies of the Republic of Uzbekistan.

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Mirzoyan, K., Mirzaakbar, H., Alisher, K. (2020). The Procedure for Defining the Best Recognition Module of the Algorithms for Calculating Estimates. In: Pawar, P., Ronge, B., Balasubramaniam, R., Vibhute, A., Apte, S. (eds) Techno-Societal 2018 . Springer, Cham. https://doi.org/10.1007/978-3-030-16848-3_3

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