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Generation of integral rating by statistical processing of the test results

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Abstract

The problem of building the rating of a remote training system by processing the results of a run of tests was considered. The Rasch model extended to a run of tests was used. A recurrent algorithm based on the maximum-likelihood procedure and the Newton method was proposed to calculate the rating.

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Original Russian Text © A.I. Kibzun, S.I. Panarin, 2012, published in Avtomatika i Telemekhanika, 2012, No. 6, pp. 119–139.

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Kibzun, A.I., Panarin, S.I. Generation of integral rating by statistical processing of the test results. Autom Remote Control 73, 1029–1045 (2012). https://doi.org/10.1134/S0005117912060082

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