FIELD: computing technology.
SUBSTANCE: invention relates to the field of computing technology for clustering emails. The technical result is achieved by using a method consisting of: selecting characteristics from an email; determining, based on the characteristics, whether the email is spam; calculating the vector of features of the email; forming clusters of emails based on the similarity of the vectors of features.
EFFECT: increase in the accuracy, reduction in the level of calculation errors and, accordingly, reduction in the level of email clustering errors with a simultaneous reduction in the correlation between the neurons of the neural network of the trained classifier.
8 cl, 6 dwg
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Authors
Dates
2022-04-04—Published
2021-03-15—Filed