FIELD: data processing.
SUBSTANCE: invention relates to determining result for task and, in particular, to methods and systems for determining result in crowded sourcing environment. Technical result of the proposed technical solution is achieved by the fact that the method includes: obtaining a plurality of task results sent by a plurality of experts; obtaining quality assessment for each expert from a plurality of experts; generating a plurality of vector representations comprising a vector representation for each result; executing a machine learning algorithm capable of generating a first validity parameter and a second validity parameter; generation of combined vector representation, if the first reliability parameter or the second reliability parameter corresponds to the predetermined condition; selection of combined vector representation as result for task.
EFFECT: technical result is possibility of automated sampling from text information entered by experts of one coordinated result of task by trusted expert.
20 cl, 8 dwg
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Authors
Dates
2021-03-02—Published
2019-04-15—Filed