Patents by Inventor Anastasiya Aleksandrovna BEZZUBTSEVA

Anastasiya Aleksandrovna BEZZUBTSEVA has filed for patents to protect the following inventions. This listing includes patent applications that are pending as well as patents that have already been granted by the United States Patent and Trademark Office (USPTO).

  • Patent number: 11604855
    Abstract: Disclosed are a method and a system for determining a response to a digital task in a computer-implemented crowd-sourced environment. The method comprises determining if a number of the plurality of responses to the digital task received meets a pre-determined minimum answer threshold; in response to the number of the plurality of responses to the digital task meeting the pre-determined minimum answer threshold, executing: for each of the plurality of responses generating, by the server, a confidence parameter representing a probability of an associated one of the plurality of responses being correct; ranking the plurality of responses based on the confidence parameter to determine a top response being associated with a highest confidence parameter; and in response to the highest confidence parameter being above a pre-determined minimum confidence threshold, assigning a value of the top response as a label for the digital task and terminating the digital task execution.
    Type: Grant
    Filed: June 18, 2020
    Date of Patent: March 14, 2023
    Assignee: YANDEX EUROPE AG
    Inventors: Anastasiya Aleksandrovna Bezzubtseva, Valentina Pavlovna Fedorova, Alexey Valerievich Drutsa, Aleksandr Leonidovich Shishkin, Gleb Gennadevich Gusev
  • Patent number: 11475387
    Abstract: There is disclosed a method and system for determining a productivity rate of a user in a computer-implemented crowd-sourced environment. The method comprises, in a training phase: acquiring a training project; determining, set of project-specific features indicative of one or more characteristics of the training project; acquiring, a plurality of training results; determining a set of user-task specific features; determining, a user activity history associated with the user; generating a set of training data including the set of project-specific features, the set of user-task specific features, and the user activity history; training a machine learning algorithm (MLA), the training including: determining, a set of features representative of a property of the set of training data; and generating an inferred function based on the set of features, the inferred function being configured to determine the productivity rate of the user for a given project.
    Type: Grant
    Filed: April 19, 2020
    Date of Patent: October 18, 2022
    Assignee: YANDEX EUROPE AG
    Inventors: Anna Valerevna Lioznova, Anastasiya Aleksandrovna Bezzubtseva, Alexey Valerevich Drutsa, Vladimir Vladimirovich Kukushkin
  • Publication number: 20210073596
    Abstract: Disclosed are a method and a system for determining a response to a digital task in a computer-implemented crowd-sourced environment. The method comprises determining if a number of the plurality of responses to the digital task received meets a pre-determined minimum answer threshold; in response to the number of the plurality of responses to the digital task meeting the pre-determined minimum answer threshold, executing: for each of the plurality of responses generating, by the server, a confidence parameter representing a probability of an associated one of the plurality of responses being correct; ranking the plurality of responses based on the confidence parameter to determine a top response being associated with a highest confidence parameter; and in response to the highest confidence parameter being above a pre-determined minimum confidence threshold, assigning a value of the top response as a label for the digital task and terminating the digital task execution.
    Type: Application
    Filed: June 18, 2020
    Publication date: March 11, 2021
    Inventors: Anastasiya Aleksandrovna BEZZUBTSEVA, Valentina Pavlovna FEDOROVA, Alexey Valerievich DRUTSA, Aleksandr Leonidovich SHISHKIN, Gleb Gennadevich GUSEV
  • Publication number: 20210073703
    Abstract: There is disclosed a method and system for determining a productivity rate of a user in a computer-implemented crowd-sourced environment. The method comprises, in a training phase: acquiring a training project; determining, set of project-specific features indicative of one or more characteristics of the training project; acquiring, a plurality of training results; determining a set of user-task specific features; determining, a user activity history associated with the user; generating a set of training data including the set of project-specific features, the set of user-task specific features, and the user activity history; training a machine learning algorithm (MLA), the training including: determining, a set of features representative of a property of the set of training data; and generating an inferred function based on the set of features, the inferred function being configured to determine the productivity rate of the user for a given project.
    Type: Application
    Filed: April 19, 2020
    Publication date: March 11, 2021
    Inventors: Anna Valerevna LIOZNOVA, Anastasiya Aleksandrovna BEZZUBTSEVA, Alexey Valerevich DRUTSA, Vladimir Vladimirovich KUKUSHKIN
  • Patent number: 10839315
    Abstract: Methods and systems for selecting a selected-sub-set of features from a plurality of features for training a machine learning module, the training of the machine learning module to enable classification of an electronic document to a target label, the plurality of features associated with the electronic document. In one embodiment, the method comprises analyzing a given training document to extract the plurality of features, and for a given not-yet-selected feature of the plurality of features: generating a set of relevance parameters iteratively, generating a set of redundancy parameters iteratively and determining a feature significance score based on the set of relevance parameters and the set of redundancy parameters. The method further comprises selecting a feature associated with a highest value of the feature significance score and adding the selected feature to the selected-sub-set of features.
    Type: Grant
    Filed: May 30, 2017
    Date of Patent: November 17, 2020
    Assignee: YANDEX EUROPE AG
    Inventors: Anastasiya Aleksandrovna Bezzubtseva, Alexandr Leonidovich Shishkin, Gleb Gennadievich Gusev, Aleksey Valyerevich Drutsa
  • Publication number: 20180039911
    Abstract: Methods and systems for selecting a selected-sub-set of features from a plurality of features for training a machine learning module, the training of the machine learning module to enable classification of an electronic document to a target label, the plurality of features associated with the electronic document. In one embodiment, the method comprises analyzing a given training document to extract the plurality of features, and for a given not-yet-selected feature of the plurality of features: generating a set of relevance parameters iteratively, generating a set of redundancy parameters iteratively and determining a feature significance score based on the set of relevance parameters and the set of redundancy parameters. The method further comprises selecting a feature associated with a highest value of the feature significance score and adding the selected feature to the selected-sub-set of features.
    Type: Application
    Filed: May 30, 2017
    Publication date: February 8, 2018
    Inventors: Anastasiya Aleksandrovna BEZZUBTSEVA, Alexandr Leonidovich SHISHKIN, Gleb Gennadievich GUSEV, Aleksey Valyerevich DRUTSA