Patents by Inventor Gniewosz Leliwa

Gniewosz Leliwa 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: 11663403
    Abstract: Embodiments include computer-implemented methods and systems for detecting undesirable and potentially harmful online behavior. The embodiments described and claimed could also be applied to detecting any other type of online behavior to be detected, but the descriptions focuses on detecting online violence. More particularly, the embodiments disclosed relate to detecting online violence using symbolic methods of natural language processing (NLP) that utilize and govern the usage of: 1) syntactic parser for analyzing grammatical context of the input text data, 2) unsupervised learning methods for improving selected aspects of the system and adjusting the system to new data sources and guidelines, and 3) statistical classifiers for resolving specific well-defined sub-tasks, in which statistical approaches surpass the symbolic methods.
    Type: Grant
    Filed: October 18, 2022
    Date of Patent: May 30, 2023
    Assignee: SAMURAI LABS SP. Z O.O.
    Inventors: Michal Wroczynski, Gniewosz Leliwa
  • Publication number: 20230058640
    Abstract: Embodiments include computer-implemented methods and systems for detecting undesirable and potentially harmful online behavior. The embodiments described and claimed could also be applied to detecting any other type of online behavior to be detected, but the descriptions focuses on detecting online violence. More particularly, the embodiments disclosed relate to detecting online violence using symbolic methods of natural language processing (NLP) that utilize and govern the usage of: 1) syntactic parser for analyzing grammatical context of the input text data, 2) unsupervised learning methods for improving selected aspects of the system and adjusting the system to new data sources and guidelines, and 3) statistical classifiers for resolving specific well-defined sub-tasks, in which statistical approaches surpass the symbolic methods.
    Type: Application
    Filed: October 18, 2022
    Publication date: February 23, 2023
    Applicant: Samurai Labs sp. z o.o.
    Inventors: Michal Wroczynski, Gniewosz Leliwa
  • Patent number: 11507745
    Abstract: Embodiments include computer-implemented methods and systems for detecting undesirable and potentially harmful online behavior. The embodiments described and claimed could also be applied to detecting any other type of online behavior to be detected, but the descriptions focuses on detecting online violence. More particularly, the embodiments disclosed relate to detecting online violence using symbolic methods of natural language processing (NLP) that utilize and govern the usage of: 1) syntactic parser for analyzing grammatical context of the input text data, 2) unsupervised learning methods for improving selected aspects of the system and adjusting the system to new data sources and guidelines, and 3) statistical classifiers for resolving specific well-defined sub-tasks, in which statistical approaches surpass the symbolic methods.
    Type: Grant
    Filed: September 17, 2021
    Date of Patent: November 22, 2022
    Assignee: SAMURAI LABS SP. Z O.O.
    Inventors: Michal Wroczynski, Gniewosz Leliwa
  • Publication number: 20220004710
    Abstract: Embodiments include computer-implemented methods and systems for detecting undesirable and potentially harmful online behavior. The embodiments described and claimed could also be applied to detecting any other type of online behavior to be detected, but the descriptions focuses on detecting online violence. More particularly, the embodiments disclosed relate to detecting online violence using symbolic methods of natural language processing (NLP) that utilize and govern the usage of: 1) syntactic parser for analyzing grammatical context of the input text data, 2) unsupervised learning methods for improving selected aspects of the system and adjusting the system to new data sources and guidelines, and 3) statistical classifiers for resolving specific well-defined sub-tasks, in which statistical approaches surpass the symbolic methods.
    Type: Application
    Filed: September 17, 2021
    Publication date: January 6, 2022
    Applicant: Samurai Labs sp. z o.o.
    Inventors: Michal Wroczynski, Gniewosz Leliwa
  • Patent number: 11151318
    Abstract: Embodiments include computer-implemented methods and systems for detecting undesirable and potentially harmful online behavior. The embodiments described and claimed could also be applied to detecting any other type of online behavior to be detected, but the descriptions focuses on detecting online violence. More particularly, the embodiments disclosed relate to detecting online violence using symbolic methods of natural language processing (NLP) that utilize and govern the usage of: 1) syntactic parser for analyzing grammatical context of the input text data, 2) unsupervised learning methods for improving selected aspects of the system and adjusting the system to new data sources and guidelines, and 3) statistical classifiers for resolving specific well-defined sub-tasks, in which statistical approaches surpass the symbolic methods.
    Type: Grant
    Filed: March 3, 2021
    Date of Patent: October 19, 2021
    Inventors: Michal Wroczynski, Gniewosz Leliwa
  • Publication number: 20210248316
    Abstract: Embodiments include computer-implemented methods and systems for detecting undesirable and potentially harmful online behavior. The embodiments described and claimed could also be applied to detecting any other type of online behavior to be detected, but the descriptions focuses on detecting online violence. More particularly, the embodiments disclosed relate to detecting online violence using symbolic methods of natural language processing (NLP) that utilize and govern the usage of: 1) syntactic parser for analyzing grammatical context of the input text data, 2) unsupervised learning methods for improving selected aspects of the system and adjusting the system to new data sources and guidelines, and 3) statistical classifiers for resolving specific well-defined sub-tasks, in which statistical approaches surpass the symbolic methods.
    Type: Application
    Filed: March 3, 2021
    Publication date: August 12, 2021
    Applicant: Samurai Labs sp. z o.o.
    Inventors: Michal Wroczynski, Gniewosz Leliwa
  • Patent number: 10956670
    Abstract: Embodiments include computer-implemented methods and systems for detecting undesirable and potentially harmful online behavior. The embodiments described and claimed could also be applied to detecting any other type of online behavior to be detected, but the descriptions focuses on detecting online violence. More particularly, the embodiments disclosed relate to detecting online violence using symbolic methods of natural language processing (NLP) that utilize and govern the usage of: 1) syntactic parser for analyzing grammatical context of the input text data, 2) unsupervised learning methods for improving selected aspects of the system and adjusting the system to new data sources and guidelines, and 3) statistical classifiers for resolving specific well-defined sub-tasks, in which statistical approaches surpass the symbolic methods.
    Type: Grant
    Filed: March 1, 2019
    Date of Patent: March 23, 2021
    Assignee: SAMURAI LABS SP. Z O.O.
    Inventors: Michal Wroczynski, Gniewosz Leliwa
  • Publication number: 20200267165
    Abstract: An intervention method and system for intervening in online bullying is described. in various embodiments, and an online violence detection system available online on communicatively coupled to multiple databases and the multiple system processors, wherein the online detection system is also communicatively coupled to multiple online communities, multiple data sources, and multiple other online systems and online applications. The method and system determine whether autonomous instant action is appropriate, or whether referring the interaction to a moderation dashboard is appropriate. A moderator dashboard is included in one embodiment.
    Type: Application
    Filed: February 17, 2020
    Publication date: August 20, 2020
    Applicant: Fido Voice Sp. z o.o.
    Inventors: Gniewosz Leliwa, Michal Wroczynski, Grzegorz Rutkiewicz, Patrycja Tempska, Maria Dowgiallo
  • Publication number: 20190272317
    Abstract: Embodiments include computer-implemented methods and systems for detecting undesirable and potentially harmful online behavior. The embodiments described and claimed could also be applied to detecting any other type of online behavior to be detected, but the descriptions focuses on detecting online violence. More particularly, the embodiments disclosed relate to detecting online violence using symbolic methods of natural language processing (NLP) that utilize and govern the usage of: 1) syntactic parser for analyzing grammatical context of the input text data, 2) unsupervised learning methods for improving selected aspects of the system and adjusting the system to new data sources and guidelines, and 3) statistical classifiers for resolving specific well-defined sub-tasks, in which statistical approaches surpass the symbolic methods.
    Type: Application
    Filed: March 1, 2019
    Publication date: September 5, 2019
    Applicant: Fido Voice sp. z o.o.
    Inventors: Michal Wroczynski, Gniewosz Leliwa
  • Publication number: 20170017635
    Abstract: Embodiments of a system and method for natural language processing (NLP) utilize one or more extraction models, and an output of syntactic parser applied to a text to extract information from the text. In an embodiment, an extraction model defines one or more units or combinations of units within a grammar hierarchy (a word, a phase, a clause, or any combination of words, phrases and clauses) as an output of extraction process. An extraction model further comprises a set of rules where each rule sets one or more constraints on: a grammar structure output by extraction process; on the context of the output of extraction process; and on the relations between the output and the context.
    Type: Application
    Filed: July 18, 2016
    Publication date: January 19, 2017
    Applicant: Fido Labs Inc.
    Inventors: GNIEWOSZ LELIWA, Michal Wroczynski
  • Publication number: 20160062982
    Abstract: A natural language processing system is disclosed herein. Embodiments of the NLP system perform hand-written rule-based operations that do not rely on a trained corpus. Rules can be added or modified at any time to improve accuracy of the system, and to allow the same system to operate on unstructured plain text from many disparate contexts (e.g. articles as well as twitter contexts as well as medical articles) without harming accuracy for any one context. Embodiments also include a language decoder (LD) that generates information which is stored in a three-level framework (word, clause, phrase). The LD output is easily leveraged b various software applications to analyze large quantities of text from any source in a more sophisticated and flexible manner than previously possible. A query language (LDQL) for information extraction from NLP parsers' output is disclosed, with emphasis on on its embodiment implemented for LD.
    Type: Application
    Filed: September 4, 2015
    Publication date: March 3, 2016
    Applicant: Fido Labs Inc.
    Inventors: Michal Wroczynski, Tomasz Krupa, Gniewosz Leliwa, Piotr Wiacek, Michal Stanczyk
  • Patent number: 9152623
    Abstract: A natural language processing system is disclosed herein. Embodiments of the NLP system perform hand-written rule-based operations that do not rely on a trained corpus. Rules can be added or modified at any time to improve accuracy of the system, and to allow the same system to operate on unstructured plain text from many disparate contexts (e.g. articles as well as twitter contexts as well as medical articles) without harming accuracy for any one context. Embodiments also include a language decoder (LD) that generates information which is stored in a three-level framework (word, clause, phrase). The LD output is easily leveraged by various software applications to analyze large quantities of text from any source in a more sophisticated and flexible manner than previously possible. A query language (LDQL) for information extraction from NLP parsers' output is disclosed, with emphasis on its embodiment implemented for LD.
    Type: Grant
    Filed: November 4, 2013
    Date of Patent: October 6, 2015
    Assignee: Fido Labs, Inc.
    Inventors: Michal Wroczyński, Tomasz Krupa, Gniewosz Leliwa, Piotr Wiacek, Michal Stańczyk
  • Publication number: 20140136188
    Abstract: A natural language processing system is disclosed herein. Embodiments of the NLP system perform hand-written rule-based operations that do not rely on a trained corpus. Rules can be added or modified at any time to improve accuracy of the system, and to allow the same system to operate on unstructured plain text from many disparate contexts (e.g. articles as well as twitter contexts as well as medical articles) without harming accuracy for any one context. Embodiments also include a language decoder (LD) that generates information which is stored in a three-level framework (word, clause, phrase). The LD output is easily leveraged by various software applications to analyze large quantities of text from any source in a more sophisticated and flexible manner than previously possible. A query language (LDQL) for information extraction from NLP parsers' output is disclosed, with emphasis on its embodiment implemented for LD.
    Type: Application
    Filed: November 4, 2013
    Publication date: May 15, 2014
    Applicant: Fido Labs Inc.
    Inventors: Michal Wroczynski, Tomasz Krupa, Gniewosz Leliwa, Piotr Wiacek, Michal Stanczyk