Patents by Inventor Laura O'Malley

Laura O'Malley 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: 11106716
    Abstract: A hierarchical document classification system is disclosed. The system includes a text-based document classifier model for classifying an input electronic document into one of a set of predefined document categories. The system further includes an image-based metadata identification model for classifying electronic documents of a particular document category into a set of metadata categories. The system further includes a fuzzy text matcher for supplementing classification accuracy of the image-based metadata identification model to obtain a metadata category for the input electronic document.
    Type: Grant
    Filed: November 13, 2017
    Date of Patent: August 31, 2021
    Assignee: Accenture Global Solutions Limited
    Inventors: Urvesh Bhowan, Pedro Sacristan, Laura O'Malley, Abhilash Alexander Miranda, Medb Corcoran
  • Patent number: 10990903
    Abstract: A self-learning system for categorizing log entries may be provided. The system may display a first log entry and receive a categorical identifier for the first log entry. The system may parse the first log entry for predetermined text information and predetermined image information. The predetermined text information may be included in a datafield classifier and the predetermined image information included in a metadata classifier. The system may identify the predetermined text information in the log entry and adjust a first prioritization of respective categorical identifiers included in the datafield classifier. The system may identify the predetermined image information in the first log entry and adjust a second prioritization of the respective categorical identifiers included in the metadata classifier. The system may map a second log entry to the categorical identifier based on adjustment of the first prioritization or adjustment of the second prioritization.
    Type: Grant
    Filed: November 9, 2017
    Date of Patent: April 27, 2021
    Assignee: ACCENTURE GLOBAL SOLUTIONS LIMITED
    Inventors: Abhilash Alexander Miranda, Laura Alvarez, Medb Corcoran, Edward Burgin, Kristine Marie Renker, Kris Timmermans, Kimberly De Maeseneer, Amaury Reychler, Shinichiro Shuda, Robert Willems, Laura O'Malley, Urvesh Bhowan, Pedro Sacristan
  • Patent number: 10929775
    Abstract: A system for self-learning archival of electronic data may be provided. A binary classifier may identify a text segment of an electronic dataset in response to text of the electronic dataset being associated with indicators of a word model. A first multiclass classifier may generate a first classification set comprising respective statistical metrics for the datafield that each predefined identifier in a group of predefined identifiers is representative of the datafield. A second multiclass classifier may receive a context of the electronic dataset and generate a second classification set. A combination classifier may apply weight values to the first classification set and the second classification set and form a weighted classification set and select a predefined identifier as being representative of the datafield based on the weighted classification set. The processor may store, in a memory, a data record comprising an association between the predefined identifier and the datafield.
    Type: Grant
    Filed: October 18, 2017
    Date of Patent: February 23, 2021
    Assignee: ACCENTURE GLOBAL SOLUTIONS LIMITED
    Inventors: Abhilash Alexander Miranda, Laura O'Malley, Pedro L. Sacristan, Urvesh Bhowan, Medb Corcoran
  • Patent number: 10521608
    Abstract: A device may obtain information included in a corpus of documents relating to an organization. The device may identify a set of values indicating personal information for one or more individuals by using a set of natural language processing (NLP) techniques to analyze the information included in the corpus. The device may determine a set of relationships between one or more values, of the set of values indicating the personal information using one or more additional NLP techniques and/or one or more rules. The device may generate a set of user profiles for the one or more individuals based on the set of relationships between the one or more values indicating the personal information. The device may perform one or more actions associated with using the set of user profiles to service a request for information.
    Type: Grant
    Filed: January 9, 2018
    Date of Patent: December 31, 2019
    Assignee: Accenture Global Solutions Limited
    Inventors: Urvesh Bhowan, Bogdan Eugen Sacaleanu, Navdeep Sharma, Gavin Kearney, Laura O'Malley, Aoife Whelan, Qurrat Ul Ain, Anthony McCoy
  • Publication number: 20190213354
    Abstract: A device may obtain information included in a corpus of documents relating to an organization. The device may identify a set of values indicating personal information for one or more individuals by using a set of natural language processing (NLP) techniques to analyze the information included in the corpus. The device may determine a set of relationships between one or more values, of the set of values indicating the personal information using one or more additional NLP techniques and/or one or more rules. The device may generate a set of user profiles for the one or more individuals based on the set of relationships between the one or more values indicating the personal information. The device may perform one or more actions associated with using the set of user profiles to service a request for information.
    Type: Application
    Filed: January 9, 2018
    Publication date: July 11, 2019
    Inventors: Urvesh BHOWAN, Bogdan Eugen SACALEANU, Navdeep SHARMA, Gavin KEARNEY, Laura O'MALLEY, Aoife WHELAN, Qurrat UL AIN, Anthony McCOY
  • Publication number: 20190147103
    Abstract: A hierarchical document classification system is disclosed. The system includes a text-based document classifier model for classifying an input electronic document into one of a set of predefined document categories. The system further includes an image-based metadata identification model for classifying electronic documents of a particular document category into a set of metadata categories. The system further includes a fuzzy text matcher for supplementing classification accuracy of the image-based metadata identification model to obtain a metadata category for the input electronic document.
    Type: Application
    Filed: November 13, 2017
    Publication date: May 16, 2019
    Inventors: Urvesh Bhowan, Pedro Sacristan, Laura O'Malley, Abhilash Alexander Miranda, Medb Corcoran
  • Publication number: 20190065689
    Abstract: Implementations are directed to receiving source data comprising data representative of medical events, processing the source data using natural language processing (NLP) techniques to provide a plurality of feature sets, providing event-specific predictive models based on the plurality of feature sets, each event-specific predictive model being specific to a particular medical event, receiving real-time data from data sources, the real-time data being representative of occurring healthcare conditions, processing the real-time data using at least one event-specific predictive model associated with a medical event to provide a predictive output that indicates a likelihood of occurrence of the medical event, and selectively broadcasting electronic messages to remote devices at least partially based on the predictive output, at least one electronic message including data associated with the medical event, and data indicative of information and sources of information for mitigating exposure to the medical event.
    Type: Application
    Filed: August 24, 2017
    Publication date: February 28, 2019
    Inventors: Laura O`Malley, Navdeep Sharma, Shane Terence Odlum, Rachit Agarwal, Gino André Di Paolo
  • Publication number: 20190006027
    Abstract: This document describes systems, methods, devices, and other techniques for automatically identifying and extracting medical conditions and supporting evidences from electronic health records. In some implementations, formatted text extracted from an unstructured electronic health record is obtained. The formatted text is segmented into multiple documents, wherein each document comprises a respective document type and represents a respective document encounter. Medical condition entities and supporting evidence entities referenced in each of the multiple documents are extracted. Extracted supporting evidence entities within a same document are linked to respective extracted medical condition entities from the same document using one or more of i) medical ontologies, or ii) a medical knowledge base. Output data representing linked supporting evidence entities and medical condition entities within a same document is provided.
    Type: Application
    Filed: January 24, 2018
    Publication date: January 3, 2019
    Inventors: Bogdan E. Sacaleanu, Pedro Sacristan, Urvesh Bhowan, Medb Corcoran, Jivan Virdee, James Robert Priestas, Tara Lynn O'Gara, Thomas D. Perry, Theresa M. Gaffney, Meghan Hildebrand Fotopoulos, Laura O'Malley
  • Publication number: 20180114144
    Abstract: A system for self-learning archival of electronic data may be provided. A binary classifier may identify a text segment of an electronic dataset in response to text of the electronic dataset being associated with indicators of a word model. A first multiclass classifier may generate a first classification set comprising respective statistical metrics for the datafield that each predefined identifier in a group of predefined identifiers is representative of the datafield. A second multiclass classifier may receive a context of the electronic dataset and generate a second classification set. A combination classifier may apply weight values to the first classification set and the second classification set and form a weighted classification set and select a predefined identifier as being representative of the datafield based on the weighted classification set. The processor may store, in a memory, a data record comprising an association between the predefined identifier and the datafield.
    Type: Application
    Filed: October 18, 2017
    Publication date: April 26, 2018
    Applicant: Accenture Global Solutions Limited
    Inventors: Abhilash Alexander Miranda, Laura O'Malley, Pedro L. Sacristan, Urvesh Bhowan, Medb Corcoran
  • Publication number: 20180068233
    Abstract: A self-learning system for categorizing log entries may be provided. The system may display a first log entry and receive a categorical identifier for the first log entry. The system may parse the first log entry for predetermined text information and predetermined image information. The predetermined text information may be included in a datafield classifier and the predetermined image information included in a metadata classifier. The system may identify the predetermined text information in the log entry and adjust a first prioritization of respective categorical identifiers included in the datafield classifier. The system may identify the predetermined image information in the first log entry and adjust a second prioritization of the respective categorical identifiers included in the metadata classifier. The system may map a second log entry to the categorical identifier based on adjustment of the first prioritization or adjustment of the second prioritization.
    Type: Application
    Filed: November 9, 2017
    Publication date: March 8, 2018
    Applicant: Accenture Global Solutions Limited
    Inventors: Abhilash Alexander Miranda, Laura Alvarez, Medb Corcoran, Edward Burgin, Kristine Marie Renker, Kris Timmermans, Kimberly De Maeseneer, Amaury Reychler, Shinichiro Shuda, Robert Willems, Laura O'Malley, Urvesh Bhowan, Pedro Sacristan
  • Patent number: 9818067
    Abstract: A self-learning system for categorizing log entries may be provided. A text classifier may identify a log description of a log entry in response to text of the log description being associated with indicators of a word model. A datafield classifier may generate a datafield metrics including an accuracy of the categorical identifiers representing the datafield. A metafield classifier may generate a context metrics for the context of the log entry, the context metrics including an accuracy categorical identifiers representing the metafields. A combination classifier may form a weighted classification set and select a categorical identifier as being representative of the datafield based on the weighted classification set. A categorical controller may identify new categories based on an analysis of the context metrics of the log entry.
    Type: Grant
    Filed: March 23, 2017
    Date of Patent: November 14, 2017
    Assignee: Accenture Global Solutions Limited
    Inventors: Abhilash Alexander Miranda, Laura Alvarez, Medb Corcoran, Edward Burgin, Kristine Marie Renker, Kris Timmermans, Kimberly De Maeseneer, Amaury Reychler, Shinichiro Shuda, Robert Willems, Laura O'Malley, Urvesh Bhowan, Pedro Sacristan
  • Publication number: 20170278015
    Abstract: A self-learning system for categorizing log entries may be provided. A text classifier may identify a log description of a log entry in response to text of the log description being associated with indicators of a word model. A datafield classifier may generate a datafield metrics including an accuracy of the categorical identifiers representing the datafield. A metafield classifier may generate a context metrics for the context of the log entry, the context metrics including an accuracy categorical identifiers representing the metafields. A combination classifier may form a weighted classification set and select a categorical identifier as being representative of the datafield based on the weighted classification set. A categorical controller may identify new categories based on an analysis of the context metrics of the log entry.
    Type: Application
    Filed: March 23, 2017
    Publication date: September 28, 2017
    Inventors: Abhilash Alexander Miranda, Laura Alvarez Jubete, Medb Corcoran, Edward Burgin, Kristine Renker, Kris Timmermans, Kimberly De Maeseneer, Amaury Reychler, Shinichiro Shuda, Robert Willems, Laura O'Malley, Urvesh Bhowan, Pedro Sacristan