Patents by Inventor Kate Elizabeth SWIFT-SPONG

Kate Elizabeth SWIFT-SPONG 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: 11886230
    Abstract: A computer-implemented system and method for predicting and flagging an anomaly entered in a digital form. A server computing device classifies a plurality of data fields of the digital form to identify a set of non-zero value data fields; and obtains an anomaly detection model comprising a statistical tree structure associated with the data field of the digital form. The server computing device receives datasets including a target value of a data field and values of a set of cohorting data features; traverses a statistical tree structure of the anomaly detection model with the target dataset to form a set of target cohorts to determine a target statistic value for the data field; flags the data field value of the target dataset as an anomaly item; and generates one or more confidence scores for a runtime prediction based on one or more variance changes for the data field.
    Type: Grant
    Filed: March 6, 2023
    Date of Patent: January 30, 2024
    Assignee: INTUIT INC.
    Inventors: Janani Kalyanam, Zhewen Fan, Byungkyu Kang, Kate Elizabeth Swift-Spong, Shivakumara Narayanaswamy, Farzaneh Khoshnevisan
  • Publication number: 20230205756
    Abstract: A computer-implemented system and method for predicting and flagging an anomaly entered in a digital form. A server computing device classifies a plurality of data fields of the digital form to identify a set of non-zero value data fields; and obtains an anomaly detection model comprising a statistical tree structure associated with the data field of the digital form. The server computing device receives datasets including a target value of a data field and values of a set of cohorting data features; traverses a statistical tree structure of the anomaly detection model with the target dataset to form a set of target cohorts to determine a target statistic value for the data field; flags the data field value of the target dataset as an anomaly item; and generates one or more confidence scores for a runtime prediction based on one or more variance changes for the data field.
    Type: Application
    Filed: March 6, 2023
    Publication date: June 29, 2023
    Applicant: INTUIT INC.
    Inventors: Janani KALYANAM, Zhewen FAN, Byungkyu KANG, Kate Elizabeth SWIFT-SPONG, Shivakumara NARAYANASWAMY
  • Publication number: 20230113607
    Abstract: A method including transcribing, into digital tokens, utterances from a conversation between an agent and a person. The method also includes embedding the digital tokens into an utterances tensor including sequences of the digital tokens. The method also includes obtaining a metadata tensor by encoding metadata related to the utterances into the metadata tensor. The method also includes executing a machine learning model which takes, as input, the utterances tensor and the metadata tensor, and which outputs a predicted source article predicted to be related to the utterances. The method also includes generating an interactive link to the predicted source article.
    Type: Application
    Filed: September 29, 2021
    Publication date: April 13, 2023
    Applicant: Intuit Inc.
    Inventors: Byungkyu Kang, Alexander Zhicharevich, Kate Elizabeth Swift-Spong, Zhewen Fan, Elik Sror
  • Patent number: 11620274
    Abstract: A computer-implemented system and method for predicting and flagging an anomaly entered in a digital form. A server computing device classifies a plurality of data fields of the digital form to identify a set of non-zero value data fields; and obtains an anomaly detection model comprising a statistical tree structure associated with the data field of the digital form. The server computing device receives datasets including a target value of a data field and values of a set of cohorting data features; traverses a statistical tree structure of the anomaly detection model with the target dataset to form a set of target cohorts to determine a target statistic value for the data field; flags the data field value of the target dataset as an anomaly item; and generates one or more confidence scores for a runtime prediction based on one or more variance changes for the data field.
    Type: Grant
    Filed: April 30, 2021
    Date of Patent: April 4, 2023
    Assignee: INTUIT INC.
    Inventors: Janani Kalyanam, Zhewen Fan, Byungkyu Kang, Kate Elizabeth Swift-Spong, Shivakumara Narayanaswamy, Farzaneh Khoshnevisan
  • Publication number: 20230036688
    Abstract: A method implements calibrated risk scoring and sampling. Features are extracted from a record. A risk score, associated with the record, is generated from the features using a machine learning model. The record is mapped to a risk bucket using the risk score. The risk bucket may include multiple risk bucket records. The record is selected from the risk bucket records with a sampling threshold corresponding to the risk bucket. A form prepopulated with values from the record is presenting to a client device.
    Type: Application
    Filed: July 30, 2021
    Publication date: February 2, 2023
    Applicant: Intuit Inc.
    Inventors: Kate Elizabeth Swift-Spong, Shivakumara Narayanaswamy, Carlos A. Oliveira, Byungkyu Kang, Farzaneh Khoshnevisan, Zhewen Fan, Runhua Zhao, Wan Yu Zhang
  • Publication number: 20220350790
    Abstract: A computer-implemented system and method for predicting and flagging an anomaly entered in a digital form. A server computing device classifies a plurality of data fields of the digital form to identify a set of non-zero value data fields; and obtains an anomaly detection model comprising a statistical tree structure associated with the data field of the digital form. The server computing device receives datasets including a target value of a data field and values of a set of cohorting data features; traverses a statistical tree structure of the anomaly detection model with the target dataset to form a set of target cohorts to determine a target statistic value for the data field; flags the data field value of the target dataset as an anomaly item; and generates one or more confidence scores for a runtime prediction based on one or more variance changes for the data field.
    Type: Application
    Filed: April 30, 2021
    Publication date: November 3, 2022
    Applicant: INTUIT INC.
    Inventors: Janani KALYANAM, Zhewen FAN, Byungkyu KANG, Kate Elizabeth SWIFT-SPONG, Shivakumara NARAYANASWAMY, Farzaneh KHOSHNEVISAN