Patents by Inventor Edward E. Wong

Edward E. Wong 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).

  • Publication number: 20250095843
    Abstract: Techniques are disclosed for assisting healthcare providers with common clinical tasks by way of a clinical software application that can be installed on and utilized from various client computing devices. The clinical software application(s) can enable a healthcare provider to record conversations with patients, dictate in natural language, generate patient notes, populate patient records, schedule tasks and generate task notifications, and perform numerous other clinical functions. A state of the application executing on the client computing devices can be centrally and remotely controlled by a cloud service provider platform. When a user is logged in to both a mobile client computing device and a desktop client computing device, a state of both applications can be concurrently controlled by the cloud service provider platform, and the applications can be linked and synchronized to provide the end user with a seamless experience when moving between the applications.
    Type: Application
    Filed: September 11, 2024
    Publication date: March 20, 2025
    Applicant: Oracle International Corporation
    Inventors: Jobinesh Purushothaman Manakkattil, Shashi Prasad Suravarapu, Tamer Qumhieh, Edward E. Wong, Jayabratha Saha
  • Publication number: 20250095834
    Abstract: Techniques are disclosed for assisting healthcare providers with common clinical tasks by way of a clinical software application that can be installed on and utilized from various client computing devices. The clinical software application(s) can enable a healthcare provider to record conversations with patients, dictate in natural language, generate patient notes, populate patient records, and perform numerous other clinical functions. Task entries to schedule such tasks may be generated at the express direction of an end user, or one or more machine-learning models may be used to analyze text transcribed from spoken conversations, to identify one or more tasks from dialogue within the text, and to create corresponding task entries. Notification configuration entries may be created and associated with task entries, and may be used to trigger sending of notifications for scheduled tasks at appropriate times. An end user interaction with a notification may initiate a conversation with a digital assistant.
    Type: Application
    Filed: September 12, 2024
    Publication date: March 20, 2025
    Applicant: Oracle International Corporation
    Inventors: Jobinesh Purushothaman Manakkattil, Salman Saleem Sheikh, Frank Nimphius, Tamer Abdelkareem Qumhieh, Edward E. Wong, Abhinav Vasu Rawat
  • Patent number: 11416777
    Abstract: Techniques herein relate to improving quality of classification models for differentiating different user intents by improving the quality of training samples used to train the classification models. Pairs of user intents that are difficult to differentiate by classification models trained using the given training samples are identified based upon distinguishability scores (e.g., F-scores). For each of the identified pairs of intents, pairs of training samples each including a training sample associated with a first intent and a training sample associated with a second intent in the pair of intents are ranked based upon a similarity score between the two training samples in each pair of training samples. A particular pair of training samples with a highest similarity score is selected and provided as output with a suggestion for modifying the particular pair of training samples.
    Type: Grant
    Filed: September 30, 2020
    Date of Patent: August 16, 2022
    Assignee: Oracle International Corporation
    Inventors: Gautam Singaraju, Jiarui Ding, Vishal Vishnoi, Mark Joseph Sugg, Edward E. Wong
  • Publication number: 20210012245
    Abstract: Techniques disclosed herein relate to improving quality of classification models for differentiating different user intents by improving the quality of training samples used to train the classification models. Pairs of user intents that are difficult to differentiate by classification models trained using the given training samples are identified based upon distinguishability scores (e.g., F-scores). For each of the identified pairs of intents, pairs of training samples each including a training sample associated with a first intent and a training sample associated with a second intent in the pair of intents are ranked based upon a similarity score between the two training samples in each pair of training samples. The identified pairs of intents and the pairs of training samples having the highest similarity scores may be presented to users through a user interface, along with user-selectable options or suggestions for improving the training samples.
    Type: Application
    Filed: September 30, 2020
    Publication date: January 14, 2021
    Applicant: Oracle International Corporation
    Inventors: Gautam Singaraju, Jiarui Ding, Vishal Vishnoi, Mark Joseph Sugg, Edward E. Wong
  • Patent number: 10824962
    Abstract: Techniques for improving quality of classification models for differentiating different user intents by improving the quality of training samples used to train the classification models are described. Pairs of user intents that are difficult to differentiate by classification models trained using the given training samples are identified based upon distinguishability scores (e.g., F-scores). For each of the identified pairs of intents, pairs of training samples each including a training sample associated with a first intent and a training sample associated with a second intent in the pair of intents are ranked based upon a similarity score between the two training samples in each pair of training samples. The identified pairs of intents and the pairs of training samples having the highest similarity scores may be presented to users through a user interface, along with user-selectable options or suggestions for improving the training samples.
    Type: Grant
    Filed: September 28, 2018
    Date of Patent: November 3, 2020
    Assignee: Oracle International Corporation
    Inventors: Gautam Singaraju, Jiarui Ding, Vishal Vishnoi, Mark Joseph Sugg, Edward E. Wong
  • Publication number: 20190103095
    Abstract: Techniques disclosed herein relate to improving quality of classification models for differentiating different user intents by improving the quality of training samples used to train the classification models. Pairs of user intents that are difficult to differentiate by classification models trained using the given training samples are identified based upon distinguishability scores (e.g., F-scores). For each of the identified pairs of intents, pairs of training samples each including a training sample associated with a first intent and a training sample associated with a second intent in the pair of intents are ranked based upon a similarity score between the two training samples in each pair of training samples. The identified pairs of intents and the pairs of training samples having the highest similarity scores may be presented to users through a user interface, along with user-selectable options or suggestions for improving the training samples.
    Type: Application
    Filed: September 28, 2018
    Publication date: April 4, 2019
    Applicant: Oracle International Corporation
    Inventors: Gautam Singaraju, Jiarui Ding, Vishal Vishnoi, Mark Joseph Sugg, Edward E. Wong