Patents by Inventor Peyton Rose
Peyton Rose 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).
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Patent number: 12597526Abstract: Methods, systems, and computer-readable media for generating a personalized action recommendation are provided. The method acquires a request for a service that is associated with a user and the user's condition. The method then identifies one or more features of the user based on stored user information. The method next assigns the user to a segment based on the identified one or more features, generates a set of one or more recommended actions for the user based on the segment, and determines an expected value of each of the one or more recommended actions. The method determines a rank of the one or more recommended actions based on the expected value of each of the one or more recommended actions, and outputs a recommended action with a highest expected value for the user in response to the request for the service.Type: GrantFiled: September 27, 2023Date of Patent: April 7, 2026Assignee: Included Health Inc.Inventors: Eric Carlson, Ramakrishna Soma, Molong Li, Jacob David Rifkin, Zachary Taylor, Peyton Rose
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Patent number: 12572390Abstract: Methods, systems, and computer-readable media for generating a personalized virtual network. The method acquires a request for a service associated with a user and their preferences. The method then identifies one or more conditions of the user and their propensities based on a first set of machine learning models using stored past information of the user. The method next identifies a second set of machine learning models and evaluates the weightage of each model based on the determined propensities of the conditions. The evaluated weights are applied to the second set of models to generate a personalized virtual network for the user.Type: GrantFiled: December 11, 2020Date of Patent: March 10, 2026Assignee: Included Health, Inc.Inventors: Nathaniel Freese, Jayodita Sanghvi, Jyotiwardhan Patil, Peyton Rose, Eric Carlson, Diane Ivy
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Patent number: 12346406Abstract: Methods, systems, and computer-readable media for generating a statistically covaried machine learning model for performance measurement of service providers. The method receives a configuration file that includes one or more parameters associated with a plurality of individuals and parses it to generate and executing the database query on input data to generate sets of tabulated data of individuals of the plurality of individuals. The method next determines one or more measures of service providers listed in the configuration file using two or more tabulated data of individuals from the sets of tabulated data of individuals. The method finally generates a covaried machine learning model by training a machine learning model by statistically covarying measures and using them as training data.Type: GrantFiled: February 1, 2024Date of Patent: July 1, 2025Assignee: INCLUDED HEALTH, INC.Inventors: Nathaniel Freese, Meera Rao, Rick Wolf, Peyton Rose, Stephen Martin, Sameer Soi, Zachary Taylor, Ye Wang
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Publication number: 20250103830Abstract: Methods, systems, and computer-readable media for the generation of real-time recommendations using natural language processing. The method receives a request for a benefit recommendation; generates at least one tag based on input data; extracts, based on the at least one tag, at least one observation and at least one action from the input data; predicts at least one recommendation based on the extracted at least one observation and the extracted at least one action in real time; and sends the at least one predicted recommendation for display to a user device.Type: ApplicationFiled: December 10, 2024Publication date: March 27, 2025Applicant: Included Health, Inc.Inventors: Peyton Rose, Matt Forbes, Susan Enneking, Jack Sullivan, Jennifer Kong
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Patent number: 12197878Abstract: Methods, systems, and computer-readable media for the generation of real-time recommendations using natural language processing. The method receives a request for a benefit recommendation; generates at least one tag based on input data; extracts, based on the at least one tag, at least one observation and at least one action from the input data; predicts at least one recommendation based on the extracted at least one observation and the extracted at least one action in real time; and sends the at least one predicted recommendation for display to a user device.Type: GrantFiled: August 16, 2023Date of Patent: January 14, 2025Assignee: Included Health, Inc.Inventors: Peyton Rose, Matt Forbes, Susan Enneking, Jack Sullivan, Jennifer Kong
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Publication number: 20240169027Abstract: Methods, systems, and computer-readable media for generating a statistically covaried machine learning model for performance measurement of service providers. The method receives a configuration file that includes one or more parameters associated with a plurality of individuals and parses it to generate and executing the database query on input data to generate sets of tabulated data of individuals of the plurality of individuals. The method next determines one or more measures of service providers listed in the configuration file using two or more tabulated data of individuals from the sets of tabulated data of individuals. The method finally generates a covaried machine learning model by training a machine learning model by statistically covarying measures and using them as training data.Type: ApplicationFiled: February 1, 2024Publication date: May 23, 2024Applicant: Included Health, Inc.Inventors: Nathaniel Freese, Meera Rao, Rick Wolf, Peyton Rose, Stephen Martin, Sameer Soi, Zachary Taylor, Ye Wang
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Patent number: 11907332Abstract: Methods, systems, and computer-readable media for generating a statistically covaried machine learning model for performance measurement of service providers. The method receives a configuration file that includes one or more parameters associated with a plurality of individuals and parses it to generate and executing the database query on input data to generate sets of tabulated data of individuals of the plurality of individuals. The method next determines one or more measures of service providers listed in the configuration file using two or more tabulated data of individuals from the sets of tabulated data of individuals. The method finally generates a covaried machine learning model by training a machine learning model by statistically covarying measures and using them as training data.Type: GrantFiled: January 13, 2022Date of Patent: February 20, 2024Assignee: Included Health, Inc.Inventors: Nathaniel Freese, Meera Rao, Rick Wolf, Peyton Rose, Stephen Martin, Sameer Soi, Zachary Taylor, Ye Wang
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Publication number: 20240021322Abstract: Methods, systems, and computer-readable media for generating a personalized action recommendation are provided. The method acquires a request for a service that is associated with a user and the user's condition. The method then identifies one or more features of the user based on stored user information. The method next assigns the user to a segment based on the identified one or more features, generates a set of one or more recommended actions for the user based on the segment, and determines an expected value of each of the one or more recommended actions. The method determines a rank of the one or more recommended actions based on the expected value of each of the one or more recommended actions, and outputs a recommended action with a highest expected value for the user in response to the request for the service.Type: ApplicationFiled: September 27, 2023Publication date: January 18, 2024Applicant: Included Health, Inc.Inventors: Eric CARLSON, Ramakrishna SOMA, Molong LI, Jacob David RIFKIN, Zachary TAYLOR, Peyton ROSE
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Patent number: 11783951Abstract: Methods, systems, and computer-readable media for generating a personalized action recommendation are provided. The method acquires a request for a service that is associated with a user and the user's condition. The method then identifies one or more features of the user based on stored user information. The method next assigns the user to a segment based on the identified one or more features, generates a set of one or more recommended actions for the user based on the segment, and determines an expected value of each of the one or more recommended actions. The method determines a rank of the one or more recommended actions based on the expected value of each of the one or more recommended actions, and outputs a recommended action with a highest expected value for the user in response to the request for the service.Type: GrantFiled: October 25, 2021Date of Patent: October 10, 2023Assignee: Included Health, Inc.Inventors: Eric Carlson, Ramakrishna Soma, Molong Li, Jacob David Rifkin, Zachary Taylor, Peyton Rose
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Publication number: 20220309286Abstract: Methods, systems, and computer-readable media for generating a statistically covaried machine learning model for performance measurement of service providers. The method receives a configuration file that includes one or more parameters associated with a plurality of individuals and parses it to generate and executing the database query on input data to generate sets of tabulated data of individuals of the plurality of individuals. The method next determines one or more measures of service providers listed in the configuration file using two or more tabulated data of individuals from the sets of tabulated data of individuals. The method finally generates a covaried machine learning model by training a machine learning model by statistically covarying measures and using them as training data.Type: ApplicationFiled: January 13, 2022Publication date: September 29, 2022Applicant: Includede Health, Inc.Inventors: Nathaniel Freese, Meera Rao, Rick Wolf, Peyton Rose, Stephen Martin, Sameer Soi, Zachary Taylor, Ye Wang
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Publication number: 20220130503Abstract: Methods, systems, and computer-readable media for generating a personalized action recommendation are provided. The method acquires a request for a service that is associated with a user and the user's condition. The method then identifies one or more features of the user based on stored user information. The method next assigns the user to a segment based on the identified one or more features, generates a set of one or more recommended actions for the user based on the segment, and determines an expected value of each of the one or more recommended actions. The method determines a rank of the one or more recommended actions based on the expected value of each of the one or more recommended actions, and outputs a recommended action with a highest expected value for the user in response to the request for the service.Type: ApplicationFiled: October 25, 2021Publication date: April 28, 2022Applicant: Grand Rounds, Inc.Inventors: Eric CARLSON, Ramakrishna Soma, Molong Li, Jacob David Rifkin, Zachary Taylor, Peyton Rose
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Patent number: 11227184Abstract: Methods, systems, and computer-readable media for generating a statistically covaried machine learning model for performance measurement of service providers. The method receives a configuration file that includes one or more parameters associated with a plurality of individuals and parses it to generate and executing the database query on input data to generate sets of tabulated data of individuals of the plurality of individuals. The method next determines one or more measures of service providers listed in the configuration file using two or more tabulated data of individuals from the sets of tabulated data of individuals. The method finally generates a covaried machine learning model by training a machine learning model by statistically covarying measures and using them as training data.Type: GrantFiled: March 23, 2021Date of Patent: January 18, 2022Assignee: GRAND ROUNDS, INC.Inventors: Nathaniel Freese, Meera Rao, Rick Wolf, Peyton Rose, Stephen Martin, Sameer Soi, Zachary Taylor, Ye Wang
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Patent number: 11158412Abstract: Methods, systems, and computer-readable media for generating a personalized action recommendation are provided. The method acquires a request for a service that is associated with a user and the user's condition. The method then identifies one or more features of the user based on stored user information. The method next assigns the user to a segment based on the identified one or more features, generates a set of one or more recommended actions for the user based on the segment, and determines an expected value of each of the one or more recommended actions. The method determines a rank of the one or more recommended actions based on the expected value of each of the one or more recommended actions, and outputs a recommended action with a highest expected value for the user in response to the request for the service.Type: GrantFiled: October 22, 2020Date of Patent: October 26, 2021Assignee: GRAND ROUNDS, INC.Inventors: Eric Carlson, Ramakrishna Soma, Molong Li, Jacob David Rifkin, Zachary Taylor, Peyton Rose
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Publication number: 20210182113Abstract: Methods, systems, and computer-readable media for generating a personalized virtual network. The method acquires a request for a service associated with a user and their preferences. The method then identifies one or more conditions of the user and their propensities based on a first set of machine learning models using stored past information of the user. The method next identifies a second set of machine learning models and evaluates the weightage of each model based on the determined propensities of the conditions. The evaluated weights are applied to the second set of models to generate a personalized virtual network for the user.Type: ApplicationFiled: December 11, 2020Publication date: June 17, 2021Applicant: Grand Rounds, Inc.Inventors: Nathaniel Freese, Jayodita Sanghvi, Jyotiwardhan Patil, Peyton Rose, Eric Carlson, Diane Ivy