Patents by Inventor Mark Rosenstein

Mark Rosenstein 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: 11875706
    Abstract: Systems and methods for automated custom training of a scoring model are disclosed herein. The method include: receiving a plurality of responses received from a plurality of students in response to providing of a prompt; identifying an evaluation model relevant to the provided prompt, which evaluation model can be a machine learning model trained to output a score relevant to at least portions of a response; generating a training indicator that provides a graphical depiction of the degree to which the identified evaluation model is trained; determining a training status of the model; receiving at least one evaluation input when the model is identified as insufficiently trained; updating training of the evaluation model based on the at least one received evaluation input; and controlling the training indicator to reflect the degree to which the evaluation model is trained subsequent to the updating of the training of the evaluation model.
    Type: Grant
    Filed: February 20, 2019
    Date of Patent: January 16, 2024
    Assignee: PEARSON EDUCATION, INC.
    Inventors: Alok Baikadi, Scott Hellman, Jill Budden, Stephen Hopkins, Kyle Habermehl, Peter Foltz, Lee Becker, Mark Rosenstein
  • Patent number: 11817014
    Abstract: Systems and methods for automated custom training of a scoring model are disclosed herein. The method include: receiving a plurality of responses received from a plurality of students in response to providing of a prompt; identifying an evaluation model relevant to the provided prompt, which evaluation model can be a machine learning model trained to output a score relevant to at least portions of a response; generating a training indicator that provides a graphical depiction of the degree to which the identified evaluation model is trained; determining a training status of the model; receiving at least one evaluation input when the model is identified as insufficiently trained; updating training of the evaluation model based on the at least one received evaluation input; and controlling the training indicator to reflect the degree to which the evaluation model is trained subsequent to the updating of the training of the evaluation model.
    Type: Grant
    Filed: February 20, 2019
    Date of Patent: November 14, 2023
    Assignee: PEARSON EDUCATION, INC.
    Inventors: Lee Becker, William Murray, Peter Foltz, Mark Rosenstein, Alok Baikadi, Scott Hellman, Kyle Habermehl, Jill Budden, Stephen Hopkins, Andrew Gorman
  • Patent number: 11741849
    Abstract: Systems and methods for automated custom training of a scoring model are disclosed herein. The method include: receiving a plurality of responses received from a plurality of students in response to providing of a prompt; identifying an evaluation model relevant to the provided prompt, which evaluation model can be a machine learning model trained to output a score relevant to at least portions of a response; generating a training indicator that provides a graphical depiction of the degree to which the identified evaluation model is trained; determining a training status of the model; receiving at least one evaluation input when the model is identified as insufficiently trained; updating training of the evaluation model based on the at least one received evaluation input; and controlling the training indicator to reflect the degree to which the evaluation model is trained subsequent to the updating of the training of the evaluation model.
    Type: Grant
    Filed: February 20, 2019
    Date of Patent: August 29, 2023
    Assignee: PEARSON EDUCATION, INC.
    Inventors: Scott Hellman, William Murray, Kyle Habermehl, Alok Baikadi, Jill Budden, Andrew Gorman, Mark Rosenstein, Lee Becker, Stephen Hopkins, Peter Foltz
  • Patent number: 11475245
    Abstract: Systems and methods for automated custom training of a scoring model are disclosed herein. The method include: receiving a plurality of responses received from a plurality of students in response to providing of a prompt; identifying an evaluation model relevant to the provided prompt, which evaluation model can be a machine learning model trained to output a score relevant to at least portions of a response; generating a training indicator that provides a graphical depiction of the degree to which the identified evaluation model is trained; determining a training status of the model; receiving at least one evaluation input when the model is identified as insufficiently trained; updating training of the evaluation model based on the at least one received evaluation input; and controlling the training indicator to reflect the degree to which the evaluation model is trained subsequent to the updating of the training of the evaluation model.
    Type: Grant
    Filed: February 20, 2019
    Date of Patent: October 18, 2022
    Assignee: PEARSON EDUCATION, INC.
    Inventors: Peter Foltz, Mark Rosenstein, Alok Baikadi, Lee Becker, Stephen Hopkins, Jill Budden, Luis M. Oros, Kyle Habermehl, Scott Hellman, William Murray, Andrew Gorman
  • Patent number: 11449762
    Abstract: Systems and methods for automated custom training of a scoring model are disclosed herein. The method include: receiving a plurality of responses received from a plurality of students in response to providing of a prompt; identifying an evaluation model relevant to the provided prompt, which evaluation model can be a machine learning model trained to output a score relevant to at least portions of a response; generating a training indicator that provides a graphical depiction of the degree to which the identified evaluation model is trained; determining a training status of the model; receiving at least one evaluation input when the model is identified as insufficiently trained; updating training of the evaluation model based on the at least one received evaluation input; and controlling the training indicator to reflect the degree to which the evaluation model is trained subsequent to the updating of the training of the evaluation model.
    Type: Grant
    Filed: August 19, 2019
    Date of Patent: September 20, 2022
    Assignee: PEARSON EDUCATION, INC.
    Inventors: Mark Rosenstein, Kyle Habermehl, Scott Hellman, Alok Baikadi, Peter Foltz, Lee Becker, Luis M. Oros, Jill Budden, Marcia Derr
  • Patent number: 11443140
    Abstract: Systems and methods for automated custom training of a scoring model are disclosed herein. The method include: receiving a plurality of responses received from a plurality of students in response to providing of a prompt; identifying an evaluation model relevant to the provided prompt, which evaluation model can be a machine learning model trained to output a score relevant to at least portions of a response; generating a training indicator that provides a graphical depiction of the degree to which the identified evaluation model is trained; determining a training status of the model; receiving at least one evaluation input when the model is identified as insufficiently trained; updating training of the evaluation model based on the at least one received evaluation input; and controlling the training indicator to reflect the degree to which the evaluation model is trained subsequent to the updating of the training of the evaluation model.
    Type: Grant
    Filed: February 20, 2019
    Date of Patent: September 13, 2022
    Assignee: PEARSON EDUCATION, INC.
    Inventors: Scott Hellman, Lee Becker, Samuel Downs, Alok Baikadi, William Murray, Kyle Habermehl, Peter Foltz, Mark Rosenstein
  • Publication number: 20200005157
    Abstract: Systems and methods for automated custom training of a scoring model are disclosed herein. The method include: receiving a plurality of responses received from a plurality of students in response to providing of a prompt; identifying an evaluation model relevant to the provided prompt, which evaluation model can be a machine learning model trained to output a score relevant to at least portions of a response; generating a training indicator that provides a graphical depiction of the degree to which the identified evaluation model is trained; determining a training status of the model; receiving at least one evaluation input when the model is identified as insufficiently trained; updating training of the evaluation model based on the at least one received evaluation input; and controlling the training indicator to reflect the degree to which the evaluation model is trained subsequent to the updating of the training of the evaluation model.
    Type: Application
    Filed: August 19, 2019
    Publication date: January 2, 2020
    Inventors: Mark Rosenstein, Kyle Habermehl, Scott Hellman, Alok Baikadi, Peter Foltz, Lee Becker, Luis M. Oros, Jill Budden, Marcia Derr
  • Publication number: 20190259293
    Abstract: Systems and methods for automated custom training of a scoring model are disclosed herein. The method include: receiving a plurality of responses received from a plurality of students in response to providing of a prompt; identifying an evaluation model relevant to the provided prompt, which evaluation model can be a machine learning model trained to output a score relevant to at least portions of a response; generating a training indicator that provides a graphical depiction of the degree to which the identified evaluation model is trained; determining a training status of the model; receiving at least one evaluation input when the model is identified as insufficiently trained; updating training of the evaluation model based on the at least one received evaluation input; and controlling the training indicator to reflect the degree to which the evaluation model is trained subsequent to the updating of the training of the evaluation model.
    Type: Application
    Filed: February 20, 2019
    Publication date: August 22, 2019
    Inventors: Scott Hellman, William Murray, Kyle Habermehl, Alok Baikadi, Jill Budden, Andrew Gorman, Mark Rosenstein, Lee Becker, Stephen Hopkins, Peter Foltz
  • Publication number: 20190258903
    Abstract: Systems and methods for automated custom training of a scoring model are disclosed herein. The method include: receiving a plurality of responses received from a plurality of students in response to providing of a prompt; identifying an evaluation model relevant to the provided prompt, which evaluation model can be a machine learning model trained to output a score relevant to at least portions of a response; generating a training indicator that provides a graphical depiction of the degree to which the identified evaluation model is trained; determining a training status of the model; receiving at least one evaluation input when the model is identified as insufficiently trained; updating training of the evaluation model based on the at least one received evaluation input; and controlling the training indicator to reflect the degree to which the evaluation model is trained subsequent to the updating of the training of the evaluation model.
    Type: Application
    Filed: February 20, 2019
    Publication date: August 22, 2019
    Inventors: Peter Foltz, Mark Rosenstein, Alok Baikadi, Lee Becker, Stephen Hopkins, Jill Budden, Luis M. Oros, Kyle Habermehl, Scott Hellman, William Murray, Andrew Gorman
  • Publication number: 20190258715
    Abstract: Systems and methods for automated custom training of a scoring model are disclosed herein. The method include: receiving a plurality of responses received from a plurality of students in response to providing of a prompt; identifying an evaluation model relevant to the provided prompt, which evaluation model can be a machine learning model trained to output a score relevant to at least portions of a response; generating a training indicator that provides a graphical depiction of the degree to which the identified evaluation model is trained; determining a training status of the model; receiving at least one evaluation input when the model is identified as insufficiently trained; updating training of the evaluation model based on the at least one received evaluation input; and controlling the training indicator to reflect the degree to which the evaluation model is trained subsequent to the updating of the training of the evaluation model.
    Type: Application
    Filed: February 20, 2019
    Publication date: August 22, 2019
    Inventors: Scott Hellman, Lee Becker, Samuel Downs, Alok Baikadi, William Murray, Kyle Habermehl, Peter Foltz, Mark Rosenstein
  • Publication number: 20190258900
    Abstract: Systems and methods for automated custom training of a scoring model are disclosed herein. The method include: receiving a plurality of responses received from a plurality of students in response to providing of a prompt; identifying an evaluation model relevant to the provided prompt, which evaluation model can be a machine learning model trained to output a score relevant to at least portions of a response; generating a training indicator that provides a graphical depiction of the degree to which the identified evaluation model is trained; determining a training status of the model; receiving at least one evaluation input when the model is identified as insufficiently trained; updating training of the evaluation model based on the at least one received evaluation input; and controlling the training indicator to reflect the degree to which the evaluation model is trained subsequent to the updating of the training of the evaluation model.
    Type: Application
    Filed: February 20, 2019
    Publication date: August 22, 2019
    Inventors: Alok Baikadi, Scott Hellman, Jill Budden, Stephen Hopkins, Kyle Habermehl, Peter Foltz, Lee Becker, Mark Rosenstein
  • Publication number: 20190258716
    Abstract: Systems and methods for automated custom training of a scoring model are disclosed herein. The method include: receiving a plurality of responses received from a plurality of students in response to providing of a prompt; identifying an evaluation model relevant to the provided prompt, which evaluation model can be a machine learning model trained to output a score relevant to at least portions of a response; generating a training indicator that provides a graphical depiction of the degree to which the identified evaluation model is trained; determining a training status of the model; receiving at least one evaluation input when the model is identified as insufficiently trained; updating training of the evaluation model based on the at least one received evaluation input; and controlling the training indicator to reflect the degree to which the evaluation model is trained subsequent to the updating of the training of the evaluation model.
    Type: Application
    Filed: February 20, 2019
    Publication date: August 22, 2019
    Inventors: Lee Becker, William Murray, Peter Foltz, Mark Rosenstein, Alok Baikadi, Scott Hellman, Kyle Habermehl, Jill Budden, Stephen Hopkins, Andrew Gorman
  • Publication number: 20040039657
    Abstract: Techniques for using latent semantic structure of textual content ascribed to the items to provide automatic recommendations to the user. A user inputs a selected item and, in turn, a latent semantic algorithm is applied to the user selection and the textual content of the items in a database to generate a conceptual similarity between the selection and the items. A set of nearest items to the selected item is provided as a recommendation to the user of other items that may be of particular interest or relevance to the user's original selection based upon the conceptual similarity measure.
    Type: Application
    Filed: June 20, 2003
    Publication date: February 26, 2004
    Inventors: Clifford A. Behrens, Dennis E. Egan, Yu-Yun Ho, Carol Lochbaum, Mark Rosenstein
  • Patent number: 6654789
    Abstract: An accessible electronic system is provided for storing old and new electronic identifiers and for searching and matching the new and old electronic identifiers of an entity. The electronic system creates a bridge from the old to the new electronic identifiers. During a registration process a registrant may provide the system with a preferred electronic identifier in addition to a series of functional and/or non-functional electronic identifiers. During a searching process, if the searcher provides the system with any of the electronic identifiers provided to the system by the registrant, the system will return the preferred electronic identifier of the registrant.
    Type: Grant
    Filed: June 20, 2002
    Date of Patent: November 25, 2003
    Assignee: FreshAddress, Inc.
    Inventors: Austin C. Bliss, Robert W. Mack, William B. Kaplan, Mark Rosenstein
  • Patent number: 6615208
    Abstract: Techniques for using latent semantic structure of textual content ascribed to the items to provide automatic recommendations to the user. A user inputs a selected item and, in turn, a latent semantic algorithm is applied to the user selection and the textual content of the items in a database to generate a conceptual similarity between the selection and the items. A set of nearest items to the selected item is provided as a recommendation to the user of other items that may be of particular interest or relevance to the user's original selection based upon the conceptual similarity measure.
    Type: Grant
    Filed: September 1, 2000
    Date of Patent: September 2, 2003
    Assignee: Telcordia Technologies, Inc.
    Inventors: Clifford A. Behrens, Dennis E. Egan, Yu-Yun Ho, Carol Lochbaum, Mark Rosenstein