Patents by Inventor Csaba Domokos

Csaba Domokos 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: 20230306268
    Abstract: A method for operating at least one trained classifier for measurement data. The classifier comprises a neural network with at least one feature extraction section and at least one classification section. The method includes: processing a record of measurement data with at least the feature extraction section of the classifier; determining a set of neurons in the feature extraction section that are activated by said processing; determining, from a given correspondence between activated neurons and attributes, a set of attributes whose presence in a scene captured by the measurement data is indicated by the activated neurons; comparing attributes to which classes are linked by a given knowledge graph with said determined set of attributes; and evaluating, from the result of this comparison, at least one estimated class as a class to which the scene captured by the record of measurement data is likely to belong.
    Type: Application
    Filed: February 23, 2023
    Publication date: September 28, 2023
    Inventors: Daria Stepanova, Trung Kien Tran, Youmna Salah Mahmoud Ismaeil, Csaba Domokos, Piyapat Saranrittichai
  • Patent number: 11748627
    Abstract: A system for applying a neural network to an input instance. The neural network includes an optimization layer for determining values of one or more output neurons from values of one or more input neurons by a joint optimization parametrized by one or more parameters. An input instance is obtained. The values of the one or more input neurons to the optimization layer are obtained and input vectors for the one or more input neurons are determined therefrom. Output vectors for the one or more output neurons are computed from the determined input vectors by jointly optimizing at least the output vectors with respect to the input vectors to solve a semidefinite program defined by the one or more parameters. The values of the one or more output neurons are determined from the respective computed output vectors.
    Type: Grant
    Filed: May 12, 2020
    Date of Patent: September 5, 2023
    Assignees: ROBERT BOSCH GMBH, CARNEGIE MELLON UNIVERSITY
    Inventors: Csaba Domokos, Jeremy Zieg Kolter, Po-Wei Wang, Priya L. Donti
  • Patent number: 11699076
    Abstract: A system and computer implemented method for learning rules from a data base including entities and relations between the entities, wherein an entity is either a constant or a numerical value, and a relation between a constant and a numerical value is a numerical relation and a relation between two constants is a non-numerical relation. The method includes: deriving aggregate values from said numerical and/or non-numerical relations; deriving non-numerical relations from said aggregate values; adding said derived non-numerical relations to the data base; constructing differentiable operators, wherein a differentiable operator refers to a non-numerical or a derived non-numerical relation of the data base, and extracting rules from said differentiable operators.
    Type: Grant
    Filed: August 14, 2020
    Date of Patent: July 11, 2023
    Assignees: ROBERT BOSCH GMBH, CARNEGIE MELLON UNIVERSITY
    Inventors: Csaba Domokos, Daria Stepanova, Jeremy Zieg Kolter, Po-Wei Wang
  • Publication number: 20230202344
    Abstract: A computer-implemented method is introduced for predicting a residual service life of vehicle batteries of a fleet of electric vehicles. In the method, parameters of the vehicle batteries are measured during the operation of the electric vehicles and transmitted to a server; a conditional probability is determined that the residual service life of a specific vehicle battery undershoots a predefined limit value at a point in time lying in the past; and the residual service life of vehicle batteries of the fleet is predicted as a function of the conditional probability.
    Type: Application
    Filed: July 16, 2021
    Publication date: June 29, 2023
    Inventors: Christian Simonis, Csaba Domokos
  • Publication number: 20230104003
    Abstract: A computer-implemented method for determining an error of a behavior of an electrical energy store in a technical device includes sensing an operating variable profile of at least one operating variable of the electrical energy store, determining at least one operating feature from the operating variable profile of the at least one operating variable of the electrical energy store, and evaluating a variational autoencoder with a supplied input variable vector, which includes an operating feature point from the at least one operating feature, in order to determine a degree of deviation from a distribution in a latent state space or a reconstruction error. The method further includes detecting the error of the behavior depending on (i) the degree of deviation or the reconstruction error, and (ii) a predetermined error threshold.
    Type: Application
    Filed: October 3, 2022
    Publication date: April 6, 2023
    Inventors: Christoph Woll, Christian Simonis, Csaba Domokos
  • Publication number: 20230066599
    Abstract: A method determines an assignment rule in order to combine test results from different tests of the same semiconductor device. The method includes fitting a model, such as a linear regression model, using the model to predict the test data, calculating a cost matrix based on the predictions, and applying the Hungarian method to the cost matrix to obtain a new assignment rule and repeating these steps multiple times.
    Type: Application
    Filed: August 24, 2022
    Publication date: March 2, 2023
    Inventors: Andreas Steimer, Eric Sebastian Schmidt, Mehul Bansal, Stefan Patrick Lindt, Csaba Domokos, Matthias Werner, Michel Janus
  • Publication number: 20220414480
    Abstract: A device, computer program, computer-implemented method for training a knowledge graph embedding model of a knowledge graph that is enhanced by an ontology. The method comprises training the knowledge graph embedding model with a first training query and its predetermined answer to reduce, in particular minimize, a distance between an embedding of the answer in the knowledge graph embedding model and an embedding of the first training query in knowledge graph embedding model, and to reduce, in particular minimize, a distance between the embedding of the answer and an embedding of a second training query in knowledge graph embedding model, wherein the second training query is determined from the first training query depending on the ontology.
    Type: Application
    Filed: June 10, 2022
    Publication date: December 29, 2022
    Inventors: Csaba Domokos, Daria Stepanova, Medina Andresel, Trung Kien Tran
  • Publication number: 20210089894
    Abstract: A system and computer implemented method for learning rules from a data base including entities and relations between the entities, wherein an entity is either a constant or a numerical value, and a relation between a constant and a numerical value is a numerical relation and a relation between two constants is a non-numerical relation. The method includes: deriving aggregate values from said numerical and/or non-numerical relations; deriving non-numerical relations from said aggregate values; adding said derived non-numerical relations to the data base; constructing differentiable operators, wherein a differentiable operator refers to a non-numerical or a derived non-numerical relation of the data base, and extracting rules from said differentiable operators.
    Type: Application
    Filed: August 14, 2020
    Publication date: March 25, 2021
    Inventors: Csaba Domokos, Daria Stepanova, Jeremy Zieg Kolter, Po-wei Wang
  • Publication number: 20200372364
    Abstract: A system for applying a neural network to an input instance. The neural network includes an optimization layer for determining values of one or more output neurons from values of one or more input neurons by a joint optimization parametrized by one or more parameters. An input instance is obtained. The values of the one or more input neurons to the optimization layer are obtained and input vectors for the one or more input neurons are determined therefrom. Output vectors for the one or more output neurons are computed from the determined input vectors by jointly optimizing at least the output vectors with respect to the input vectors to solve a semidefinite program defined by the one or more parameters. The values of the one or more output neurons are determined from the respective computed output vectors.
    Type: Application
    Filed: May 12, 2020
    Publication date: November 26, 2020
    Inventors: Csaba Domokos, Jeremy Zieg Kolter, Po-wei Wang, Priya L. Donti