Patents by Inventor NOGA AGMON

NOGA AGMON 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: 20230119939
    Abstract: Techniques for verifying the identity of users transferring between devices are disclosed. An example method includes receiving device usage data by monitoring user-device interactions of a first set of users interacting with a first device and a second set of users interacting with a second device. The method also includes extracting features from the data and aggregating feature samples from the user-device interactions for first set of users and the second set of users. The method also includes generating a score for each feature based on an analysis the feature samples. The feature score indicates a degree to which the first set of feature samples and the second set of feature samples differentiate between the devices. The method also includes identifying features as transferrable if the score is below a specified threshold, and generating a new behavior model by modifying existing user behavior data according to the transferrable features.
    Type: Application
    Filed: October 19, 2021
    Publication date: April 20, 2023
    Inventors: Noga AGMON, Itay HAZAN, Matan LEVI
  • Patent number: 11455364
    Abstract: A machine learning clustering process is trained. Web pages of a website are clustered. User flow data associated with a first browsing session at the website is obtained. The user flow data includes a plurality of web page identifiers (e.g., URLs). A web page record for each of the web page identifiers is generated. Each web page record includes words of the corresponding web page identifier. Clusters of web page identifiers previously output from the trained machine learning clustering process are received. For each of the web page records, a cluster of web page identifiers is identified by mapping the web page record to one of the clusters of web page identifiers using the machine learning clustering process. A directed graph representative of the first browsing session is constructed. One or more nodes of the directed graph are the identified clusters of web page identifiers.
    Type: Grant
    Filed: June 23, 2020
    Date of Patent: September 27, 2022
    Assignee: International Business Machines Corporation
    Inventors: Andrey Finkelshtein, Noga Agmon, Eitan Menahem, Yehonatan Bitton
  • Publication number: 20220261657
    Abstract: Embodiments may include novel techniques for training and using an adversarial autoencoder for multi-source domain functions. For example, a method may comprise training an adversarial encoder comprising an encoder and a decoder by simultaneously training the encoder and the decoder, using data comprising a plurality of datasets, the data having labels based on an origin class and a dataset number, training the encoder to act as a generator to generate codewords based on the data for a generative adversarial network including the generator and a discriminator by training the generator to cause the discriminator to predict random labels for a plurality of data samples of each class and training the generator using the predicted random labels to generate codewords that relate to the origin class, and classifying new data samples using the trained adversarial encoder and generator, and the discriminator.
    Type: Application
    Filed: February 17, 2021
    Publication date: August 18, 2022
    Inventors: Anton Puzanov, Eitan Menahem, ANDREY FINKELSHTEIN, NOGA AGMON
  • Publication number: 20220172102
    Abstract: An example system includes a processor to receive mouse event data of a session. The processor is to split the mouse event data of the session into mouse event n-grams. The processor is to extract features from the mouse event n-grams. The processor is to send the extracted features to a trained machine learning model. The processor is to receive an output decision from the trained machine learning model.
    Type: Application
    Filed: November 30, 2020
    Publication date: June 2, 2022
    Inventors: Andrey FINKELSHTEIN, Anton PUZANOV, Noga AGMON, Eitan MENAHEM
  • Patent number: 11308077
    Abstract: A method for quantifying a similarity between a target dataset and multiple source datasets and identifying one or more source datasets that are most similar to the target dataset is provided. The method includes receiving, at a computing system, source datasets relating to a source domain and a target dataset relating to a target domain of interest. Each dataset is arranged in a tabular format including columns and rows, and the source datasets and the target dataset include a same feature space. The method also includes pre-processing, via a processor of the computing system, each source-target dataset pair to remove non-intersecting columns. The method further includes calculating at least two of a dataset similarity score, a row similarity score, and a column similarity score for each source-target dataset pair, and summarizing the calculated similarity scores to identify one or more source datasets that are most similar to the target dataset.
    Type: Grant
    Filed: July 21, 2020
    Date of Patent: April 19, 2022
    Assignee: International Business Machines Corporation
    Inventors: Bar Haim, Andrey Finkelshtein, Eitan Menahem, Noga Agmon
  • Publication number: 20220027339
    Abstract: A method for quantifying a similarity between a target dataset and multiple source datasets and identifying one or more source datasets that are most similar to the target dataset is provided. The method includes receiving, at a computing system, source datasets relating to a source domain and a target dataset relating to a target domain of interest. Each dataset is arranged in a tabular format including columns and rows, and the source datasets and the target dataset include a same feature space. The method also includes pre-processing, via a processor of the computing system, each source-target dataset pair to remove non-intersecting columns. The method further includes calculating at least two of a dataset similarity score, a row similarity score, and a column similarity score for each source-target dataset pair, and summarizing the calculated similarity scores to identify one or more source datasets that are most similar to the target dataset.
    Type: Application
    Filed: July 21, 2020
    Publication date: January 27, 2022
    Inventors: BAR HAIM, ANDREY FINKELSHTEIN, Eitan Menahem, NOGA AGMON
  • Publication number: 20210397669
    Abstract: A machine learning clustering process is trained. Web pages of a website are clustered. User flow data associated with a first browsing session at the website is obtained. The user flow data includes a plurality of web page identifiers (e.g., URLs). A web page record for each of the web page identifiers is generated. Each web page record includes words of the corresponding web page identifier. Clusters of web page identifiers previously output from the trained machine learning clustering process are received. For each of the web page records, a cluster of web page identifiers is identified by mapping the web page record to one of the clusters of web page identifiers using the machine learning clustering process. A directed graph representative of the first browsing session is constructed. One or more nodes of the directed graph are the identified clusters of web page identifiers.
    Type: Application
    Filed: June 23, 2020
    Publication date: December 23, 2021
    Inventors: ANDREY FINKELSHTEIN, NOGA AGMON, Eitan Menahem, Yehonatan Bitton