Patents by Inventor Liron Ben Kimon

Liron Ben Kimon 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: 11455517
    Abstract: Anomalies in a data set may be difficult to detect when individual items are not gross outliers from a population average. Disclosed is an anomaly detector that includes neural networks such as an auto-encoder and a discriminator. The auto-encoder and the discriminator may be trained on a training set that does not include anomalies. During training, an auto-encoder generates an internal representation from the training set, and reconstructs the training set from the internal representation. The training continues until data loss in the reconstructed training set is below a configurable threshold. The discriminator may be trained until the internal representation is constrained to a multivariable unit normal. Once trained, the auto-encoder and discriminator identify anomalies in the evaluation set. The identified anomalies in an evaluation set may be linked to transaction, security breach or population trends, but broadly, disclosed techniques can be used to identify anomalies in any suitable population.
    Type: Grant
    Filed: October 26, 2017
    Date of Patent: September 27, 2022
    Assignee: PayPal, Inc.
    Inventors: David Tolpin, Amit Batzir, Nofar Betzalel, Michael Dymshits, Benjamin Hillel Myara, Liron Ben Kimon
  • Publication number: 20210200955
    Abstract: Methods and systems for creating and analyzing encoded vector information from user activities relative to one or more services and/or devices are described. Sentiment analysis using natural language processing can be performed on user activity and a determination can be made as to whether the sentiment of a user account has fraudulent or benign sentiment. Should a fraudulent account sentiment be determined, mitigation measures may be taken including flagging and restricting a user account.
    Type: Application
    Filed: December 31, 2019
    Publication date: July 1, 2021
    Inventors: Liron Ben Kimon, Adi Watzman, Bradley Wardman, Yotam Perkal
  • Patent number: 10915629
    Abstract: Systems and methods for detecting data exfiltration using domain name system (DNS) queries include, in various embodiments, performing operations that include parsing a DNS query to determine whether that DNS query is likely to contain hidden data that is being exfiltrated from a system or network. Statistical methods can be used to analyze the DNS query to determine a likelihood whether each of a plurality of segments of the DNS query are indicative of data exfiltration methods. If one or multiple DNS queries are deemed suspicious based on the analysis, a security action on the DNS query can be performed, including sending an alert and/or blocking the DNS query from being forwarded.
    Type: Grant
    Filed: November 2, 2017
    Date of Patent: February 9, 2021
    Assignee: PayPal, Inc.
    Inventors: Michael Dymshits, David Tolpin, Eli Strajnik, Benjamin Hillel Myara, Liron Ben Kimon
  • Publication number: 20200410091
    Abstract: Within an organization, numerous different persons can access data. But a user account with database access may be compromised, leading to data theft and data destruction. Database queries used to access data may vary in length, content, and formatting. Features of these queries can be extracted to train a machine learning classifier. Queries for users can be mapped to a vector space and when a new sample query is received, it can be assessed using the classifier to determine its level of similarity with previous queries by that user and other users. By analyzing the results of this assessment on the new query, it can be determined if this new query represents a data access anomaly—e.g. a particularly unusual query for a user, given his or her past, that may indicate user credentials have been compromised. When a data access anomaly exists, a remedial action may be take.
    Type: Application
    Filed: June 25, 2019
    Publication date: December 31, 2020
    Inventors: Liron Ben Kimon, Yuri Shafet
  • Publication number: 20190130254
    Abstract: Anomalies in a data set may be difficult to detect when individual items are not gross outliers from a population average. Disclosed is an anomaly detector that includes neural networks such as an auto-encoder and a discriminator. The auto-encoder and the discriminator may be trained on a training set that does not include anomalies. During training, an auto-encoder generates an internal representation from the training set, and reconstructs the training set from the internal representation. The training continues until data loss in the reconstructed training set is below a configurable threshold. The discriminator may be trained until the internal representation is constrained to a multivariable unit normal. Once trained, the auto-encoder and discriminator identify anomalies in the evaluation set. The identified anomalies in an evaluation set may be linked to transaction, security breach or population trends, but broadly, disclosed techniques can be used to identify anomalies in any suitable population.
    Type: Application
    Filed: October 26, 2017
    Publication date: May 2, 2019
    Inventors: David Tolpin, Amit Batzir, Nofar Betzalel, Michael Dymshits, Benjamin Hillel Myara, Liron Ben Kimon
  • Publication number: 20190130100
    Abstract: Systems and methods for detecting data exfiltration using domain name system (DNS) queries include, in various embodiments, performing operations that include parsing a DNS query to determine whether that DNS query is likely to contain hidden data that is being exfiltrated from a system or network. Statistical methods can be used to analyze the DNS query to determine a likelihood whether each of a plurality of segments of the DNS query are indicative of data exfiltration methods. If one or multiple DNS queries are deemed suspicious based on the analysis, a security action on the DNS query can be performed, including sending an alert and/or blocking the DNS query from being forwarded.
    Type: Application
    Filed: November 2, 2017
    Publication date: May 2, 2019
    Inventors: Michael Dymshits, David Tolpin, Eli Strajnik, Benjamin Hillel Myara, Liron Ben Kimon