Patents by Inventor Justin M. Beaver

Justin M. Beaver 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: 9497204
    Abstract: A computer implemented method detects intrusions using a computer by analyzing network traffic. The method includes a semi-supervised learning module connected to a network node. The learning module uses labeled and unlabeled data to train a semi-supervised machine learning sensor. The method records events that include a feature set made up of unauthorized intrusions and benign computer requests. The method identifies at least some of the benign computer requests that occur during the recording of the events while treating the remainder of the data as unlabeled. The method trains the semi-supervised learning module at the network node in-situ, such that the semi-supervised learning modules may identify malicious traffic without relying on specific rules, signatures, or anomaly detection.
    Type: Grant
    Filed: August 25, 2014
    Date of Patent: November 15, 2016
    Assignee: UT-Battelle, LLC
    Inventors: Christopher T. Symons, Justin M. Beaver, Rob Gillen, Thomas E. Potok
  • Publication number: 20150067857
    Abstract: A computer implemented method detects intrusions using a computer by analysing network traffic. The method includes a semi-supervised learning module connected to a network node. The learning module uses labeled and unlabeled data to train a semi-supervised machine learning sensor. The method records events that include a feature set made up of unauthorized intrusions and benign computer requests. The method identifies at least some of the benign computer requests that occur during the recording of the events while treating the remainder of the data as unlabeled. The method trains the semi-supervised learning module at the network node in-situ, such that the semi-supervised learning modules may identify malicious traffic without relying on specific rules, signatures, or anomaly detection.
    Type: Application
    Filed: August 25, 2014
    Publication date: March 5, 2015
    Inventors: Christopher T. Symons, Justin M. Beaver, Rob Gillen, Thomas E. Potok