Patents by Inventor Micah Rupersburg

Micah Rupersburg 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: 20070208856
    Abstract: The subject invention provides for a feedback loop system and method that facilitate classifying items in connection with spam prevention in server and/or client-based architectures. The invention makes uses of a machine-learning approach as applied to spam filters, and in particular, randomly samples incoming email messages so that examples of both legitimate and junk/spam mail are obtained to generate sets of training data. Users which are identified as spam-fighters are asked to vote on whether a selection of their incoming email messages is individually either legitimate mail or junk mail. A database stores the properties for each mail and voting transaction such as user information, message properties and content summary, and polling results for each message to generate training data for machine learning systems. The machine learning systems facilitate creating improved spam filter(s) that are trained to recognize both legitimate mail and spam mail and to distinguish between them.
    Type: Application
    Filed: May 2, 2007
    Publication date: September 6, 2007
    Applicant: MICROSOFT CORPORATION
    Inventors: Robert Rounthwaite, Joshua Goodman, David Heckerman, John Mehr, Nathan Howell, Micah Rupersburg, Dean Slawson
  • Publication number: 20070118904
    Abstract: The present invention involves a system and method that facilitate extracting data from messages for spam filtering. The extracted data can be in the form of features, which can be employed in connection with machine learning systems to build improved filters. Data associated with origination information as well as other information embedded in the body of the message that allows a recipient of the message to contact and/or respond to the sender of the message can be extracted as features. The features, or a subset thereof, can be normalized and/or deobfuscated prior to being employed as features of the machine learning systems. The (deobfuscated) features can be employed to populate a plurality of feature lists that facilitate spam detection and prevention. Exemplary features include an email address, an IP address, a URL, an embedded image pointing to a URL, and/or portions thereof.
    Type: Application
    Filed: January 9, 2007
    Publication date: May 24, 2007
    Applicant: MICROSOFT CORPORATION
    Inventors: Joshua Goodman, Robert Rounthwaite, Daniel Gwozdz, John Mehr, Nathan Howell, Micah Rupersburg, Bryan Starbuck
  • Publication number: 20050193073
    Abstract: The present invention involves a system and method that facilitate extracting data from messages for spam filtering. The extracted data can be in the form of features, which can be employed in connection with machine learning systems to build improved filters. Data associated with the subject line, timestamps, and the message body can be extracted and employed to generate one or more features. In particular, subject lines and message bodies can be examined for consecutive, repeating characters, blobs, the association or distance between such characters, blobs and non-blob portions of the message. The values or counts obtained can be broken down into one or more ranges corresponding to a degree of spaminess. Presence and type of attachments to messages, percentage of non-white-space and non-numeric characters of a message, and determining message delivery times can be used to identify spam. A time-based delta can be computed to facilitate determining the delivery time.
    Type: Application
    Filed: March 1, 2004
    Publication date: September 1, 2005
    Inventors: John Mehr, Nathan Howell, Micah Rupersburg
  • Publication number: 20050022008
    Abstract: The present invention involves a system and method that facilitate extracting data from messages for spam filtering. The extracted data can be in the form of features, which can be employed in connection with machine learning systems to build improved filters. Data associated with origination information as well as other information embedded in the body of the message that allows a recipient of the message to contact and/or respond to the sender of the message call be extracted as features. The features, or a subset thereof, can be normalized and/or deobfuscated prior to being employed as features of the machine learning systems. The (deobfuscated) features can be employed to populate a plurality of feature lists that facilitate spam detection and prevention. Exemplary features include an email address, an IP address, a URL, an embedded image pointing to a URL, and/or portions thereof.
    Type: Application
    Filed: June 4, 2003
    Publication date: January 27, 2005
    Inventors: Joshua Goodman, Robert Rounthwaite, Daniel Gwozdz, John Mehr, Nathan Howell, Micah Rupersburg, Bryan Starbuck