Patents by Inventor Santhosh Baramasagara Chandrasekharappa

Santhosh Baramasagara Chandrasekharappa 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: 9407463
    Abstract: Systems and methods are provided for identifying unsolicited or unwanted electronic communications, such as spam. The disclosed embodiments also encompass systems and methods for selecting content items from a content item database. Consistent with certain embodiments, computer-implemented systems and methods may use a clustering based statistical content matching anti-spam algorithm to identify and filter spam. Such a anti-spam algorithm may be implemented to determine a degree of similarity between an incoming e-mail with a collection of one or more spam e-mails stored in a database. If the degree of similarity exceeds a predetermined threshold, the incoming e-mail may be classified as spam. Further, in accordance with other embodiments, systems and methods may be provided to determine a degree of similarity between a query or search string from a user and content items stored in a database.
    Type: Grant
    Filed: July 11, 2011
    Date of Patent: August 2, 2016
    Assignee: AOL INC.
    Inventors: Rakesh Nigam, Santhosh Baramasagara Chandrasekharappa, Sivakumar Ekambaram, James Sargent, Jean-Jacques Moortgat, Senthil Kumar Sellaiya Selvaraj
  • Publication number: 20150142809
    Abstract: Systems and methods are provided for identifying unsolicited or unwanted electronic communications, such as spam. The disclosed embodiments also encompass systems and methods for selecting content items from a content item database. Consistent with certain embodiments, computer-implemented systems and methods may use a clustering based statistical content matching anti-spam algorithm to identify and filter spam. Such a anti-spam algorithm may be implemented to determine a degree of similarity between an incoming e-mail with a collection of one or more spam e-mails stored in a database. If the degree of similarity exceeds a predetermined threshold, the incoming e-mail may be classified as spam. Further, in accordance with other embodiments, systems and methods may be provided to determine a degree of similarity between a query or search string from a user and content items stored in a database.
    Type: Application
    Filed: January 26, 2015
    Publication date: May 21, 2015
    Inventors: Santhosh Baramasagara CHANDRASEKHARAPPA, Sivakumar EKAMBARAM, Saurabh SOHONEY, Rakesh NIGAM
  • Patent number: 8954458
    Abstract: Systems and methods are provided for identifying unsolicited or unwanted electronic communications, such as spam. The disclosed embodiments also encompass systems and methods for selecting content items from a content item database. Consistent with certain embodiments, computer-implemented systems and methods may use a clustering based statistical content matching anti-spam algorithm to identify and filter spam. Such a anti-spam algorithm may be implemented to determine a degree of similarity between an incoming e-mail with a collection of one or more spam e-mails stored in a database. If the degree of similarity exceeds a predetermined threshold, the incoming e-mail may be classified as spam. Further, in accordance with other embodiments, systems and methods may be provided to determine a degree of similarity between a query or search string from a user and content items stored in a database.
    Type: Grant
    Filed: July 11, 2011
    Date of Patent: February 10, 2015
    Assignee: AOL Inc.
    Inventors: Santhosh Baramasagara Chandrasekharappa, Sivakumar Ekambaram, Saurabh Sohoney, Rakesh Nigam
  • Publication number: 20130018906
    Abstract: Systems and methods are provided for identifying unsolicited or unwanted electronic communications, such as spam. The disclosed embodiments also encompass systems and methods for selecting content items from a content item database. Consistent with certain embodiments, computer-implemented systems and methods may use a clustering based statistical content matching anti-spam algorithm to identify and filter spam. Such a anti-spam algorithm may be implemented to determine a degree of similarity between an incoming e-mail with a collection of one or more spam e-mails stored in a database. If the degree of similarity exceeds a predetermined threshold, the incoming e-mail may be classified as spam. Further, in accordance with other embodiments, systems and methods may be provided to determine a degree of similarity between a query or search string from a user and content items stored in a database.
    Type: Application
    Filed: July 11, 2011
    Publication date: January 17, 2013
    Inventors: Rakesh NIGAM, Santhosh Baramasagara Chandrasekharappa, Sivakumar Ekambaram, James Sargent, Jean-Jacques Moortgat, Senthil Kumar Sellaiya Selvaraj
  • Publication number: 20130018884
    Abstract: Systems and methods are provided for identifying unsolicited or unwanted electronic communications, such as spam. The disclosed embodiments also encompass systems and methods for selecting content items from a content item database. Consistent with certain embodiments, computer-implemented systems and methods may use a clustering based statistical content matching anti-spam algorithm to identify and filter spam. Such a anti-spam algorithm may be implemented to determine a degree of similarity between an incoming e-mail with a collection of one or more spam e-mails stored in a database. If the degree of similarity exceeds a predetermined threshold, the incoming e-mail may be classified as spam. Further, in accordance with other embodiments, systems and methods may be provided to determine a degree of similarity between a query or search string from a user and content items stored in a database.
    Type: Application
    Filed: July 11, 2011
    Publication date: January 17, 2013
    Inventors: Santhosh Baramasagara Chandrasekharappa, Sivakumar Ekambaram, Saurabh Sohoney, Rakesh Nigam