Patents by Inventor Tony Jebara

Tony Jebara 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: 20120317060
    Abstract: A computerized method for optimizing parameters is described. A system can initialize a group of parameters to respective values within a set of allowable models and bound a partition function across a number of variable pairs to generate a plurality of bounds. The system can also determine new values for the group of parameters that minimize a sum of the plurality of bounds. The system can set the group of parameters to the new values and optimize the parameters by iteratively performing the bounding, determining and setting. The system can stop optimizing when a termination condition is reached.
    Type: Application
    Filed: June 7, 2012
    Publication date: December 13, 2012
    Applicant: The Trustees of Columbia University in the City of New York
    Inventor: Tony Jebara
  • Patent number: 8224766
    Abstract: Systems and computer-implemented methods are provided for comparing, associating and deriving associations between two or more spatial temporal data trails. One or more spatial-temporal data trails comprising one or more places are received at a processor. Each place is identified by a spatial temporal data point. And each spatial-temporal data trail is associated with an individual. The similarity between pairs of places is determined to establish one or more groups of places or one or more groups of individuals. Similarity and/groups can be determined based on demographics associated with the place or individual.
    Type: Grant
    Filed: September 30, 2008
    Date of Patent: July 17, 2012
    Assignee: Sense Networks, Inc.
    Inventors: Greg Skibiski, Alex (Sandy) Pentland, Tony Jebara, Christine Lemke, Markus Loecher, Girish Rao, Jason Uechi, Blake Shaw, Joseph Mattiello, David Rosenberg
  • Publication number: 20120071175
    Abstract: A system and method are provided for associating location data from one or more unique sources. The place and time of a unique location enabled device are associated with stored demographic information relating to the particular place and particular time. The place and time of the unique location enabled device are associated with a historical record of past locations and time of locations that the device has been. Based on the association of demographical information and historical information, the unique location enable device is assigned to one or more groups or tribes. The location of all members of the group or tribe can be aggregated and exported for further analysis or display, thereby showing all group or tribe members at a particular time and place.
    Type: Application
    Filed: November 23, 2011
    Publication date: March 22, 2012
    Applicant: Sense Networks, Inc.
    Inventors: Greg SKIBISKI, Alex (Sandy) PENTLAND, Tony JEBARA, Christine LEMKE, Markus LOECHER, Girish RAO, Jason UECHI, Blake SHAW, Joseph MATTIELLO
  • Publication number: 20120066172
    Abstract: A system, method and computer-readable medium for maximum a posteriori (MAP) estimation of a graphical model are disclosed. The MAP estimation process can include obtaining an encoded data message sent over a 4G cellular wireless network and generating a graphical model representation of the message. The graphical model can be converted into a nand Markov random field (NMRF). The MAP estimation process can also include determining whether the NMRF has a perfect graph structure, and solving for a MAP estimate configuration of the NMRF. The MAP estimation process can further include outputting the MAP estimate configuration, an indication of the MAP estimate configuration, and/or a result based on a combination of the MAP estimate configuration and the encoded data message (e.g., a decoded message).
    Type: Application
    Filed: November 17, 2011
    Publication date: March 15, 2012
    Inventor: Tony Jebara
  • Publication number: 20120005238
    Abstract: A method, system, computer program product and computer readable media for matching using degree distribution information are disclosed. An embodiment of the method can include performing b-matching on a graph data structure expanded using degree distribution information in order to identify neighbors of a selected input node. The b-matching can be performed using belief propagation. The belief propagation method is adapted to use a compressed message update rule and to be suitable for use with distributed processing systems. An embodiment can also include enhancing a matching result by applying degree distribution information to a first matching result to generate a second matching result. Embodiments for online advertisement/search term matching, product recommendation, dating service and social network matching, auction buyer/seller matching and resource allocation, among other, are disclosed.
    Type: Application
    Filed: December 11, 2009
    Publication date: January 5, 2012
    Inventors: Tony Jebara, Bert Huang
  • Publication number: 20110314367
    Abstract: A system and method for labeling and classifying multimedia data is provided that includes novel label propagation techniques and classification function characteristics. The system and method corrects and propagates a small number of potentially erroneous labels to a large amount of multimedia data and generate optimal ways of ranking, classification, and presentation of the data sets. The disclosed systems and methods improve upon prior systems and methods and provide an improved approach to the problems of imbalanced data sets and incorrect label data.
    Type: Application
    Filed: June 21, 2011
    Publication date: December 22, 2011
    Applicant: THE TRUSTEES OF COLUMBIA UNIVERSITY IN THE CITY OF NEW YORK
    Inventors: Shih-Fu Chang, Jun Wang, Tony Jebara
  • Publication number: 20110040619
    Abstract: Entities may be matched to enhance the efficiency of various commercial activities using various system and method embodiments of the disclosed subject matter. Belief propagation on a graph data structure defining a bipartite or unipartite matching opportunity is used to calculate a best matching. In embodiments, functions are implemented based upon the match, such as executing sales between matched buyers and sellers in an online auction system. In embodiments, messages with scalar values carry information about the relative value of possible matchings, initially provided as weights or values for the possible matchings. Weights may depend on, for example, bids or costs. Messages may be passed, for example over a network between processors respective to the nodes. Belief values reflecting a best matching can be continuously updated for each node responsively to the value information and received messages to rank the matches respective to each node, which progressively improve.
    Type: Application
    Filed: January 26, 2009
    Publication date: February 17, 2011
    Applicant: Trustees of Columbia University in the City of New York
    Inventors: Tony Jebara, Bert Huang
  • Patent number: 7788191
    Abstract: Methods and systems are provided for encoding, transmission and decoding of vectorized input data, for example, video or audio data. A convex invariance learning framework is established for processing input data or a given data type. Each input vector is associated with a variable transformation matrix that acts on the vector to invariantly permute the vector elements. Joint invariance and model learning is performed on a training set of invariantly transformed vectors over a constrained space of transformation matrices using maximum likelihood analysis. The maximum likelihood analysis reduces the data volume to a linear subspace volume in which the training data can be modeled by a reduced number of variables. Principal component analysis is used to identify a set of N eigenvectors that span the linear subspace. The set of N eigenvectors is used a basis set to encode input data and to decode compressed data.
    Type: Grant
    Filed: May 18, 2005
    Date of Patent: August 31, 2010
    Assignee: The Trustees of Columbia University in the City of New York
    Inventor: Tony Jebara
  • Publication number: 20100079336
    Abstract: Systems and computer implemented methods are provided for comparing, associating and deriving associations between two or more spatial temporal data trails. One or more spatial-temporal data trails comprising one or more places are received at a processor. Each place is identified by a spatial temporal data point. And each spatial-temporal data trail is associated with an individual. The similarity between pairs of places is determined to establish one or more groups of places or one or more groups of individuals. Similarity and/groups can be determined based on demographics associated with the place or individual.
    Type: Application
    Filed: September 30, 2008
    Publication date: April 1, 2010
    Applicant: Sense Networks, Inc.
    Inventors: Greg Skibiski, Alex (Sandy) Pentland, Tony Jebara, Christine Lemke, Markus Loecher, Girish Rao, Jason Uechi, Blake Shaw, Joseph Mattiello, David Rosenberg
  • Publication number: 20100082301
    Abstract: A method of detecting an event anomaly includes receiving one or more data points, in which each data point represents a spatial or temporal event, associating a unique identifier with each of the one or more data points to obtain one or more individualized data points, distributing the one or more individualized data points across a grid, in which the grid includes one or more cells, determining an event likelihood ratio for one or more of the grid cells, identifying one or more event clusters, in which each event cluster includes one or more of the grid cells, and storing in a data repository an event cluster having a significance level above a threshold significance level.
    Type: Application
    Filed: September 30, 2008
    Publication date: April 1, 2010
    Applicant: Sense Netwoks, Inc.
    Inventors: Greg Skibiski, Alex (Sandy) Pentland, Tony Jebara, Christine Lemke, Markus Loecher, Girish Rao, Jason Uechi, Blake Shaw, Joseph Mattiello, David Rosenberg
  • Publication number: 20090307263
    Abstract: A system and method are provided for associating location data from one or more unique sources. The place and time of a unique location enabled device are associated with stored demographic information relating to the particular place and particular time. The place and time of the unique location enabled device are associated with a historical record of past locations and time of locations that the device has been. Based on the association of demographical information and historical information, the unique location enable device is assigned to one or more groups or tribes. The location of all members of the group or tribe can be aggregated and exported for further analysis or display, thereby showing all group or tribe members at a particular time and place.
    Type: Application
    Filed: June 6, 2008
    Publication date: December 10, 2009
    Applicant: Sense Networks, Inc.
    Inventors: Greg Skibiski, Alex (Sandy) Pentland, Tony Jebara, Christine Lemke, Markus Loecher, Girish Rao, Jason Uechi, Blake Shaw, Joseph Mattiello
  • Publication number: 20050265618
    Abstract: Methods and systems are provided for encoding, transmission and decoding of vectorized input data, for example, video or audio data. A convex invariance learning framework is established for processing input data or a given data type. Each input vector is associated with a variable transformation matrix that acts on the vector to invariantly permute the vector elements. Joint invariance and model learning is performed on a training set of invariantly transformed vectors over a constrained space of transformation matrices using maximum likelihood analysis. The maximum likelihood analysis reduces the data volume to a linear subspace volume in which the training data can be modeled by a reduced number of variables. Principal component analysis is used to identify a set of N eigen vectors that span the linear subspace. The set of N eigenvectors is used a basis set to encode input data and to decode compressed data.
    Type: Application
    Filed: May 18, 2005
    Publication date: December 1, 2005
    Inventor: Tony Jebara