Patents by Inventor Robert Gilchrist Jaros

Robert Gilchrist Jaros 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: 9361586
    Abstract: An adaptive pattern recognition system optimizes an invariance objective and an input fidelity objective to accurately recognize input patterns in the presence of arbitrary input transformations. A fixed state or value of a feature output can nonlinearly reconstruct or generate multiple spatially distant input patterns and respond similarly to multiple spatially distant input patterns, while preserving the ability to efficiently evaluate the input fidelity objective. Exemplary networks, including a novel factorization of a third-order Boltzmann machine, exhibit multilayered, unsupervised learning of arbitrary transformations, and learn rich, complex features even in the absence of labeled data. These features are then used to classify unknown input patterns, to perform dimensionality reduction or compression.
    Type: Grant
    Filed: December 7, 2010
    Date of Patent: June 7, 2016
    Assignee: Yahoo! Inc.
    Inventors: Robert Gilchrist Jaros, Simon Kayode Osindero
  • Patent number: 7937342
    Abstract: An HTM node learns a plurality of groups of sensed input patterns over time based on the frequency of temporal adjacency of the input patterns. An HTM node receives a new sensed input, the HTM node assigns probabilities as to the likelihood that the new sensed input matches each of the plurality of learned groups. The HTM node then combines this probability distribution (may be normalized) with previous state information to assign probabilities as to the likelihood that the new sensed input is part of each of the learned groups of the HTM node. Then, as described above, the distribution over the set of groups learned by the HTM node is passed to a higher level node. This process is repeated at higher level nodes to infer a cause of the newly sensed input.
    Type: Grant
    Filed: November 27, 2007
    Date of Patent: May 3, 2011
    Assignee: Numenta, Inc.
    Inventors: Dileep George, Jeffrey C Hawkins, Robert Gilchrist Jaros
  • Publication number: 20080140593
    Abstract: An HTM node learns a plurality of groups of sensed input patterns over time based on the frequency of temporal adjacency of the input patterns. An HTM node receives a new sensed input, the HTM node assigns probabilities as to the likelihood that the new sensed input matches each of the plurality of learned groups. The HTM node then combines this probability distribution (may be normalized) with previous state information to assign probabilities as to the likelihood that the new sensed input is part of each of the learned groups of the HTM node. Then, as described above, the distribution over the set of groups learned by the HTM node is passed to a higher level node. This process is repeated at higher level nodes to infer a cause of the newly sensed input.
    Type: Application
    Filed: November 27, 2007
    Publication date: June 12, 2008
    Applicant: NUMENTA, INC.
    Inventors: Dileep George, Jeffrey Charles Hawkins, Robert Gilchrist Jaros