Patents by Inventor Christopher Fiorillo

Christopher Fiorillo 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: 8504502
    Abstract: Associative plasticity rules are described to control the strength of inputs to an artificial neuron. Inputs to a neuron consist of both synaptic inputs and non-synaptic, voltage-regulated inputs. The neuron's output is voltage. Hebbian and anti-Hebbian-type plasticity rules are implemented to select amongst a spectrum of voltage-regulated inputs, differing in their voltage-dependence and kinetic properties. An anti-Hebbian-type rule selects inputs that predict and counteract deviations in membrane voltage, thereby generating an output that corresponds to a prediction error. A Hebbian-type rule selects inputs that predict and amplify deviations in membrane voltage, thereby contributing to pattern generation. In further embodiments, Hebbian and anti-Hebbian-type plasticity rules are also applied to synaptic inputs. In other embodiments, reward information is incorporated into Hebbian-type plasticity rules.
    Type: Grant
    Filed: April 16, 2010
    Date of Patent: August 6, 2013
    Inventor: Christopher Fiorillo
  • Patent number: 8112372
    Abstract: An artificial neuron integrates current and prior information, each of which predicts the state of a part of the world. The neuron's output corresponds to the discrepancy between the two predictions, or prediction error. Inputs contributing prior information are selected in order to minimize the error, which can occur through an anti-Hebbian-type plasticity rule. Current information sources are selected to maximize errors, which can occur through a Hebbian-type rule. This insures that the neuron receives new information from its external world that is not redundant with the prior information that the neuron already possesses. By learning on its own to make predictions, a neuron or network of these neurons acquires information necessary to generate intelligent and advantageous outputs.
    Type: Grant
    Filed: November 14, 2008
    Date of Patent: February 7, 2012
    Inventor: Christopher Fiorillo
  • Publication number: 20100198765
    Abstract: Associative plasticity rules are described to control the strength of inputs to an artificial neuron. Inputs to a neuron consist of both synaptic inputs and non-synaptic, voltage-regulated inputs. The neuron's output is voltage. Hebbian and anti-Hebbian-type plasticity rules are implemented to select amongst a spectrum of voltage-regulated inputs, differing in their voltage-dependence and kinetic properties. An anti-Hebbian-type rule selects inputs that predict and counteract deviations in membrane voltage, thereby generating an output that corresponds to a prediction error. A Hebbian-type rule selects inputs that predict and amplify deviations in membrane voltage, thereby contributing to pattern generation. In further embodiments, Hebbian and anti-Hebbian-type plasticity rules are also applied to synaptic inputs. In other embodiments, reward information is incorporated into Hebbian-type plasticity rules.
    Type: Application
    Filed: April 16, 2010
    Publication date: August 5, 2010
    Inventor: Christopher FIORILLO
  • Publication number: 20090132451
    Abstract: An artificial neuron integrates current and prior information, each of which predicts the state of a part of the world. The neuron's output corresponds to the discrepancy between the two predictions, or prediction error. Inputs contributing prior information are selected in order to minimize the error, which can occur through an anti-Hebbian-type plasticity rule. Current information sources are selected to maximize errors, which can occur through a Hebbian-type rule. This insures that the neuron receives new information from its external world that is not redundant with the prior information that the neuron already possesses. By learning on its own to make predictions, a neuron or network of these neurons acquires information necessary to generate intelligent and advantageous outputs.
    Type: Application
    Filed: November 14, 2008
    Publication date: May 21, 2009
    Inventor: Christopher Fiorillo