Patents by Inventor Bernadette Garner

Bernadette Garner 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: 20220366258
    Abstract: The present disclosure provides an artificial neural network communicatively-coupled to at least one computer having one or more processors, including a plurality of neurons arranged in layers. The artificial neural network is arranged to receive a new neuron into a layer of the artificial neural network during training; the new neuron being added to the neural network when no other neuron in that layer for a selected output can learn a relationship associated with an input vector of a data set being learnt.
    Type: Application
    Filed: March 1, 2022
    Publication date: November 17, 2022
    Inventor: Bernadette GARNER
  • Patent number: 11263528
    Abstract: The present disclosure provides an artificial neural network communicatively-coupled to at least one computer having one or more processors, including a plurality of neurons arranged in layers. The artificial neural network is arranged to receive a new neuron into a layer of the artificial neural network during training; the new neuron is added to the neural network when no other neuron in that layer for a selected output can learn a relationship associated with an input vector of a data set being learnt. The new neuron is updated with both the relationship which could not be learnt by any other neuron in that layer and a modified data set from a last trained neuron in that layer that contributes to the selected output of the neural network. Methods and computer-readable media are also disclosed.
    Type: Grant
    Filed: October 14, 2014
    Date of Patent: March 1, 2022
    Inventor: Bernadette Garner
  • Publication number: 20180101769
    Abstract: The present disclosure provides an artificial neural network communicatively-coupled to at least one computer having one or more processors, including a plurality of neurons arranged in layers. The artificial neural network is arranged to receive a new neuron into a layer of the artificial neural network during training; the new neuron being added to the neural network when no other neuron in that layer for a selected output can learn a relationship associated with an input vector of a data set being learnt.
    Type: Application
    Filed: October 14, 2014
    Publication date: April 12, 2018
    Inventor: Bernadette Garner
  • Publication number: 20170169331
    Abstract: The present disclosure provides an artificial neural network communicatively-coupled to at least one computer having one or more processors, including a plurality of neurons arranged in layers. The artificial neural network is arranged to receive a new neuron into a layer of the artificial neural network during training; the new neuron being added to the neural network when no other neuron in that layer for a selected output can learn a relationship associated with an input vector of a data set being learnt.
    Type: Application
    Filed: October 14, 2014
    Publication date: June 15, 2017
    Inventor: Bernadette Garner
  • Patent number: 8862527
    Abstract: Methods (30) for training an artificial neural network (NN) are disclosed. An example method (30) includes: initializing the NN by selecting an output of the NN to be trained and connecting an output neuron of the NN to input neuron(s) in an input layer of the NN for the selected output; preparing a data set to be learnt by the NN; and, applying the prepared data set to the NN to be learnt by applying an input vector of the prepared data set to the first hidden layer of the NN, or the output layer of the NN if the NN has no hidden layer(s), and determining whether at least one neuron for the selected output in each layer of the NN can learn to produce the associated output for the input vector.
    Type: Grant
    Filed: November 15, 2006
    Date of Patent: October 14, 2014
    Inventor: Bernadette Garner
  • Publication number: 20080281767
    Abstract: The present invention provides a method (30) for training an artificial neural network (NN). The method (30) includes the steps of: initialising the NN by selecting an output of the NN to be trained and connecting an output neuron of the NN to input neuron(s) in an input layer of the NN for the selected output; preparing a data set to be learnt by the NN; and, applying the prepared data set to the NN to be learnt by applying an input vector of the prepared data set to the first hidden layer of the NN, or the output layer of the NN if the NN has no hidden layer(s), and determining whether at least one neuron for the selected output in each layer of the NN can learn to produce the associated output for the input vector. If none of the neurons in a layer of the NN can learn to produce the associated output for the input vector, then a new neuron is added to that layer to learn the associated output which could not be learnt by any other neuron in that layer.
    Type: Application
    Filed: November 15, 2006
    Publication date: November 13, 2008
    Inventor: Bernadette Garner