MODULARIZED AND CORRELATION-BASED CONFIGURATION PROCESS FRAMEWORK FOR MACHINE LEARNING MODELS

Number of patents in Portfolio can not be more than 2000

United States of America Patent

APP PUB NO 20230153573A1
SERIAL NO

18052400

Stats

ATTORNEY / AGENT: (SPONSORED)

Importance

Loading Importance Indicators... loading....

Abstract

See full text

Various embodiments are directed to configuring or training deep neural network (DNN) machine learning models comprising one or more hidden layers and an output layer. Various embodiments provide technical advantages in training DNN machine learning models, including improved computational efficiency and guaranteed optimality. In one embodiment, an example method includes identifying a nonlinear-model-based representation for each hidden layer, which may be a Bank of Wiener Models, a nonlinear units of the hidden layer, and/or the like. The method further includes individually and sequentially configuring the hidden layers, each configured by determining a correlation measure (e.g., a correlation ratio) between the layer output and a target signal. Parameters of the particular hidden layer are modified by maximizing the correlation measure to yield maximal correlation over the space of functions. The method further includes performing automated tasks using the DNN machine learning model after configuring its parameters on a training set.

Loading the Abstract Image... loading....

First Claim

See full text

Family

Loading Family data... loading....

Patent Owner(s)

Patent OwnerAddress
UNIVERSITY OF FLORIDA RESEARCH FOUNDATION INCORPORATED223 GRINTER HALL GAINESVILLE FL 32611

International Classification(s)

  • [Classification Symbol]
  • [Patents Count]

Inventor(s)

Inventor Name Address # of filed Patents Total Citations
Hu, Bo Gainesville, US 276 1950
Principe, Jose C Gainesville, US 47 1968

Cited Art Landscape

Load Citation

Patent Citation Ranking

Forward Cite Landscape

Load Citation