Invention Grant
- Patent Title: System and method for efficient evolution of deep convolutional neural networks using filter-wise recombination and propagated mutations
-
Application No.: US16121015Application Date: 2018-09-04
-
Publication No.: US10339450B2Publication Date: 2019-07-02
- Inventor: Eli David
- Applicant: DeepCube Ltd.
- Applicant Address: IL Tel Aviv
- Assignee: DeepCube Ltd.
- Current Assignee: DeepCube Ltd.
- Current Assignee Address: IL Tel Aviv
- Agency: Pearl Cohen Zedek Latzer Baratz LLP
- Main IPC: G06N3/08
- IPC: G06N3/08 ; G06N3/04

Abstract:
An efficient technique of machine learning is provided for training a plurality of convolutional neural networks (CNNs) with increased speed and accuracy using a genetic evolutionary model. A plurality of artificial chromosomes may be stored representing weights of artificial neuron connections of the plurality of respective CNNs. A plurality of pairs of the chromosomes may be recombined to generate, for each pair, a new chromosome (with a different set of weights than in either chromosome of the pair) by selecting entire filters as inseparable groups of a plurality of weights from each of the pair of chromosomes (e.g., “filter-by-filter” recombination). A plurality of weights of each of the new or original plurality of chromosomes may be mutated by propagating recursive error corrections incrementally throughout the CNN. A small random sampling of weights may optionally be further mutated to zero, random values, or a sum of current and random values.
Public/Granted literature
Information query