US2015161508A1PendingUtilityA1

Multiple output relaxation machine learning model

Assignee: INSIDESALES COM INCPriority: Aug 20, 2012Filed: Feb 19, 2015Published: Jun 11, 2015
Est. expiryAug 20, 2032(~6.1 yrs left)· nominal 20-yr term from priority
G06N 20/00G06N 3/045G06N 3/08G06N 3/0499G06N 3/09H04L 67/10G06N 3/04
47
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Claims

Abstract

A multiple output relaxation (MOR) machine learning model. In one example embodiment, a method for employing an MOR machine learning model to predict multiple interdependent output components of a multiple output dependency (MOD) output decision may include training a classifier for each of multiple interdependent output components of an MOD output decision to predict the component based on an input and based on all of the other components. The method may also include initializing each possible value for each of the components to a predetermined output value. The method may further include running relaxation iterations on each of the classifiers to update the output value of each possible value for each of the components until a relaxation state reaches an equilibrium or a maximum number of relaxation iterations is reached. The method may also include retrieving an optimal component from each of the classifiers.

Claims

exact text as granted — not AI-modified
What is claimed is: 
     
         1 . A method for employing a multiple output relaxation (MOR) machine learning model to predict multiple interdependent output components of a multiple output dependency (MOD) output decision, the method comprising:
 training a classifier for each of multiple interdependent output components of an MOD output decision to predict the component based on an input and based on all of the other components;   initializing each possible value for each of the components to a predetermined output value;   running relaxation iterations on each of the classifiers to update the output value of each possible value for each of the components until a relaxation state reaches an equilibrium or a maximum number of relaxation iterations is reached; and   retrieving an optimal component from each of the classifiers.

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