Patent · US Expired

Computer system and process for training of analytical models using large data sets

US6347310B1 · kind B1 · utility

74Cited by
7References
16Claims
0Family size

Assignee

Inventor

Key dates

Filing dateMay 11, 1998
Grant dateFeb 12, 2002
Priority date
Expiry dateMay 11, 2018

Classification

  • Technology area (CPC G)Physics
  • CPC primaryG06N20/00
  • WIPO fieldComputer technology
  • WIPO sectorElectrical engineering

Abstract

A database often contains sparse, i.e., under-represented, conditions which might be not represented in a training data set for training an analytical model if the training data set is created by stratified sampling. Sparse conditions may be represented in a training set by using a data set which includes essentially all of the data in a database, without stratified sampling. A series of samples, or “windows,” are used to select portions of the large data set for phases of training. In general, the first window of data should be a reasonably broad sample of the data. After the model is initially trained using a first window of data, subsequent windows are used to retrain the model. For some model types, the model is modified in order to provide it with some retention of training obtained using previous windows of data. Neural networks and Kohonen networks may be used without modification. Models such as probabilistic neural networks, generalized regression neural networks, Gaussian radial basis functions, decision trees, including K-D trees and neural trees, are modified to provide them with properties of memory to retain the effects of training with previous training d…

Source: USPTO / EPO open patent data. Objective bibliographic and citation counts.