Cross-domain structural mapping in machine learning processing
Assignee
INTERNATIONAL BUSINESS MACHINES CORPORATION
Inventors
Yuya Jeremy Ong, Eric Kevin Butler, Robert Engel, German H Flores, Aly Megahed, Nitin Ramchandani
Abstract
A method of using a computing device executing to interrelate two or more corpuses of dissimilar data that includes receiving input data from each of two or more corpuses of dissimilar data. The computing device computes a pass for each of the input data into two or more encoder-decoder models. The computing device further obtains a prediction of an identity mapping for each of different domains of knowledge from each of the two or more encoder-decoder models. The computing device additionally computes a distribution distance metric as an output from each of a low-dimensional embedding vector representation from each of the two or more encoder-decoder models. The computing device still further computes a function based on each of the predictions from each of the two or more encoder-decoder models and the distribution distance metrics. The computing device additionally updates the two or more encoder-decoder models.
CPC Classifications
Filing Date
2020-12-31
Application No.
17139190
Claims
20