PREDICTING VALUES FOR A MULTITUDE OF TIME SERIES WITH TARGET AND INPUT VARIABLES CONNECTED IN A GRAPH

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United States of America

APP PUB NO 20250053864A1
SERIAL NO

18507203

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Abstract

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A computer-implemented method for training a machine learning—artificial intelligence model for multiple prediction tasks includes inputting data for tasks and additional data sources through a common trainable task representation function to obtain a data representation for each. Each resulting data representation is input through two individual trainable linear functions to obtain a corresponding prediction and adversarial prediction. A prediction error for the tasks, an adversarial error across edges of a graph, an auxiliary error for the additional data sources, and a graph error are determined. Parameters of the common trainable task representation function and the trainable linear functions are trained based on a comparison against a weighted sum of the errors. The present invention can be used in a variety of applications including, but not limited to, several anticipated use cases in drug development, material synthesis, and medical/healthcare.

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Inventor(s)

Inventor Name Address # of filed Patents Total Citations
Jacobs, Tobias Heidelberg, DE 25 61
Shaker, Ammar Heidelberg, DE 14 35

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