Generative reasoning for symbolic discovery
Assignee
ASSI International Business Machines Corporation
Inventors
Cristina Cornelio, Ruixuan Yan, Vasily Pestun, Lior Horesh
Abstract
Provide a background theory applicable to a scientific problem as input to a computerized generative reasoner, which in turn produces a plurality of provable conjectures applicable to the problem, based on the input. Provide the plurality of provable conjectures and a set of input training data to a computerized model inference engine, which fits the input training data to the plurality of provable conjectures to obtain at least one candidate symbolic model reflecting scientific laws associated with the problem. Reduce a search space of a computerized prediction module by providing to the computerized prediction module at least one candidate symbolic model. Provide new data to the computerized prediction module, which searches in the reduced search space to make a prediction related to the problem based on the new data and the at least one candidate symbolic model.
CPC Classifications
Filing Date
2020-10-02
Application No.
17062058
Claims
19