NEURAL NETWORKS FOR SYNTHETIC DATA GENERATION WITH DISCRETE AND CONTINUOUS VARIABLE FEATURES

    公开(公告)号:US20250061612A1

    公开(公告)日:2025-02-20

    申请号:US18585286

    申请日:2024-02-23

    Abstract: In various examples, systems and methods are disclosed relating to neural networks for synthetic data generation with discrete and continuous variable features. In training, an encoder can determine a plurality of encodings from a plurality of samples of training data, and the continuous generative model can operate as a decoder that is conditioned on the plurality of encodings to generate an estimated output to update the encoder and the continuous generative model. The discrete generative model can be trained over the plurality of encodings to learn to generate discrete variables corresponding to the distribution of information represented by the training data. At runtime, the discrete generative model can be used to generate a discrete variable from an input prompt, and can provide the discrete variable to the continuous generative model for the continuous generative model to generate an output, such an image, conditioned on the discrete variable.

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