FORWARD COMPATIBLE MODEL TRAINING

    公开(公告)号:US20220343212A1

    公开(公告)日:2022-10-27

    申请号:US17389237

    申请日:2021-07-29

    Abstract: Forward compatible models are obtained by operations including training a learning function with a current training data set to produce a first model, the current training data set including a plurality of samples, generating a plurality of prospective models, each prospective model based on a variation of one of the current training data set or the first model, adjusting a plurality of sample weights based on output of one or more prospective models among the plurality of prospective models in response to input of the current training data set, and retraining the learning function with the current training data set and the plurality of sample weights to produce a second model.

    DISTRIBUTIONALLY ROBUST MODEL TRAINING

    公开(公告)号:US20220292345A1

    公开(公告)日:2022-09-15

    申请号:US17392261

    申请日:2021-08-03

    Abstract: Distributionally robust models are obtained by operations including training, according to a loss function, a first learning function with a training data set to produce a first model, the training data set including a plurality of samples. The operations may further include training a second learning function with the training data set to produce a second model, the second model having a higher accuracy than the first model. The operations may further include assigning an adversarial weight to each sample among the plurality of samples set based on a difference in loss between the first model and the second model. The operations may further include retraining, according to the loss function, the first learning function with the training data set to produce a distrtibutionally robust model, wherein during retraining the loss function further modifies loss associated with each sample among the plurality of samples based on the assigned adversarial weight.

    PREDICTIVELY ROBUST MODEL TRAINING
    3.
    发明公开

    公开(公告)号:US20240028912A1

    公开(公告)日:2024-01-25

    申请号:US17863338

    申请日:2022-07-12

    CPC classification number: G06N5/022

    Abstract: Predictively robust models are trained by embedding a distribution of each temporal data set among a plurality of temporal data sets into a feature vector, predicting a future feature vector of a distribution of a future data set, based on the feature vector of each temporal data set among a plurality of temporal data sets, creating the future data set from the future feature vector, perturbing the future data set to produce a plurality of perturbed future data sets, and training a learning function using the future data set and each perturbed future data set to produce a model.

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