2023
DOI: 10.48550/arxiv.2302.02336
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Using Intermediate Forward Iterates for Intermediate Generator Optimization

Abstract: Score-based models have recently been introduced as a richer framework to model distributions in high dimensions and are generally more suitable for generative tasks. In score-based models, a generative task is formulated using a parametric model (such as a neural network) to directly learn the gradient of such high dimensional distributions, instead of the density functions themselves, as is done traditionally. From the mathematical point of view, such gradient information can be utilized in reverse by stocha… Show more

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