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LEARNING TO GENERATE SYNTHETIC DATASETS FOR TRAINING NEURAL NETWORKS

机译:学习生成用于训练神经网络的综合数据集

摘要

In various examples, a generative model is used to synthesize datasets for use in training a downstream machine learning model to perform an associated task. The synthesized datasets may be generated by sampling a scene graph from a scene grammar – such as a probabilistic grammar – and applying the scene graph to the generative model to compute updated scene graphs more representative of object attribute distributions of real-world datasets. The downstream machine learning model may be validated against a real-world validation dataset, and the performance of the model on the real-world validation dataset may be used as an additional factor in further training or fine-tuning the generative model for generating the synthesized datasets specific to the task of the downstream machine learning model.
机译:在各种示例中,生成模型用于合成数据集,以用于训练下游机器学习模型以执行关联的任务。可以通过从场景语法(例如概率语法)中采样场景图,然后将场景图应用于生成模型来计算更新的场景图,以更代表真实数据集的对象属性分布,来生成合成的数据集。可以针对现实世界验证数据集验证下游机器学习模型,并且可以将模型在现实世界验证数据集上的性能用作进一步训练或微调生成模型以生成合成模型的附加因素。特定于下游机器学习模型任务的数据集。

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