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Contrastive Neural Network Training in an Active Learning Environment

机译:积极学习环境中的对比神经网络培训

摘要

Embodiments relate to a system, program product, and method for training a contrastive neural network (CNN) in an active learning environment. A neural network is pre-trained with labeled data of a historical dataset. The CNN is trained for the new dataset by applying the new dataset and contrasting the new dataset against the historical dataset to extract novel patterns. Features novel to the new dataset are learned, including updating weights of the knowledge operator. The borrowed knowledge operator weights are combined with the updated knowledge operator weights. The CNN is leveraged to predict one or more labels for the new dataset as output data.
机译:实施例涉及一种系统,程序产品和用于在活动学习环境中训练对比神经网络(CNN)的方法。 通过标记数据集的历史数据集进行预先培训。 通过应用新数据集并将新数据集对比历史数据集进行对比以提取新颖模式来接受新数据集的培训。 学习新数据集的功能小说,包括更新知识运算符的权重。 借用的知识操作员权重与更新的知识操作员权重相结合。 利用CNN来预测新数据集的一个或多个标签作为输出数据。

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