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Determining a number of kernels using imbalanced training data sets

机译:使用不平衡训练数据集确定多个内核

摘要

Determining a number of kernels within a model is provided. A number of kernels that include data samples of a majority data class of an imbalanced training data set is determined based on a set of generated artificial data samples for a minority data class of the imbalanced training data set. The number of kernels within the model is generated based on the set of generated artificial data samples. A likelihood of the set of generated artificial data samples being included in the majority data class of the imbalanced training data set is calculated. Parameters of each kernel in the number of kernels are updated based on the likelihood of the set of generated artificial data samples being included in the majority data class of the imbalanced training data set. Each kernel in the number of kernels is adjusted based on the updated parameters.
机译:提供确定模型内的多个内核。基于针对不平衡训练数据集的少数数据类别的一组生成的人工数据样本,确定包括不平衡训练数据集的多数数据类别的数据样本的多个内核。基于所生成的人工数据样本集来生成模型中的内核数。计算所生成的人工数据样本的集合被包括在不平衡训练数据集的多数数据类别中的可能性。基于所生成的人工数据样本的集合被包括在不平衡训练数据集的多数数据类中的可能性,来更新内核数目中的每个内核的参数。内核数中的每个内核都根据更新的参数进行调整。

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