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INCREMENTAL TIME WINDOW PROCEDURE FOR SELECTING TRAINING SAMPLES FOR A SUPERVISED LEARNING ALGORITHM

机译:用于选择监督学习算法的培训样本的增量时间窗口过程

摘要

Disclosed herein are system, method, and computer program product embodiments for generating labels for training a machine learning mode using an incremental time window process. The described process may be used in a recurrence detection system. A dataset may be analyzed using incremental split dates to divide the dataset into an analysis portion and a holdout portion. The analysis portion may be analyzed to determine input features related to a predicted recurrence in the dataset. The holdout portion may be tested against the analysis portion and the input features to generate a label. The label may indicate whether or not the holdout portion confirms the prediction. The testing of the holdout portion against the analysis portion may be repeated by incrementally using different split dates and multiple separate analysis portions and holdout portions to generate multiple labels and corresponding input features.
机译:这里公开了用于使用增量时间窗口处理生成用于训练机器学习模式的标签的系统,方法和计算机程序产品实施例。所描述的过程可以用于复发检测系统。可以使用增量分割日期分析数据集以将数据集分成分析部分和熔断部分。可以分析分析部分以确定与数据集中预测的复发相关的输入特征。可以针对分析部分和输入特征进行测试,以产生标签。标签可以指示阻滞部分是否确认预测。通过递增地使用不同的分离日期和多个单独的分析部分和熔断部分来重复对分析部分的阻止部分的测试,以产生多个标签和相应的输入特征。

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