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SELECTING FORECASTING MODELS BY MACHINE LEARNING BASED ON ANALYSIS OF MODEL ROBUSTNESS

机译:基于模型鲁棒性分析的机器学习选择预测模型

摘要

A computer-implemented method, a computer program product, and a computer system for selecting predictions by models. A computer receives a request for a forecast of a dependent variable in a time domain, where the time domain includes first time periods that have normal labels due to normal predictor variable data and second time periods that have anomalous labels due to anomalous predictor variable data. The computer retrieves accuracy scores and robustness scores of models, where the accuracy scores indicate forecasting accuracy in the first time periods and the robustness scores indicate forecasting accuracy in the second time periods. For predictions in the first time period, the computer selects dependent variable values predicted by a first model that has highest values of the accuracy scores. For predictions in the second time periods, the computer selects dependent variable values predicted by a second model that has highest values of the robustness scores.
机译:一种计算机实现的方法,计算机程序产品和用于通过模型选择预测的计算机系统。 计算机在时域中接收对所属变量的预测的请求,其中时域包括由于正常预测器变量数据和由于异常预测器可变数据而具有异常标签的第二时间段具有正常标签的第一时间段。 计算机检索精度分数和稳健性的模型,其中精度分数表示在第一时间段中的预测精度,鲁棒性分数表示在第二次时期预测准确性。 对于在第一时间段内的预测,计算机选择由具有最高值的精度分数的第一模型预测的相关变量值。 对于在第二时间段中的预测,计算机选择由具有最高价值的鲁棒性分数的第二模型预测的相关变量值。

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