首页> 外国专利> SYSTEMS AND METHODS FOR DETERMINING MACHINE LEARNING TRAINING APPROACHES BASED ON IDENTIFIED IMPACTS OF ONE OR MORE TYPES OF CONCEPT DRIFT

SYSTEMS AND METHODS FOR DETERMINING MACHINE LEARNING TRAINING APPROACHES BASED ON IDENTIFIED IMPACTS OF ONE OR MORE TYPES OF CONCEPT DRIFT

机译:基于一种或多种类型的概念漂移的确定影响确定机器学习培训方法的系统和方法

摘要

A system and method for accounting for the impact of concept drift in selecting machine learning training methods to address the identified impact. Pattern recognition is performed on performance metrics of a deployed production model in an Internet-of-Things (IoT) environment to determine the impact that concept drift (data drift) has had on prediction performance. This concurrent analysis is utilized to select one or more approaches for training machine learning models, thereby accounting for the temporal dynamics of concept drift (and its subsequent impact on prediction performance) in a faster and more efficient manner.
机译:一种在选择机器学习训练方法以解决已识别影响时考虑概念漂移影响的系统和方法。模式识别是在物联网(IoT)环境中对已部署生产模型的性能指标进行的,以确定概念漂移(数据漂移)对预测性能的影响。这种并行分析用于选择一种或多种训练机器学习模型的方法,从而以更快,更有效的方式考虑概念漂移的时间动态(及其对预测性能的后续影响)。

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