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SYSTEMS AND METHODS FOR IMPROVING THE INTERPRETABILITY AND TRANSPARENCY OF MACHINE LEARNING MODELS

机译:改善机器学习模型的可互性和透明性的系统和方法

摘要

Embodiments herein provide for a machine learning algorithm that generates models that are more interpretable and transparent than existing machine learning approaches. These embodiments identify, at a record level, the effect of individual input variables on the machine learning model. To provide those improvements, a reason code generator assigns monotonic relationships to a series of input variables, which are then incorporated into the machine learning algorithm as metadata. In some embodiments, the reason code generator creates records based on the monotonic relationships, which are used by the machine learning algorithm to generate predicted values. The reason code generator compares an original predicted value from the machine learning model to the predicted values from the machine learning model.
机译:本文的实施例提供一种机器学习算法,该算法生成比现有机器学习方法更具解释性和透明度的模型。这些实施例在记录级别上识别各个输入变量对机器学习模型的影响。为了提供这些改进,原因码生成器将单调关系分配给一系列输入变量,然后将它们作为元数据合并到机器学习算法中。在一些实施例中,原因码生成器基于单调关系创建记录,机器学习算法将其用于生成预测值。原因码生成器将来自机器学习模型的原始预测值与来自机器学习模型的预测值进行比较。

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