引入基本初等扰动评价机器学习模型的新方法

S.Jayachitra, Sushma Jaiswal
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引用次数: 0

摘要

这项研究着眼于计算机训练模型的测试。现有研究方法的问题在于,测试大多是针对具体病例的,需要大量的额外工作。采用一种新的方法对输入数据引入基本初等干扰。该方法通常用于处理多种类型的数据和机器学习模型。简单的干扰可以用来预测学习模型对未暴露的干扰的处理。一个全面的测试方法可以帮助作为一个明确的预测模型对无形障碍的容忍度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel approach for introducing basic elementary disturbances for evaluating machine learning models
This study looks at the testing of models for computer training. The issue with the existing research methods is that testing is mostly case-specific and requires considerable extra work. A new approach is used to introduce basic elementary interference to the input data. The approach is commonly used to work with many types of data and machine learning models. Simple disruptions can be used to forecast the handling of unexposed disturbances by a learning model. An overall test method can be helpful as a clear predictor of the tolerance of the model to intangible disorders.
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