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Method of controlling for undesired factors in machine learning models

机译:机器学习模型中不良因素的控制方法

摘要

A method of training and using a machine learning model that controls for consideration of undesired factors which might otherwise be considered by the trained model during its subsequent analyses of new data. For example, the model may be a neural network trained on a set of training images to evaluate an insurance applicant based upon an image or audio data of the insurance applicant as part of an underwriting process to determine an appropriate life or health insurance premium. The model is trained to probabilistically correlate an aspect of the applicant's appearance with a personal and/or health-related characteristic. Any undesired factors, such as age, sex, ethnicity, and/or race, are identified for exclusion. The trained model receives the image (e.g., a “selfie”) of the insurance applicant, analyzes the image without considering the identified undesired factors, and suggests the appropriate insurance premium based only on the remaining desired factors.
机译:一种训练和使用机器学习模型的方法,该方法控制考虑到不需要的因素,否则这些因素可能会在训练后的模型对新数据进行后续分析时被考虑。例如,模型可以是在一组训练图像上训练的神经网络,以根据保险申请人的图像或音频数据评估保险申请人,作为承保过程的一部分,以确定适当的人寿或健康保险费。训练模型以概率地将申请人外观的一个方面与个人和/或健康相关的特征相关联。识别出任何不期望的因素,例如年龄,性别,种族和/或种族。训练后的模型接收保险申请人的图像(例如,“自拍照”),在不考虑所识别的不期望因素的情况下分析图像,并且仅基于剩余的期望因素来建议适当的保险费。

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