Towards Unbiased and Accurate Deferral to Multiple Experts

Vijay Keswani, Matthew Lease, K. Kenthapadi
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引用次数: 36

Abstract

Machine learning models are often implemented in cohort with humans in the pipeline, with the model having an option to defer to a domain expert in cases where it has low confidence in its inference. Our goal is to design mechanisms for ensuring accuracy and fairness in such prediction systems that combine machine learning model inferences and domain expert predictions. Prior work on "deferral systems" in classification settings has focused on the setting of a pipeline with a single expert and aimed to accommodate the inaccuracies and biases of this expert to simultaneously learn an inference model and a deferral system. Our work extends this framework to settings where multiple experts are available, with each expert having their own domain of expertise and biases. We propose a framework that simultaneously learns a classifier and a deferral system, with the deferral system choosing to defer to one or more human experts in cases of input where the classifier has low confidence. We test our framework on a synthetic dataset and a content moderation dataset with biased synthetic experts, and show that it significantly improves the accuracy and fairness of the final predictions, compared to the baselines. We also collect crowdsourced labels for the content moderation task to construct a real-world dataset for the evaluation of hybrid machine-human frameworks and show that our proposed framework outperforms baselines on this real-world dataset as well.
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机器学习模型通常是在流水线中与人类一起实现的,在对其推理缺乏信心的情况下,模型可以选择服从领域专家。我们的目标是设计一种机制,以确保这种结合机器学习模型推断和领域专家预测的预测系统的准确性和公平性。先前关于分类设置中的“延迟系统”的工作主要集中在单个专家的管道设置上,旨在适应该专家的不准确性和偏差,以同时学习推理模型和延迟系统。我们的工作将这一框架扩展到多个专家可用的环境中,每个专家都有自己的专业领域和偏见。我们提出了一个同时学习分类器和延迟系统的框架,在分类器置信度低的情况下,延迟系统选择服从一个或多个人类专家的输入。我们在一个合成数据集和一个有偏见的合成专家的内容审核数据集上测试了我们的框架,并表明与基线相比,它显着提高了最终预测的准确性和公平性。我们还为内容审核任务收集众包标签,以构建一个用于评估混合机器-人框架的真实数据集,并表明我们提出的框架在这个真实数据集上也优于基线。
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