论文标题

偏见减少对心理健康预测的多任务学习

Bias Reducing Multitask Learning on Mental Health Prediction

论文作者

Zanna, Khadija, Sridhar, Kusha, Yu, Han, Sano, Akane

论文摘要

近年来,由于社会心理健康问题的增加,近年来开发机器学习模型的研究有所增加。有效利用心理健康预测或检测模型可以帮助精神卫生从业人员更具客观地重新定义精神疾病,并在干预措施更有效的早期阶段确定疾病。但是,在评估该领域的机器学习模型中,仍然缺乏标准,这导致了提供可靠的预测和解决差异的挑战。由于技术困难,高维临床健康数据的复杂性等因素,因此缺乏标准,这对于生理信号尤其如此。这与某些生理信号与某些人口认同之间的关系的先前证据加入了探索利用生理信号的心理健康预测模型中偏见的重要性。在这项工作中,我们旨在对使用ECG数据对焦虑预测模型进行公平分析并实施基于多任务学习的偏见缓解方法。我们的方法基于认知不确定性及其与模型权重和特征空间表示的关系。我们的分析表明,我们的焦虑预测基础模型在年龄,收入,种族以及参与者是否出生于美国的情况下引入了一些偏见,与重新加权缓解技术相比,我们的偏见缓解方法在减少模型中的偏见方面表现更好。我们对特征重要性的分析还有助于确定心率变异性与多个人口统计组之间的关系。

There has been an increase in research in developing machine learning models for mental health detection or prediction in recent years due to increased mental health issues in society. Effective use of mental health prediction or detection models can help mental health practitioners re-define mental illnesses more objectively than currently done, and identify illnesses at an earlier stage when interventions may be more effective. However, there is still a lack of standard in evaluating bias in such machine learning models in the field, which leads to challenges in providing reliable predictions and in addressing disparities. This lack of standards persists due to factors such as technical difficulties, complexities of high dimensional clinical health data, etc., which are especially true for physiological signals. This along with prior evidence of relations between some physiological signals with certain demographic identities restates the importance of exploring bias in mental health prediction models that utilize physiological signals. In this work, we aim to perform a fairness analysis and implement a multi-task learning based bias mitigation method on anxiety prediction models using ECG data. Our method is based on the idea of epistemic uncertainty and its relationship with model weights and feature space representation. Our analysis showed that our anxiety prediction base model introduced some bias with regards to age, income, ethnicity, and whether a participant is born in the U.S. or not, and our bias mitigation method performed better at reducing the bias in the model, when compared to the reweighting mitigation technique. Our analysis on feature importance also helped identify relationships between heart rate variability and multiple demographic groupings.

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