Population-aware hierarchical bayesian domain adaptation via multi-component invariant learning

V. Mhasawade, N. Rehman, R. Chunara
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引用次数: 9

Abstract

While machine learning is rapidly being developed and deployed in health settings such as influenza prediction, there are critical challenges in using data from one environment to predict in another due to variability in features. Even within disease labels there can be differences (e.g. "fever" may mean something different reported in a doctor's office versus in an online app). Moreover, models are often built on passive, observational data which contain different distributions of population subgroups (e.g. men or women). Thus, there are two forms of instability between environments in this observational transport problem. We first harness substantive knowledge from health research to conceptualize the underlying causal structure of this problem in a health outcome prediction task. Based on sources of stability in the model and the task, we posit that we can combine environment and population information in a novel population-aware hierarchical Bayesian domain adaptation framework that harnesses multiple invariant components through population attributes when needed. We study the conditions under which invariant learning fails, leading to reliance on the environment-specific attributes. Experimental results for an influenza prediction task on four datasets gathered from different contexts show the model can improve prediction in the case of largely unlabelled target data from a new environment and different constituent population, by harnessing both environment and population invariant information. This work represents a novel, principled way to address a critical challenge by blending domain (health) knowledge and algorithmic innovation. The proposed approach will have significant impact in many social settings wherein who the data comes from and how it was generated, matters.
基于多分量不变学习的种群感知层次贝叶斯域自适应
虽然机器学习正在迅速发展并应用于流感预测等卫生环境,但由于特征的可变性,在使用一种环境中的数据来预测另一种环境中存在重大挑战。即使在疾病标签内也可能存在差异(例如:“发烧”在医生办公室和在线应用中可能有不同的含义)。此外,模型往往建立在被动的观测数据上,这些数据包含人口亚组(例如男性或女性)的不同分布。因此,在观测输运问题中,存在两种不同环境之间的不稳定性。我们首先利用来自健康研究的实质性知识,在健康结果预测任务中概念化这个问题的潜在因果结构。基于模型和任务的稳定性来源,我们假设我们可以将环境和种群信息结合在一个新的种群感知层次贝叶斯域自适应框架中,该框架在需要时通过种群属性利用多个不变成分。我们研究了不变量学习失败的条件,导致依赖于特定环境的属性。对从不同环境中收集的四个数据集进行流感预测任务的实验结果表明,该模型可以通过利用环境和群体不变量信息来提高对来自新环境和不同组成群体的大量未标记目标数据的预测。这项工作代表了一种新颖的、原则性的方法,通过融合领域(健康)知识和算法创新来解决关键挑战。所提议的方法将在许多社会环境中产生重大影响,其中数据来自谁以及如何生成非常重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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