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Obesity risk factors ranking using multi-task learning

机译:肥胖风险因素使用多任务学习排名

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Obesity is one of the leading preventable causes of death in the United States (U.S.). Risk factor analysis is a process to identify and understand the risk factors contributing to a particular disease, and is an imperative component in the development of efficient and effective prevention and intervention efforts. Most existing methods usually aim to build a one-size-fits-all model to identify the risk factors at the population-level. However, this type of methods does not take into consideration of heterogeneity in the population. To overcome this limitation, we formulate the subpopulation specific obesity risk factors ranking problem, under the framework of multi-task learning (MTL), to identify a ranked list of obesity risk factors for each subpopulation (task) simultaneously with utilizing appropriate shared information across tasks. By synchronously learning multiple related tasks, MTL provides a paradigm to rank risk factors both at the subpopulation and population-levels.
机译:肥胖是美国(美国)的领先可预防的死因之一。危险因素分析是识别和理解有助于特定疾病的风险因素的过程,并且是发展有效和有效的预防和干预措施的必要条件。大多数现有方法通常旨在建立一个尺寸适合的模型,以确定人口级的风险因素。然而,这种类型的方法没有考虑到人口中的异质性。为了克服这一限制,我们在多任务学习(MTL)的框架下,制定亚群特异性肥胖风险因素排名问题,以确定每个子迁移(任务)的排名抑郁危险因素列表,同时使用适当的共享信息任务。通过同步学习多个相关任务,MTL提供了在亚贫困和人口水平上排名风险因素的范例。

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