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Mindful Active Learning

机译:谨严的主动学习

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摘要

We propose a novel active learning framework for activity recognition using wearable sensors. Our work is unique in that it takes physical and cognitive limitations of the oracle into account when selecting sensor data to be annotated by the oracle. Our approach is inspired by human-beings' limited capacity to respond to external stimulus such as responding to a prompt on their mobile devices. This capacity constraint is manifested not only in the number of queries that a person can respond to in a given time-frame but also in the lag between the time that a query is made and when it is responded to. We introduce the notion of mindful active learning and propose a computational framework, called EMMA~1, to maximize the active learning performance taking informativeness of sensor data, query budget, and human memory into account. We formulate this optimization problem, propose an approach to model memory retention, discuss complexity of the problem, and propose a greedy heuristic to solve the problem. We demonstrate the effectiveness of our approach on three publicly available datasets and by simulating oracles with various memory strengths. We show that the activity recognition accuracy ranges from 21% to 97% depending on memory strength, query budget, and difficulty of the machine learning task. Our results also indicate that EMMA achieves an accuracy level that is, on average, 13.5% higher than the case when only informativeness of the sensor data is considered for active learning. Additionally, we show that the performance of our approach is at most 20% less than experimental upper-bound and up to 80% higher than experimental lower-bound. We observe that mindful active learning is most beneficial when query budget is small and/or oracle's memory is weak, thus emphasizing contributions of our work in human-centered mobile health settings and for elderly with cognitive impairments.
机译:我们建议使用穿戴式传感器动作识别一种新颖的主动学习框架。我们的工作是,它选择传感器数据由Oracle进行标注时需要在Oracle的身体和认知局限兼顾独特。我们的方法是由人的生命能力有限到外部刺激响应激励如响应一个提示在他们的移动设备。这种能力约束不仅是一个人可以在给定的时限作出回应查询的数量,而且在中,做出询问,当它被响应的时间之间的滞后表现。我们介绍注意到主动学习的概念,并提出了一个计算框架,称为EMMA〜1,传感器数据,查询预算和人类记忆的主动学习的性能回吐信息量最大化考虑。我们制定这个优化问题,提出了一种方法来模型记忆保留,讨论问题的复杂性,并提出一个贪婪的启发式算法来解决这个问题。我们证明在三个公开可用的数据集,并通过模拟各种内存的优势预言我们的方法的有效性。我们发现,根据存储的实力,查询预算,机器学习任务的难度活动识别精度范围为21%〜97%。我们的结果还表明,EMMA达到的精度级别,是平均比的情况下更高的13.5%时仅传感器数据的信息量被认为是主动学习。此外,我们表明,我们的方法的性能最多比实验少20%的上限和高达80%,比实验下界高。我们观察到,注意到主动学习是最有利的,当查询的预算是小的和/或Oracle的内存薄弱,从而强调我们对以人为本的移动卫生机构工作的贡献和老年认知障碍。

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