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Predicting the behavior of interacting humans by fusing data from multiple sources

机译:通过融合来自多个来源的数据来预测与人类互动的行为

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Multi-fidelity methods combine inexpensive low-fidelity simulations with costly but high-fidelity simulations to produce an accurate model of a system of interest at minimal cost. They have proven useful in modeling physical systems and have been applied to engineering problems such as wing-design optimization. During human-iu-the-loop experimentation, it has become increasingly common to use online platforms, like Mechanical Turk, to run low-fidelity experiments to gather human performance data in an efficient manner. One concern with these experiments is that the results obtained from the online environment generalize poorly to the actual domain of interest. To address this limitation, we extend traditional multi-fidelity approaches to allow us to combine fewer data points from high-fidelity human-in-the-loop experiments with plentiful but less accurate data from low-fidelity experiments to produce accurate models of how humans interact. We present both model-based and model-free methods, and summarize the predictive performance of each method under different conditions.
机译:多保真度方法将廉价的低保真度模拟与昂贵但高保真度的模拟相结合,以最小的成本生成了目标系统的精确模型。事实证明,它们在对物理系统进行建模中很有用,并已应用于诸如机翼设计优化之类的工程问题。在人工环实验中,使用诸如Mechanical Turk之类的在线平台进行低保真实验以有效地收集人类性能数据已变得越来越普遍。这些实验的一个关注点是,从在线环境获得的结果不能很好地推广到实际的关注领域。为了解决这一局限性,我们扩展了传统的多保真度方法,使我们可以将来自高保真度的在环实验的较少数据点与来自低保真度的实验的大量但准确性较差的数据相结合,以生成关于人类行为的准确模型相互作用。我们介绍了基于模型的方法和没有模型的方法,并总结了每种方法在不同条件下的预测性能。

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