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Optimizing optimization: accurate detection of hidden interactions in active body systems from noisy data

机译:优化优化:精确地检测来自嘈杂数据的活动体系中的隐藏交互

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摘要

Given deficient and noisy movement data from a pedestrian crowda class of active body systems, is it possible to uncover the hidden group interaction patterns or connections? Yes, it is possible. Here, we develop a general framework based on an optimal combination of the conventional compressive sensing (L1 minimization) and L2 optimization procedure to achieve optimal detection of the contact network embedded in pedestrian crowd under the data shortage conditions. Different from previous publications, in our framework, the optimal weights of the L1 and L2 components in the combination can be determined specifically from the noisy data, which can obtain more accurate detection for the corresponding system. To detect hidden interaction patterns from spatiotemporal data has broader applications, and our optimized compressive sensing-based framework provides a practically viable solution. In addition, we provide a relative entropy perspective to facilitate more general theoretical and technological extensions of the framework.
机译:给定来自行人人群阶级的活性机身系统的缺陷和嘈杂的运动数据,是否有可能揭示隐藏的组交互模式或连接?对的,这是可能的。在这里,我们基于传统压缩感测(L1最小化)和L2优化过程的最佳组合来开发一般框架,以实现数据短缺条件下嵌​​入行人人群中的接触网络的最佳检测。与以前的出版物不同,在我们的框架中,可以具体地从嘈杂的数据确定组合中的L1和L2分量的最佳权重,这可以获得对相应系统的更准确的检测。为了检测来自时空数据的隐藏交互模式具有更广泛的应用,我们优化的基于压缩感应的框架提供了一种实际上可行的解决方案。此外,我们提供了一个相对熵的视角,以促进框架的更一般的理论和技术延伸。

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