论文标题
一种信息理论方法,用于推断有限长度轨迹中元素之间的基本交互域
An information-theoretic approach to infer the underlying interaction domain among elements from finite length trajectories in a noisy environment
论文作者
论文摘要
最近证明了信息理论中的转移熵[物理学。 Rev. E 102,012404(2020)]使我们能够仅从轨迹集合中阐明相互作用元件之间的相互作用域。在那里,仅在转移熵的计算中考虑了一对距离比某个距离变量(称为截止距离)短的元素。捕获基本交互域的预测性能受到元素和相互作用事件统计量的噪声水平的影响。在本文中,通过使用修改的Vicsek模型,系统地对预测性能的依赖性对噪声水平和轨迹长度进行了审查。噪声水平越大,轨迹的时间长度越短,平均传递熵波动的衍生物就越多,这使得很难根据平均转移熵的衍生物的全局最小值位置来识别相互作用域。提出了一种量化在粗粒水平下强凸的度量的度量。结果表明,即使平均传递熵的衍生物的整体最小值位置却没有,凸得分方案也可以很好地识别相互作用距离。我们还得出了一个分析模型,以解释相互作用域与转移熵的变化之间的关系,该模型支持我们的截止距离技术,以阐明轨迹的基本相互作用域。
Transfer entropy in information theory was recently demonstrated [Phys. Rev. E 102, 012404 (2020)] to enable us to elucidate the interaction domain among interacting elements solely from an ensemble of trajectories. There, only pairs of elements whose distances are shorter than some distance variable, termed cutoff distance, are taken into account in the computation of transfer entropies. The prediction performance in capturing the underlying interaction domain is subject to noise level exerted on the elements and the sufficiency of statistics of the interaction events. In this paper, the dependence of the prediction performance is scrutinized systematically on noise level and the length of trajectories by using a modified Vicsek model. The larger the noise level and the shorter the time length of trajectories, the more the derivative of average transfer entropy fluctuates, which makes it difficult to identify the interaction domain in terms of the position of global minimum of the derivative of average transfer entropy. A measure to quantify the degree of strong convexity at coarse-grained level is proposed. It is shown that the convexity score scheme can identify the interaction distance fairly well even while the position of global minimum of the derivative of average transfer entropy does not. We also derive an analytical model to explain the relationship between the interaction domain and the change of transfer entropy that supports our cutoff distance technique to elucidate the underlying interaction domain from trajectories.