We present a new CUSUM procedure for sequentially detecting change-point in the self and mutual exciting processes, a.k.a. Hawkes networks using discrete events data. Hawkes networks have become a popular model for statistics and machine learning due to their capability in modeling irregularly observed data where the timing between events carries a lot of information. The problem of detecting abrupt changes in Hawkes networks arises from various applications, including neuronal imaging, sensor network, and social network monitoring. Despite this, there has not been a computationally and memory-efficient online algorithm for detecting such changes from sequential data. We present an efficient online recursive implementation of the CUSUM statistic for Hawkes processes, both decentralized and memory-efficient, and establish the theoretical properties of this new CUSUM procedure. We then show that the proposed CUSUM method achieves better performance than existing methods, including the Shewhart procedure based on count data, the generalized likelihood ratio (GLR) in the existing literature, and the standard score statistic. We demonstrate this via a simulated example and an application to population code change-detection in neuronal networks.
翻译:我们提出了一个新的CUUUM程序,用于在自我和相互刺激的进程中按顺序检测变化点,a.k.a.a.hawks网络,使用离散事件数据。Hawks网络已经成为一个流行的统计和机器学习模式,因为它们有能力建模不定期观测的数据,其中事件之间的时间带有大量信息。探测霍克斯网络突变的问题来自各种应用,包括神经成像、感应网络和社会网络监测。尽管如此,还没有一种计算和记忆高效的在线算法,用于检测从连续数据中发现的此类变化。我们展示了CUSUM对霍克斯进程数据的有效在线递归执行,并建立了这一新CUSUM程序的理论属性。我们随后表明,拟议的CUUM方法比现有方法取得更好的性能,包括基于计数数据、现有文献中普遍可能性比率(GLR)和标准分数统计的Shewrt程序。我们通过模拟实例和神经网络中人口代码变化探测应用来证明这一点。