计算机科学
自相关
采样(信号处理)
卡尔曼滤波器
多元统计
数据挖掘
推论
自适应采样
状态空间
算法
自适应滤波器
滤波器(信号处理)
国家(计算机科学)
人工智能
数学
可见的
序贯估计
模式识别(心理学)
在线算法
干扰参数
上下界
统计
功率(物理)
自适应算法
区间(图论)
状态空间表示
时间序列
统计能力
置信区间
作者
Haijie Xu,Xiaochen Xian,B M Zhang,Chen Zhang,Kaibo Liu
摘要
ABSTRACT Sequential change‐point detection for multivariate autocorrelated data is a widely encountered challenge in real‐world applications. When sensing resources are limited, only a subset of variables from the multivariate system can be observed at each time point, giving rise to the problem of partially observable multi‐sensor sequential change‐point detection. To address this, we propose a novel detection framework called Adaptive Upper Confidence Region with State Space Model (AUCRSS). This approach models multivariate autocorrelated data using a state space model (SSM) and incorporates an adaptive sampling policy to enable efficient change‐point detection and localization. A partially observable Kalman filter is developed for online inference of the system state, and based on this, a change‐point detection procedure is constructed using a generalized likelihood ratio test. We analyze the relationship between detection power and the adaptive sampling strategy. Furthermore, by interpreting detection power as a reward signal, we establish a connection with the online combinatorial multi‐armed bandit (CMAB) problem and introduce an adaptive upper confidence region algorithm to guide the sampling policy design. We provide a theoretical analysis of the asymptotic detection power, and we demonstrate that our proposed method significantly outperforms the baseline algorithms through extensive numerical experiments on both synthetic and real‐world datasets.
科研通智能强力驱动
Strongly Powered by AbleSci AI