We propose a computationally and statistically efficient procedure for segmenting univariate data under piecewise linearity. The proposed moving sum (MOSUM) methodology detects multiple change points where the underlying signal undergoes discontinuous jumps and/or slope changes. Theoretically, it controls the family-wise error rate at a given significance level asymptotically and achieves consistency in multiple change point detection, as well as matching the minimax optimal rate of estimation when the signal is piecewise linear and continuous, all under weak assumptions permitting serial dependence and heavy-tailedness. Computationally, the complexity of the MOSUM procedure is $O(n)$ which, combined with its good performance on simulated datasets, making it highly attractive in comparison with the existing methods. We further demonstrate its good performance on a real data example on rolling element-bearing prognostics.
翻译:我们建议采用计算和统计效率高的程序,将单项数据按细线分割; 拟议的移动总和(MOSUM)方法在基本信号发生不连续跳跃和(或)斜坡变化的地方检测到多个变化点; 从理论上讲,它将家庭误差率控制在一定重要水平上,不时地控制,在多项变化点检测中实现一致性,并在信号为小线和连续时,在允许序列依赖和重尾的脆弱假设下,将最低最佳估计率匹配。 计算时,MOSUM程序的复杂性是O(n)美元,加上其在模拟数据集上的良好性能,使其与现有方法相比具有高度吸引力。 我们进一步展示其在包含滚动元素预证的真正数据实例上的良好性能。