This paper introduces a novel nonparametric relative entropy (RlEn) method for detecting changes in complexity within intermittent time series data, demonstrating its superior performance over existing methods like ApEn through simulations and a real-world application in analyzing human motor output complexity during fatigue.
This paper proposes an efficient and exact method for detecting multiple change-points in point processes, particularly inhomogeneous Poisson and marked Poisson processes, using a minimum contrast estimator, dynamic programming, and a novel cross-validation procedure.
This paper introduces QF-CUSUM, a novel statistical test designed to detect change-points in high-dimensional linear models with temporally dependent data, demonstrating its optimality, robustness, and practical utility through theoretical analysis and simulations.
This paper introduces the max-EM algorithm, a novel method for detecting breakpoints (change-points) in ordered data within a regression modeling framework, demonstrating its effectiveness through simulations and real-world applications.
This research paper introduces a novel method called Group Fused D-trace LASSO (GFDtL) for detecting structural breaks in time-varying networks by estimating the sparse precision matrix, which is assumed to change in a piece-wise constant manner.