Consistent and powerful non-Euclidean graph-based change-point test with applications to segmenting random interfered video data

Proc Natl Acad Sci U S A. 2018 Jun 5;115(23):5914-5919. doi: 10.1073/pnas.1804649115. Epub 2018 May 21.

Abstract

The change-point detection has been carried out in terms of the Euclidean minimum spanning tree (MST) and shortest Hamiltonian path (SHP), with successful applications in the determination of authorship of a classic novel, the detection of change in a network over time, the detection of cell divisions, etc. However, these Euclidean graph-based tests may fail if a dataset contains random interferences. To solve this problem, we present a powerful non-Euclidean SHP-based test, which is consistent and distribution-free. The simulation shows that the test is more powerful than both Euclidean MST- and SHP-based tests and the non-Euclidean MST-based test. Its applicability in detecting both landing and departure times in video data of bees' flower visits is illustrated.

Keywords: change-point; distribution-free; minimum spanning tree; non-Euclidean distance; shortest Hamilton path.

Publication types

  • Research Support, Non-U.S. Gov't