Change-point detection in panel data via double CUSUM statistic
About
In this paper, we consider the problem of (multiple) change-point detection in panel data. We propose the double CUSUM statistic which utilises the cross-sectional change-point structure by examining the cumulative sums of ordered CUSUMs at each point. The efficiency of the proposed change-point test is studied, which is reflected on the rate at which the cross-sectional size of a change is permitted to converge to zero while it is still detectable. Also, the consistency of the proposed change-point detection procedure based on the binary segmentation algorithm, is established in terms of both the total number and locations (in time) of the estimated change-points. Motivated by the representation properties of the Generalised Dynamic Factor Model, we propose a bootstrap procedure for test criterion selection, which accounts for both cross-sectional and within-series correlations in high-dimensional data. The empirical performance of the double CUSUM statistics, equipped with the proposed bootstrap scheme, is investigated in a comparative simulation study with the state-of-the-art. As an application, we analyse the log returns of S&P 100 component stock prices over a period of one year.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Change point localization | Scenario 2 | Proportion K̂ ≠ K5.5 | 20 | |
| Change point localization | Scenario 4 | Failure Proportion15 | 20 | |
| Change point localization | Scenario 3 | Error Proportion (K_hat != K)97 | 20 | |
| Change point localization | Scenario 5 | Mismatch Proportion (K!=K)0.96 | 20 | |
| Change point localization | Scenario 1 T=300 | Prop. K_hat != K11.5 | 10 | |
| Change point localization | Scenario 1 T=150 | Error Proportion12 | 10 |