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Multiple Change Point Analysis: Fast Implementation and Strong Consistency

Publication ,  Journal Article
Ding, J; Xiang, Y; Shen, L; Tarokh, V
Published in: IEEE Transactions on Signal Processing
September 1, 2017

One of the main challenges in identifying structural changes in stochastic processes is to carry out analysis for time series with dependency structure in a computationally tractable way. Another challenge is that the number of true change points is usually unknown, requiring a suitable model selection criterion to arrive at informative conclusions. To address the first challenge, we model the data generating process as a segment-wise autoregression, which is composed of several segments (time epochs), each of which modeled by an autoregressive model. We propose a multiwindow method that is both effective and efficient for discovering the structural changes. The proposed approach was motivated by transforming a segment-wise autoregression into a multivariate time series that is asymptotically segment-wise independent and identically distributed. To address the second challenge, we derive theoretical guarantees for (almost surely) selecting the true number of change points of segment-wise independent multivariate time series. Specifically, under mild assumptions, we show that a Bayesian information criterion like criterion gives a strongly consistent selection of the optimal number of change points, while an Akaike information criterion like criterion cannot. Finally, we demonstrate the theory and strength of the proposed algorithms by experiments on both synthetic- and real-world data, including the Eastern U.S. temperature data and the El Nino data. The experiment leads to some interesting discoveries about temporal variability of the summer-time temperature over the Eastern U.S., and about the most dominant factor of ocean influence on climate, which were also discovered by environmental scientists.

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Published In

IEEE Transactions on Signal Processing

DOI

ISSN

1053-587X

Publication Date

September 1, 2017

Volume

65

Issue

17

Start / End Page

4495 / 4510

Related Subject Headings

  • Networking & Telecommunications
 

Citation

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Ding, J., Xiang, Y., Shen, L., & Tarokh, V. (2017). Multiple Change Point Analysis: Fast Implementation and Strong Consistency. IEEE Transactions on Signal Processing, 65(17), 4495–4510. https://doi.org/10.1109/TSP.2017.2711558
Ding, J., Y. Xiang, L. Shen, and V. Tarokh. “Multiple Change Point Analysis: Fast Implementation and Strong Consistency.” IEEE Transactions on Signal Processing 65, no. 17 (September 1, 2017): 4495–4510. https://doi.org/10.1109/TSP.2017.2711558.
Ding J, Xiang Y, Shen L, Tarokh V. Multiple Change Point Analysis: Fast Implementation and Strong Consistency. IEEE Transactions on Signal Processing. 2017 Sep 1;65(17):4495–510.
Ding, J., et al. “Multiple Change Point Analysis: Fast Implementation and Strong Consistency.” IEEE Transactions on Signal Processing, vol. 65, no. 17, Sept. 2017, pp. 4495–510. Scopus, doi:10.1109/TSP.2017.2711558.
Ding J, Xiang Y, Shen L, Tarokh V. Multiple Change Point Analysis: Fast Implementation and Strong Consistency. IEEE Transactions on Signal Processing. 2017 Sep 1;65(17):4495–4510.

Published In

IEEE Transactions on Signal Processing

DOI

ISSN

1053-587X

Publication Date

September 1, 2017

Volume

65

Issue

17

Start / End Page

4495 / 4510

Related Subject Headings

  • Networking & Telecommunications