Published on 01 January 2019

Dataset for: A Data-driven Approach to Detecting Change Points in Linear Regression Models

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Lyubchich, Vyacheslav;Lebedeva, Tatiana V.;Testa, Jeremy M.

Description

Change points appear in various types of environmental data---from univariate time series to multivariate data structures---and need to be accounted for in proper analysis and inference. The analysis of change points is challenging when no exact information about their number and locations is available, and statistical tests developed under such conditions often have low power identifying the change points. This paper provides a powerful, data-driven procedure for detecting at-most-$m$ change points in linear regression models by adapting a sieve bootstrap approach for a modified cumulative sum statistic. The new procedure does not assume a particular dependence structure nor a particular distribution of regression residuals. It employs a data-driven selection of the order of an autoregressive model and a robust estimation of the model coefficients. Our simulation studies show a competitive performance of the new bootstrap-based procedure compared with its asymptotic counterpart. We apply the new testing procedure to address an important environmental problem in Chesapeake Bay---severe oxygen depletion---and detect two change points in the relationship between the volume of low-oxygen waters and nutrient inputs to the bay during 1985--2017.

Citations (0)

Mentions (0)

Metrics

Dataset Index

0.3

FAIR Score

13%

Citations

0

Mentions

0

Metrics Over Time

Publication Details

Assigned Domain

Subfield

Statistics and Probability

Field

Mathematics

Domain

Physical Sciences

Confidence Score

57%

Source

Scholar Data Model

Keywords

Environmental Science

Normalization Factors

FT

13.46

CTw

1.00

MTw

1.00