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Examining collinearities

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Examining collinearities. / Shabuz, Zillur; Garthwaite, Paul H.
In: Australian and New Zealand Journal of Statistics, Vol. 66, No. 3, 30.09.2024, p. 367-388.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Harvard

Shabuz, Z & Garthwaite, PH 2024, 'Examining collinearities', Australian and New Zealand Journal of Statistics, vol. 66, no. 3, pp. 367-388. https://doi.org/10.1111/anzs.12425

APA

Shabuz, Z., & Garthwaite, PH. (2024). Examining collinearities. Australian and New Zealand Journal of Statistics, 66(3), 367-388. https://doi.org/10.1111/anzs.12425

Vancouver

Shabuz Z, Garthwaite PH. Examining collinearities. Australian and New Zealand Journal of Statistics. 2024 Sept 30;66(3):367-388. Epub 2024 Aug 29. doi: 10.1111/anzs.12425

Author

Shabuz, Zillur ; Garthwaite, Paul H. / Examining collinearities. In: Australian and New Zealand Journal of Statistics. 2024 ; Vol. 66, No. 3. pp. 367-388.

Bibtex

@article{2af3ab775f3e4a3b9a33380392b06589,
title = "Examining collinearities",
abstract = "The cos-max method is a little-known method of identifying collinearities. It is based on the cos-max transformation, which makes minimal adjustment to a set of vectors to create orthogonal components with a one-to-one correspondence between the original vectors and the components. The aim of the transformation is that each vector should be close to the orthogonal component with which it is paired. Vectors involved in a collinearity must be adjusted substantially in order to create orthogonal components, while other vectors will typically be adjusted far less. The cos-max method uses the size of adjustments to identify collinearities. It gives a coherent relationship between collinear sets of variables and variance inflation factors (VIFs) and identifies collinear sets using more information than traditional methods. In this paper we describe these features of the method and examine its performance in examples, comparing it with alternative methods. In each example, the collinearities identified by the cos-max method only contained variables with high VIFs and contained all variables with high VIFs. The collinearities identified by other methods did not have such a close link to VIFs. Also, the collinearities identified by the cos-max method were as simple as or simpler than those given by other methods, with less overlap between collinearities in the variables that they contained.",
keywords = "auxiliary regression, cos-max, eigenvector analysis, variance decomposition, variance inflation factor",
author = "Zillur Shabuz and Paul H. Garthwaite",
year = "2024",
month = sep,
day = "30",
doi = "10.1111/anzs.12425",
language = "English",
volume = "66",
pages = "367--388",
journal = "Australian and New Zealand Journal of Statistics",
issn = "1369-1473",
publisher = "Wiley-Blackwell",
number = "3",

}

RIS

TY - JOUR

T1 - Examining collinearities

AU - Shabuz, Zillur

AU - Garthwaite, Paul H.

PY - 2024/9/30

Y1 - 2024/9/30

N2 - The cos-max method is a little-known method of identifying collinearities. It is based on the cos-max transformation, which makes minimal adjustment to a set of vectors to create orthogonal components with a one-to-one correspondence between the original vectors and the components. The aim of the transformation is that each vector should be close to the orthogonal component with which it is paired. Vectors involved in a collinearity must be adjusted substantially in order to create orthogonal components, while other vectors will typically be adjusted far less. The cos-max method uses the size of adjustments to identify collinearities. It gives a coherent relationship between collinear sets of variables and variance inflation factors (VIFs) and identifies collinear sets using more information than traditional methods. In this paper we describe these features of the method and examine its performance in examples, comparing it with alternative methods. In each example, the collinearities identified by the cos-max method only contained variables with high VIFs and contained all variables with high VIFs. The collinearities identified by other methods did not have such a close link to VIFs. Also, the collinearities identified by the cos-max method were as simple as or simpler than those given by other methods, with less overlap between collinearities in the variables that they contained.

AB - The cos-max method is a little-known method of identifying collinearities. It is based on the cos-max transformation, which makes minimal adjustment to a set of vectors to create orthogonal components with a one-to-one correspondence between the original vectors and the components. The aim of the transformation is that each vector should be close to the orthogonal component with which it is paired. Vectors involved in a collinearity must be adjusted substantially in order to create orthogonal components, while other vectors will typically be adjusted far less. The cos-max method uses the size of adjustments to identify collinearities. It gives a coherent relationship between collinear sets of variables and variance inflation factors (VIFs) and identifies collinear sets using more information than traditional methods. In this paper we describe these features of the method and examine its performance in examples, comparing it with alternative methods. In each example, the collinearities identified by the cos-max method only contained variables with high VIFs and contained all variables with high VIFs. The collinearities identified by other methods did not have such a close link to VIFs. Also, the collinearities identified by the cos-max method were as simple as or simpler than those given by other methods, with less overlap between collinearities in the variables that they contained.

KW - auxiliary regression

KW - cos-max

KW - eigenvector analysis

KW - variance decomposition

KW - variance inflation factor

U2 - 10.1111/anzs.12425

DO - 10.1111/anzs.12425

M3 - Journal article

VL - 66

SP - 367

EP - 388

JO - Australian and New Zealand Journal of Statistics

JF - Australian and New Zealand Journal of Statistics

SN - 1369-1473

IS - 3

ER -