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A CONSISTENT ICM-BASED $\chi^2$ SPECIFICATION TEST

Published online by Cambridge University Press:  13 April 2026

Feiyu Jiang
Affiliation:
Fudan University
Emmanuel Selorm Tsyawo*
Affiliation:
University of Alabama
*
Address correspondence to Emmanuel Selorm Tsyawo, Department of Economics, Finance and Legal Studies, Culverhouse College of Business, University of Alabama, United States, e-mail: estsyawo@gmail.com.
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Abstract

In spite of the omnibus property of integrated conditional moment (ICM) specification tests, they are not commonly used in empirical practice owing to features such as the non-pivotality of the test and the high computational cost of available bootstrap schemes, especially in large samples. This article proposes specification and mean independence tests based on ICM metrics. The proposed test exhibits consistency, asymptotic $\chi ^2$-distribution under the null hypothesis, and computational efficiency. Moreover, it demonstrates robustness to heteroskedasticity of unknown form and can be adapted to enhance power toward specific alternatives. A power comparison with classical bootstrap-based ICM tests using Bahadur slopes is also provided. Monte Carlo simulations are conducted to showcase the excellent size control and competitive power of the proposed test.

Information

Type
ARTICLES
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (https://creativecommons.org/licenses/by/4.0), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
Copyright
© The Author(s), 2026. Published by Cambridge University Press
Figure 0

Table 1 Examples of ICM kernels

Figure 1

Table 2 Empirical size and local power

Figure 2

Figure 1 DGP LS2—Gaussian Kernel—$n=400$.

Figure 3

Figure 2 DGP LS2—Negative Euclidean—$n=400$.

Figure 4

Figure 3 DGP LS3—Gaussian Kernel—$n=400$.

Figure 5

Figure 4 DGP LS3—Negative Euclidean—$n=400$.

Figure 6

Figure 5 DGP LS4—Gaussian Kernel—$n=400$.

Figure 7

Figure 6 DGP LS4—Negative Euclidean—$n=400$.

Figure 8

Table 3 Running time—specification test—DGP LS1

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