Simulation-Based Exact Tests with Unidentified Nuisance Parameters Under the Null Hypothesis: the Case of Jumps Tests in Models with Conditional Heteroskedasticity
Lynda Khalaf,
Jean-Daniel Saphores and
Jean-François Bilodeau
Cahiers de recherche from GREEN
Abstract:
We use the Monte-Carlo (MC) test technique to find valid p-values when testing for discontinuities in jump-diffusion models. While the distribution of the LR statistic for this test is typically non-standard, we show that the MC p-value is finite sample exact if no other (identified) nuisance parameter is present. Otherwise, we derive nuisance-parameter free bounds and obtain exact bounds p-values. We illustrate our approach on four classes of jump-diffusion models we use to models spot prices of copper, nickel, golds, and crude oil. We find significant jumps in all weekly time series and in a few monthly time series.
Keywords: Monte Carlo Test; Bounds Test; Discontinuous Process; Conditional Heteroscedasticity (search for similar items in EconPapers)
JEL-codes: C15 C22 C52 Q3 (search for similar items in EconPapers)
Date: 2000
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Working Paper: Simulation-Based Exact Tests with Unidentified Nuisance Parameters under the Null Hypothesis: the Case of Jumps Tests in Model with Conditional Heteroskedasticity (2000) 
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Persistent link: https://EconPapers.repec.org/RePEc:lvl:lagrcr:0004
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