6533b825fe1ef96bd1282625

RESEARCH PRODUCT

A Note on Resampling the Integration Across the Correlation Integral with Alternative Ranges

Jorge Belaire-franch

subject

Economics and EconometricsCorrelation dimensionResamplingMonte Carlo methodEconometricsCorrelation integralContext (language use)Random permutationEmpirical distribution functionStatisticMathematics

description

Abstract This paper reconsiders the nonlinearity test proposed by Ko[cbreve]enda (Ko[cbreve]enda, E. (2001). An alternative to the BDS test: integration across the correlation integral. Econometric Reviews20:337–351). When the analyzed series is non‐Gaussian, the empirical rejection rates can be much larger than the nominal size. In this context, the necessity of tabulating the empirical distribution of the statistic each time the test is computed is stressed. To that end, simple random permutation works reasonably well. This paper also shows, through Monte Carlo experiments, that Ko[cbreve]enda's test can be more powerful than the Brock et al. (Brock, W., Dechert, D., Scheickman, J., LeBaron, B. (1996). A test for independence based on the correlation dimension. Econometric Reviews15:197–235) procedure. However, more than one range of values for the proximity parameter should be used. Finally, empirical evidence on exchange rates is reassessed.

https://doi.org/10.1081/etc-120025892