Inconsistency of Bootstrap for Nonstationary, Vector Autoregressive Processes
نویسنده
چکیده
Using a nonstationary, bivariate autoregressive process with iid innovations, this paper shows that the bootstrap vector autoregressive causality test is inconsistent in general in the sense that its weak limit is di¤erent from that of the original causality test.
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