详情
Nonparametric Specification Testing for
Continuous-Time Models with Application to
Spot
We propose two nonparametric transition density-based speciÞcation tests for continuous-time
models. Unlike the marginal density used in the literature, the transition density can capture the
full dynamics of a continuous-time process. To address the concerns of the Þnite sample perfor-
mance of nonparametric methods in the literature, we introduce an appropriate data transfor-
mation and correct the boundary bias of kernel estimators. As a result, our tests are robust to
persistent dependence in data and provide reliable inferences for sample sizes often encountered
in empirical Þnance. Simulation studies show that even for data with highly persistent depen-
dence, our tests have reasonable size and good power against a variety of alternatives in Þnite
samples. Besides one-factor diffusion models, our tests can be applied to a broad class of dynamic
models, including discrete-time dynamic models, time-inhomogeneous diffusion models, stochas-
tic volatility models, jump-diffusion models, and multi-factor diffusion models. When applied to
Eurodollar interest rates, our tests overwhelmingly reject a variety of popular one-factor diffusion
models. We Þnd that introducing nonlinear drift does not signiÞcantly improve the goodness of
Þt, and the main reason for the rejection of one-factor diffusion models is the violation of the
Markov assumption. Some popular non-Markovian models with GARCH, regime switching and
jumps perform signiÞcantly better than one-factor diffusion models, but they are still far from
being adequate to fully capture the interest rate dynamics. Our study shows that, contrary to
the general perception in the literature, nonparametric methods are a reliable and powerful tool
for analyzing Þnancial data.