Nonparametric Euler Equation Identification and Estimation

Saturday 4th July 2020
CINET:
2060
Escanciano, J C., Hoderlein, S., Lewbel, A., Linton, O., Srisuma, S.
We consider nonparametric identification and estimation of pricing kernels, or equivalently of marginal utility functions up to scale, in consumption based asset pricing Euler equations. Ours is the first paper to prove nonparametric identification of Euler equations under low level conditions (without imposing functional restrictions or just assuming completeness). We also propose a novel nonparametric estimator based on our identification analysis, which combines standard kernel estimation with the computation of a matrix eigenvector problem. Our estimator avoids the ill-posed inverse issues associated with nonparametric instrumental variables estimators. We derive limiting distributions for our estimator and for relevant associated functionals. A Monte Carlo shows a satisfactory finite sample performance for our estimators.
Keywords
Euler equations
marginal utility
pricing kernel
Fredholm equations
integral equations
nonparametric identification
asset pricing
C14
D91
E21
G12
Themes
empirical