We develop a new test of a parametric model of a conditional mean function against a nonparametric alternative. The test adapts to the unknown smoothness of the alternative model and is uniformly consistent against alternatives whose distance from the parametric model converges to zero at the fastest possible rate. This rate is slower than n-1/2. Some existing tests have non-trivial power against restricted classes of alternatives whose distance from the parametric model decreases at the rate n-1/2. There are, however, sequences of alternatives against which these tests are inconsistent and ours is consistent. As a consequence, there are alternative models for which the finite-sample power of our test greatly exceeds that of existing tests....
This paper proposes simple, data-driven, optimal rate-adaptive inferences on a structural function i...
Suppose one observes a process Y on the unit interval, where dY = ƒ + n-1/2dW with an unknown functi...
This paper proposes simple, data-driven, optimal rate-adaptive inferences on a structural function i...
We develop a new test of a parametric model of a conditional mean function against a nonparametric a...
We develop a new test of a parametric model of a conditional mean function against a nonparametric a...
We develop a new test of a parametric model of a conditional mean function against a nonparametric a...
We develop a new test of a parametric model of a conditional mean function against a nonparametric a...
We develop a new test of a parametric model of a conditional mean function against a nonparametric a...
We develop a new test of a parametric model of a conditional mean function against a nonparametric a...
We develop a new test of a parametric model of a conditional mean function against a nonparametric a...
This paper is concerned with testing the hypothesis that a conditional median function is linear aga...
In the context of testing the specification of a nonlinear parametric regression function, we adopt ...
The present paper continues studying the problem of nonparametric hypothesis testing started in Leps...
In the context of testing the specification of a nonlinear parametric regression function, we adopt ...
This paper is concerned with inference about a function g that is identified by a conditional moment...
This paper proposes simple, data-driven, optimal rate-adaptive inferences on a structural function i...
Suppose one observes a process Y on the unit interval, where dY = ƒ + n-1/2dW with an unknown functi...
This paper proposes simple, data-driven, optimal rate-adaptive inferences on a structural function i...
We develop a new test of a parametric model of a conditional mean function against a nonparametric a...
We develop a new test of a parametric model of a conditional mean function against a nonparametric a...
We develop a new test of a parametric model of a conditional mean function against a nonparametric a...
We develop a new test of a parametric model of a conditional mean function against a nonparametric a...
We develop a new test of a parametric model of a conditional mean function against a nonparametric a...
We develop a new test of a parametric model of a conditional mean function against a nonparametric a...
We develop a new test of a parametric model of a conditional mean function against a nonparametric a...
This paper is concerned with testing the hypothesis that a conditional median function is linear aga...
In the context of testing the specification of a nonlinear parametric regression function, we adopt ...
The present paper continues studying the problem of nonparametric hypothesis testing started in Leps...
In the context of testing the specification of a nonlinear parametric regression function, we adopt ...
This paper is concerned with inference about a function g that is identified by a conditional moment...
This paper proposes simple, data-driven, optimal rate-adaptive inferences on a structural function i...
Suppose one observes a process Y on the unit interval, where dY = ƒ + n-1/2dW with an unknown functi...
This paper proposes simple, data-driven, optimal rate-adaptive inferences on a structural function i...