Inference for Linear Systems with Unknown Coefficients
Yuehao Bai, Kirill Ponomarev, Andres Santos, Azeem M. Shaikh, Max Tabord-Meehan + 1 more
TLDR
This paper introduces novel sample-splitting tests for linear systems with unknown coefficients and non-negativity constraints, valid under weak conditions.
Key contributions
- Characterizes the closure of the null hypothesis to identify testable instances of the problem.
- Develops novel sample-splitting testing procedures for linear systems with unknown coefficients.
- Establishes test validity under weak conditions, allowing high-dimensional problems.
- Tests do not require simulation to compute critical values, simplifying implementation.
Why it matters
This paper tackles a fundamental statistical inference problem relevant to constructing confidence sets for partially identified parameters in various economic and econometric models. Its novel testing procedures offer practical advantages by not requiring simulations and handling high-dimensional data, making them broadly applicable.
Original Abstract
This paper considers the problem of testing whether there exists a solution satisfying certain non-negativity constraints to a linear system of equations. Importantly and in contrast to some prior work, we allow all parameters in the system of equations, including the slope coefficients, to be unknown. For this reason, we describe the linear system as having unknown (as opposed to known) coefficients. This hypothesis testing problem arises naturally when constructing confidence sets for possibly partially identified parameters in the analysis of nonparametric instrumental variables models, treatment effect models, and random coefficient models, among other settings. To rule out certain instances in which the testing problem is impossible, in the sense that the power of any test will be bounded by its size, we begin our analysis by characterizing the closure of the null hypothesis with respect to the total variation distance. We then use this characterization to develop novel testing procedures based on sample-splitting. We establish the validity of our testing procedures under weak and interpretable conditions on the linear system. An important feature of these conditions is that they permit the dimensionality of the problem to grow rapidly with the sample size. A further attractive property of our tests is that they do not require simulation to compute suitable critical values. We illustrate the practical relevance of our theoretical results in a simulation study.
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