Efficient Computation of Confidence Sets Using Classification on Equidistributed Grids (2401.01804v2)
Abstract: Economic models produce moment inequalities, which can be used to form tests of the true parameters. Confidence sets (CS) of the true parameters are derived by inverting these tests. However, they often lack analytical expressions, necessitating a grid search to obtain the CS numerically by retaining the grid points that pass the test. When the statistic is not asymptotically pivotal, constructing the critical value for each grid point in the parameter space adds to the computational burden. In this paper, we convert the computational issue into a classification problem by using a support vector machine (SVM) classifier. Its decision function provides a faster and more systematic way of dividing the parameter space into two regions: inside vs. outside of the confidence set. We label those points in the CS as 1 and those outside as -1. Researchers can train the SVM classifier on a grid of manageable size and use it to determine whether points on denser grids are in the CS or not. We establish certain conditions for the grid so that there is a tuning that allows us to asymptotically reproduce the test in the CS. This means that in the limit, a point is classified as belonging to the confidence set if and only if it is labeled as 1 by the SVM.
- Inference for linear conditional moment inequalities.
- Estimation of games with ordered actions: An application to chain-store entry: Estimation of games with ordered actions. Quantitative Economics, 7:727–780.
- Chandrasekharan, K. (1969). Introduction to analytic number theory.
- Estimation and confidence regions for parameter sets in econometric models. Econometrica, 75(5):1243–1284.
- Market structure and multiple equilibria in airline markets. Econometrica, 77(6):1791–1828.
- Support vector networks. Machine Learning, 20:273–297.
- Simple Adaptive Size-Exact Testing for Full-Vector and Subvector Inference in Moment Inequality Models. The Review of Economic Studies, 90(1):201–228.
- Approximation capability of two hidden layer feedforward neural networks with fixed weights. Neurocomputing, 316:262–269.
- The Elements of Statistical Learning. Springer Series in Statistics. Springer New York Inc., New York, NY, USA.
- Confidence intervals for partially identified parameters. Econometrica, 72(6):1845–1857.
- Judd, K. L. (1998). Numerical Methods in Economics, volume 1 of MIT Press Books. The MIT Press.
- Partial identification and inference for dynamic models and counterfactuals. Working Paper 26761, National Bureau of Economic Research.
- Asymptotic behaviors of support vector machines with gaussian kernel. Neural Comput., 15(7):1667–1689.
- Finite Sample Inference in Incomplete Models. Papers 2204.00473, arXiv.org.
- Inference on regressions with interval data on a regressor or outcome. Econometrica, 70(2):519–546.
- Applied Computational Economics and Finance, volume 1 of MIT Press Books. The MIT Press.
- Inference for the identified set in partially identified econometric models. Econometrica, 78(1):169–211.
- Rosen, A. (2008). Confidence sets for partially identified parameters that satisfy a finite number of moment inequalities. Journal of Econometrics, 146(1):107–117.
- Wolak, F. A. (1991). The local nature of hypothesis tests involving inequality constraints in nonlinear models. Econometrica, 59(4):981–995.
- Wolf pack algorithm for unconstrained global optimization. Mathematical Problems in Engineering.
- Parallelizing support vector machines on distributed computers. In Platt, J., Koller, D., Singer, Y., and Roweis, S., editors, Advances in Neural Information Processing Systems, volume 20. Curran Associates, Inc.
Paper Prompts
Sign up for free to create and run prompts on this paper using GPT-5.
Top Community Prompts
Collections
Sign up for free to add this paper to one or more collections.