An Adversarial Approach to Structural Estimation
- URL: http://arxiv.org/abs/2007.06169v3
- Date: Tue, 1 Nov 2022 02:49:35 GMT
- Title: An Adversarial Approach to Structural Estimation
- Authors: Tetsuya Kaji, Elena Manresa, Guillaume Pouliot
- Abstract summary: We propose a new simulation-based estimation method, adversarial estimation, for structural models.
We show that, with a sufficiently rich discriminator, the adversarial estimator attains parametric efficiency under correct specification.
We apply our method to the elderly's saving decision model and show that our estimator uncovers the bequest motive as an important source of saving across the wealth distribution.
- Score: 2.5782420501870287
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We propose a new simulation-based estimation method, adversarial estimation,
for structural models. The estimator is formulated as the solution to a minimax
problem between a generator (which generates simulated observations using the
structural model) and a discriminator (which classifies whether an observation
is simulated). The discriminator maximizes the accuracy of its classification
while the generator minimizes it. We show that, with a sufficiently rich
discriminator, the adversarial estimator attains parametric efficiency under
correct specification and the parametric rate under misspecification. We
advocate the use of a neural network as a discriminator that can exploit
adaptivity properties and attain fast rates of convergence. We apply our method
to the elderly's saving decision model and show that our estimator uncovers the
bequest motive as an important source of saving across the wealth distribution,
not only for the rich.
Related papers
- Rejection via Learning Density Ratios [50.91522897152437]
Classification with rejection emerges as a learning paradigm which allows models to abstain from making predictions.
We propose a different distributional perspective, where we seek to find an idealized data distribution which maximizes a pretrained model's performance.
Our framework is tested empirically over clean and noisy datasets.
arXiv Detail & Related papers (2024-05-29T01:32:17Z) - Dual Student Networks for Data-Free Model Stealing [79.67498803845059]
Two main challenges are estimating gradients of the target model without access to its parameters, and generating a diverse set of training samples.
We propose a Dual Student method where two students are symmetrically trained in order to provide the generator a criterion to generate samples that the two students disagree on.
We show that our new optimization framework provides more accurate gradient estimation of the target model and better accuracies on benchmark classification datasets.
arXiv Detail & Related papers (2023-09-18T18:11:31Z) - Leveraging Variational Autoencoders for Parameterized MMSE Estimation [10.141454378473972]
We propose a variational autoencoder-based framework for parameterizing a conditional linear minimum mean squared error estimator.
The derived estimator is shown to approximate the minimum mean squared error estimator by utilizing the variational autoencoder as a generative prior for the estimation problem.
We conduct a rigorous analysis by bounding the difference between the proposed and the minimum mean squared error estimator.
arXiv Detail & Related papers (2023-07-11T15:41:34Z) - Variational Classification [51.2541371924591]
We derive a variational objective to train the model, analogous to the evidence lower bound (ELBO) used to train variational auto-encoders.
Treating inputs to the softmax layer as samples of a latent variable, our abstracted perspective reveals a potential inconsistency.
We induce a chosen latent distribution, instead of the implicit assumption found in a standard softmax layer.
arXiv Detail & Related papers (2023-05-17T17:47:19Z) - Doubly Robust Counterfactual Classification [1.8907108368038217]
We study counterfactual classification as a new tool for decision-making under hypothetical (contrary to fact) scenarios.
We propose a doubly-robust nonparametric estimator for a general counterfactual classifier.
arXiv Detail & Related papers (2023-01-15T22:04:46Z) - Deciding What to Model: Value-Equivalent Sampling for Reinforcement
Learning [21.931580762349096]
We introduce an algorithm that computes an approximately-value-equivalent, lossy compression of the environment which an agent may feasibly target in lieu of the true model.
We prove an information-theoretic, Bayesian regret bound for our algorithm that holds for any finite-horizon, episodic sequential decision-making problem.
arXiv Detail & Related papers (2022-06-04T23:36:38Z) - Tractable and Near-Optimal Adversarial Algorithms for Robust Estimation
in Contaminated Gaussian Models [1.609950046042424]
Consider the problem of simultaneous estimation of location and variance matrix under Huber's contaminated Gaussian model.
First, we study minimum $f$-divergence estimation at the population level, corresponding to a generative adversarial method with a nonparametric discriminator.
We develop tractable adversarial algorithms with simple spline discriminators, which can be implemented via nested optimization.
The proposed methods are shown to achieve minimax optimal rates or near-optimal rates depending on the $f$-divergence and the penalty used.
arXiv Detail & Related papers (2021-12-24T02:46:51Z) - Near-optimal inference in adaptive linear regression [60.08422051718195]
Even simple methods like least squares can exhibit non-normal behavior when data is collected in an adaptive manner.
We propose a family of online debiasing estimators to correct these distributional anomalies in at least squares estimation.
We demonstrate the usefulness of our theory via applications to multi-armed bandit, autoregressive time series estimation, and active learning with exploration.
arXiv Detail & Related papers (2021-07-05T21:05:11Z) - A bandit-learning approach to multifidelity approximation [7.960229223744695]
Multifidelity approximation is an important technique in scientific computation and simulation.
We introduce a bandit-learning approach for leveraging data of varying fidelities to achieve precise estimates.
arXiv Detail & Related papers (2021-03-29T05:29:35Z) - Goal-directed Generation of Discrete Structures with Conditional
Generative Models [85.51463588099556]
We introduce a novel approach to directly optimize a reinforcement learning objective, maximizing an expected reward.
We test our methodology on two tasks: generating molecules with user-defined properties and identifying short python expressions which evaluate to a given target value.
arXiv Detail & Related papers (2020-10-05T20:03:13Z) - Learning Minimax Estimators via Online Learning [55.92459567732491]
We consider the problem of designing minimax estimators for estimating parameters of a probability distribution.
We construct an algorithm for finding a mixed-case Nash equilibrium.
arXiv Detail & Related papers (2020-06-19T22:49:42Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.