We study the statistical properties of three estimation methods for a model of learning that is often tted to experimental data: quadratic deviation measures without unobserved heterogeneity, and maximum likelihood with and without unobserved heterogeneity. After discussing identi cation issues, we show that the estimators are consistent and provide their asymptotic distribution. Using Monte Carlo simulations, we show that ignoring unobserved heterogeneity can lead to seriously biased estimations in samples which have the typical length of actual experiments. Better small sample properties are obtained if unobserved heterogeneity is introduced. That is, rather than estimating the parameters for each individual, the individual parameters ...
AbstractWe present a new general upper bound on the number of examples required to estimate all of t...
<p>The learning trend versus trial number for the conditions of Experiment 2 and Experiment 3 plus a...
What determines individuals’ efficacy in detecting regularities in visual statistical learning? Our ...
We study the statistical properties of three estimation methods for a model of learning that is ofte...
Experimental data is used to test a variety of learning models using a model that extends several of...
Comparisons of learning models in repeated games have been a central preoccu-pation of experimental ...
How can we select the best performing data-driven model? How can we rigorously estimate its generali...
a. Experiment 2 from [16] in which subjects were shown two items, each of which could be drawn from ...
We study the interaction between input distributions, learning algo-rithms, and finite sample sizes ...
Bayesian adaptive experimental design is a form of active learning, which chooses samples to maximiz...
We study the interaction between input distributions, learning algorithms and finite sample sizes in...
This paper examines the problem of learning from examples in a framework that is based on, but more ...
Abstract. We propose a novel approach for the estimation of the size of training sets that are neede...
Abstract. When dealing with datasets containing a billion instances or with sim-ulations that requir...
Abstract. When dealing with datasets containing a billion instances or with sim-ulations that requir...
AbstractWe present a new general upper bound on the number of examples required to estimate all of t...
<p>The learning trend versus trial number for the conditions of Experiment 2 and Experiment 3 plus a...
What determines individuals’ efficacy in detecting regularities in visual statistical learning? Our ...
We study the statistical properties of three estimation methods for a model of learning that is ofte...
Experimental data is used to test a variety of learning models using a model that extends several of...
Comparisons of learning models in repeated games have been a central preoccu-pation of experimental ...
How can we select the best performing data-driven model? How can we rigorously estimate its generali...
a. Experiment 2 from [16] in which subjects were shown two items, each of which could be drawn from ...
We study the interaction between input distributions, learning algo-rithms, and finite sample sizes ...
Bayesian adaptive experimental design is a form of active learning, which chooses samples to maximiz...
We study the interaction between input distributions, learning algorithms and finite sample sizes in...
This paper examines the problem of learning from examples in a framework that is based on, but more ...
Abstract. We propose a novel approach for the estimation of the size of training sets that are neede...
Abstract. When dealing with datasets containing a billion instances or with sim-ulations that requir...
Abstract. When dealing with datasets containing a billion instances or with sim-ulations that requir...
AbstractWe present a new general upper bound on the number of examples required to estimate all of t...
<p>The learning trend versus trial number for the conditions of Experiment 2 and Experiment 3 plus a...
What determines individuals’ efficacy in detecting regularities in visual statistical learning? Our ...