77,736 research outputs found
Mystery and contingency in correctional education
Citing the work of Maxine Greene, Maurice Merleau-Ponty, and Thom Gehring, this paper makes the argument that correctional educators should attempt to accept that they will never fully understand the lives and perspectives of their students. Noting that some of the questions correctional educators have about the lived experiences of incarcerated and formerly incarcerated students cannot be answered in a way that is fully comprehensible to those who have not lived as prisoners, the paper suggests that developing comfort with mystery will allow educators to focus on instruction
The upper atmosphere
Energy transfer, and heat sinks and sources in upper atmosphere for composition and temperature behavio
Sampling the Dirichlet Mixture Model with Slices
We provide a new approach to the sampling of the well known mixture of Dirichlet process model. Recent attention has focused on retention of the random distribution function in the model, but sampling algorithms have then suffered from the countably infinite representation these distributions have. The key to the algorithm detailed in this paper, which also keeps the random distribution functions, is the introduction of a latent variable which allows a finite number, which is known, of objects to be sampled within each iteration of a Gibbs sampler.Bayesian Nonparametrics, Density estimation, Dirich-let process, Gibbs sampler, Slice sampling.
Evaluation of radar imagery of highly faulted volcanic terrain in southeast Oregon
Aerial radar imagery of highly faulted volcanic terrain in southeast Orego
Asymptotically minimax empirical Bayes estimation of a sparse normal mean vector
For the important classical problem of inference on a sparse high-dimensional
normal mean vector, we propose a novel empirical Bayes model that admits a
posterior distribution with desirable properties under mild conditions. In
particular, our empirical Bayes posterior distribution concentrates on balls,
centered at the true mean vector, with squared radius proportional to the
minimax rate, and its posterior mean is an asymptotically minimax estimator. We
also show that, asymptotically, the support of our empirical Bayes posterior
has roughly the same effective dimension as the true sparse mean vector.
Simulation from our empirical Bayes posterior is straightforward, and our
numerical results demonstrate the quality of our method compared to others
having similar large-sample properties.Comment: 18 pages, 3 figures, 3 table
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