We consider sequential prediction algorithms that are given the predictions from a set of models as inputs. If the nature of the data is changing over time in that different models predict well on different segments of the data, then adaptivity is typically achieved by mixing into the weights in each round a bit of the initial prior (kind of like a weak restart). However, what if the favored models in each segment are from a small subset, i.e. the data is likely to be predicted well by models that predicted well before? Curiously, fitting such “sparse composite models ” is achieved by mixing in a bit of all the past posteriors. This self-referential updating method is rather peculiar, but it is efficient and gives superior performance on ma...
<p>The implementation assumes a two-dimension probability map that is updated iteratively trial by t...
Many processes evolve over time and statistical models need to be adaptive to change. This thesis pr...
The velocity, volume, and variety of big data present both challenges and opportunities for cognitiv...
Much is now known about the consistency of Bayesian updating on infinite-dimensional parameter space...
Abstract: Much is now known about the consistency of Bayesian updat-ing on infinite-dimensional para...
AbstractBayes’ rule specifies how to obtain a posterior from a class of hypotheses endowed with a pr...
Bayesian methods are often optimal, yet increasing pressure for fast computations, especially with s...
This paper discusses Bayesian inference in change-point models. Existing approaches involve placing ...
This paper discusses Bayesian inference in change-point models. Existing approaches involve placing ...
Summary: We consider estimating a probability density p based on a random sample from this density b...
AbstractDeveloping models to describe observable systems is a challenge because it can be difficult ...
Learning a sequence of tasks without access to i.i.d. observations is a widely studied form of conti...
When it comes to extracting information from data by means of Bayes rule, it should not matter if al...
We propose a new method for conducting Bayesian prediction that delivers accurate predictions withou...
We argue that when faced with big data sets, learning and inference algorithms should compute update...
<p>The implementation assumes a two-dimension probability map that is updated iteratively trial by t...
Many processes evolve over time and statistical models need to be adaptive to change. This thesis pr...
The velocity, volume, and variety of big data present both challenges and opportunities for cognitiv...
Much is now known about the consistency of Bayesian updating on infinite-dimensional parameter space...
Abstract: Much is now known about the consistency of Bayesian updat-ing on infinite-dimensional para...
AbstractBayes’ rule specifies how to obtain a posterior from a class of hypotheses endowed with a pr...
Bayesian methods are often optimal, yet increasing pressure for fast computations, especially with s...
This paper discusses Bayesian inference in change-point models. Existing approaches involve placing ...
This paper discusses Bayesian inference in change-point models. Existing approaches involve placing ...
Summary: We consider estimating a probability density p based on a random sample from this density b...
AbstractDeveloping models to describe observable systems is a challenge because it can be difficult ...
Learning a sequence of tasks without access to i.i.d. observations is a widely studied form of conti...
When it comes to extracting information from data by means of Bayes rule, it should not matter if al...
We propose a new method for conducting Bayesian prediction that delivers accurate predictions withou...
We argue that when faced with big data sets, learning and inference algorithms should compute update...
<p>The implementation assumes a two-dimension probability map that is updated iteratively trial by t...
Many processes evolve over time and statistical models need to be adaptive to change. This thesis pr...
The velocity, volume, and variety of big data present both challenges and opportunities for cognitiv...