This tutorial presents probability theory techniques for boosting linear algorithms. The approach is based on statistics and uses educated guesses instead of comprehensive calculations. Because estimates can be calculated in sublinear time, many algorithms can benefit from statistical estimation. Several examples show how to significantly boost linear algorithms without negative effects on their results. These examples involve a Ransac algorithm, an image-processing algorithm, and a geometrical reconstruction. The approach exploits that, in many cases, the amount of information in a dataset increases asymptotically sublinearly if its size or sampling density increases. Conversely, an algorithm with expected sublinear running time can extrac...
The problem of statistical inference deals with the approximation of one or more unknown parameters ...
<p>Running times and prediction accuracies of the sub-quadratic algorithm tested with datasets of di...
We present new tools from probability theory that can be applied to the analysis of learning algorit...
This tutorial presents probability theory techniques for boosting linear algorithms. The approach is...
This tutorial presents probability theory techniques for boosting linear algorithms. The approach is...
We give sublinear-time approximation algorithms for some optimization problems arising in machine le...
Sublinear time algorithms represent a new paradigm in computing, where an algorithm must give some s...
96 pagesWe consider the problem of how to construct algorithms which deal efficiently with large amo...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
Probabilistic programming languages can simplify the development of ma-chine learning techniques, bu...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
In this PhD thesis on fine-grained algorithm design and complexity, we investigate output-sensitive ...
Modern technological advances have prompted massive scale data collection in manymodern fields such ...
Modern technological advances have prompted massive scale data collection in manymodern fields such ...
Probabilistic programming languages can simplify the development of machine learning techniques, but...
The problem of statistical inference deals with the approximation of one or more unknown parameters ...
<p>Running times and prediction accuracies of the sub-quadratic algorithm tested with datasets of di...
We present new tools from probability theory that can be applied to the analysis of learning algorit...
This tutorial presents probability theory techniques for boosting linear algorithms. The approach is...
This tutorial presents probability theory techniques for boosting linear algorithms. The approach is...
We give sublinear-time approximation algorithms for some optimization problems arising in machine le...
Sublinear time algorithms represent a new paradigm in computing, where an algorithm must give some s...
96 pagesWe consider the problem of how to construct algorithms which deal efficiently with large amo...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
Probabilistic programming languages can simplify the development of ma-chine learning techniques, bu...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
In this PhD thesis on fine-grained algorithm design and complexity, we investigate output-sensitive ...
Modern technological advances have prompted massive scale data collection in manymodern fields such ...
Modern technological advances have prompted massive scale data collection in manymodern fields such ...
Probabilistic programming languages can simplify the development of machine learning techniques, but...
The problem of statistical inference deals with the approximation of one or more unknown parameters ...
<p>Running times and prediction accuracies of the sub-quadratic algorithm tested with datasets of di...
We present new tools from probability theory that can be applied to the analysis of learning algorit...