Training examples are not all equally informative. Active learning strategies leverage this observation in order to massively reduce the number of examples that need to be labeled. We leverage the same observation to build a generic strategy for parallelizing learning algorithms. This strategy is effective because the search for informative examples is highly parallelizable and because we show that its performance does not deteriorate when the sifting process relies on a slightly outdated model. Parallel active learning is particularly attractive to train nonlinear models with non-linear representations because there are few practical parallel learning algorithms for such models. We report preliminary experiments using both kernel SVMs and ...
Building effective optimization heuristics is a challenging task which often takes developers severa...
Active learning deals with the problem of selecting a small subset of examples to la-bel, from a poo...
<p>Most classic machine learning methods depend on the assumption that humans can annotate all the d...
This paper addresses two challenges in combination: learning with a very limited number of labeled t...
This paper addresses two challenges in combination: learning with a very limited number of labeled t...
Abstract We discuss a new paradigm for supervised learning that aims at improving the efficiency of ...
We present a novel parallelisation scheme that simplifies the adaptation of learning algorithms to g...
Most active learning methods avoid model selection by training models of one type (SVMs, boosted tre...
In machine learning, active learning refers to algorithms that autonomously select the data points f...
Pool-based active learning is an important technique that helps reduce labeling efforts within a poo...
Recent advances in visual analytics have enabled us to learn from user interactions and uncover anal...
The area of machine learning has made considerable progress over the past decade, enabled by the wid...
We propose a new method for approximating active learning acquisition strategies that are based on r...
This paper presents a rigorous statistical analysis characterizing regimes in which active learning ...
Traditional supervised machine learning algorithms are expected to have access to a large corpus of ...
Building effective optimization heuristics is a challenging task which often takes developers severa...
Active learning deals with the problem of selecting a small subset of examples to la-bel, from a poo...
<p>Most classic machine learning methods depend on the assumption that humans can annotate all the d...
This paper addresses two challenges in combination: learning with a very limited number of labeled t...
This paper addresses two challenges in combination: learning with a very limited number of labeled t...
Abstract We discuss a new paradigm for supervised learning that aims at improving the efficiency of ...
We present a novel parallelisation scheme that simplifies the adaptation of learning algorithms to g...
Most active learning methods avoid model selection by training models of one type (SVMs, boosted tre...
In machine learning, active learning refers to algorithms that autonomously select the data points f...
Pool-based active learning is an important technique that helps reduce labeling efforts within a poo...
Recent advances in visual analytics have enabled us to learn from user interactions and uncover anal...
The area of machine learning has made considerable progress over the past decade, enabled by the wid...
We propose a new method for approximating active learning acquisition strategies that are based on r...
This paper presents a rigorous statistical analysis characterizing regimes in which active learning ...
Traditional supervised machine learning algorithms are expected to have access to a large corpus of ...
Building effective optimization heuristics is a challenging task which often takes developers severa...
Active learning deals with the problem of selecting a small subset of examples to la-bel, from a poo...
<p>Most classic machine learning methods depend on the assumption that humans can annotate all the d...