AbstractExperimental evaluations of speedup learning methods have in the past used non-parametric hypothesis testing to determine whether or not learning is beneficial. We show here how to obtain deeper insight into the comparative performance of learning methods through a complementary parametric approach to data analysis. In this approach experimental data is used to estimate values for the parameters of a statistical model of the performance of a problem solver. To model problem solvers that use speedup learning methods, we propose a two-component linear model that captures how learned knowledge may accelerate the solution of some problems while leaving the solution of others relatively unchanged. We show how to apply expectation maximiz...
How can we select the best performing data-driven model? How can we rigorously estimate its generali...
In this paper, we criticize the current adaptive or statistical learning literature. Instead of emph...
<p>(A) The number of learning epochs required for correct learning as a function of the load , for ....
The research presented here focuses on modeling machine-learning performance. The thesis introduces ...
Modern technological advances have prompted massive scale data collection in manymodern fields such ...
Article first published online: 15 OCT 2012International audienceIn the area of high performance com...
Selecting the best configuration of hyperparameter values for a Machine Learning model yields direct...
A software is included with the document: the software implements the speedup-test protocole.Numerou...
Most standard algorithms for prediction with expert advice depend on a parameter called the learning...
Wide-ranging digitalization has made it possible to capture increasingly larger amounts of data. In ...
Response time data in learning experiments show a typical trend. They start out slow, quickly improv...
Benchmark experiments nowadays are the method of choice to evaluate learn-ing algorithms in most res...
Much research has been conducted in the area of machine learning algorithms; however, the question o...
An important strategy in cognitive training of working memory is to fine-tune task difficulty based ...
Machine learning has consistently proved to be useful in many applications. An integral facet allowi...
How can we select the best performing data-driven model? How can we rigorously estimate its generali...
In this paper, we criticize the current adaptive or statistical learning literature. Instead of emph...
<p>(A) The number of learning epochs required for correct learning as a function of the load , for ....
The research presented here focuses on modeling machine-learning performance. The thesis introduces ...
Modern technological advances have prompted massive scale data collection in manymodern fields such ...
Article first published online: 15 OCT 2012International audienceIn the area of high performance com...
Selecting the best configuration of hyperparameter values for a Machine Learning model yields direct...
A software is included with the document: the software implements the speedup-test protocole.Numerou...
Most standard algorithms for prediction with expert advice depend on a parameter called the learning...
Wide-ranging digitalization has made it possible to capture increasingly larger amounts of data. In ...
Response time data in learning experiments show a typical trend. They start out slow, quickly improv...
Benchmark experiments nowadays are the method of choice to evaluate learn-ing algorithms in most res...
Much research has been conducted in the area of machine learning algorithms; however, the question o...
An important strategy in cognitive training of working memory is to fine-tune task difficulty based ...
Machine learning has consistently proved to be useful in many applications. An integral facet allowi...
How can we select the best performing data-driven model? How can we rigorously estimate its generali...
In this paper, we criticize the current adaptive or statistical learning literature. Instead of emph...
<p>(A) The number of learning epochs required for correct learning as a function of the load , for ....