How can we select the best performing data-driven model? How can we rigorously estimate its generalization error? Statistical learning theory (SLT) answers these questions by deriving nonasymptotic bounds on the generalization error of a model or, in other words, by delivering upper bounding of the true error of the learned model based just on quantities computed on the available data. However, for a long time, SLT has been considered only as an abstract theoretical framework, useful for inspiring new learning approaches, but with limited applicability to practical problems. The purpose of this review is to give an intelligible overview of the problems of model selection (MS) and error estimation (EE), by focusing on the ideas behind the di...
Wide-ranging digitalization has made it possible to capture increasingly larger amounts of data. In ...
Statistical learning theory provides the theoretical basis for many of today's machine learning algo...
RePEc Working Paper Series: No. 03/2011This review surveys a number of common Model Selection Algori...
How can we select the best performing data-driven model? How can we rigorously estimate its generali...
How can we select the best performing data-driven model? How can we rigorously estimate its generali...
How can we select the best performing data-driven model? How can we rigorously estimate its generali...
We study model selection strategies based on penalized empirical loss minimization. We point out a...
How can we select the best performing data-driven model and quantify its generalization error? This ...
In this book we tried to provide an intelligible overview of the problems of Model Selection and Err...
The goal of statistical learning theory is to study, in a statistical framework, the properties of l...
Abstract. We study model selection strategies based on penalized empirical loss minimization. We poi...
Statistical learning theory provides the theoretical basis for many of today's machine learning algo...
Statistical learning theory provides the theoretical basis for many of today's machine learning algo...
We investigate the problem of model selection for learning algorithms depending on a continuous para...
We investigate the problem of model selection for learning algorithms depending on a continuous para...
Wide-ranging digitalization has made it possible to capture increasingly larger amounts of data. In ...
Statistical learning theory provides the theoretical basis for many of today's machine learning algo...
RePEc Working Paper Series: No. 03/2011This review surveys a number of common Model Selection Algori...
How can we select the best performing data-driven model? How can we rigorously estimate its generali...
How can we select the best performing data-driven model? How can we rigorously estimate its generali...
How can we select the best performing data-driven model? How can we rigorously estimate its generali...
We study model selection strategies based on penalized empirical loss minimization. We point out a...
How can we select the best performing data-driven model and quantify its generalization error? This ...
In this book we tried to provide an intelligible overview of the problems of Model Selection and Err...
The goal of statistical learning theory is to study, in a statistical framework, the properties of l...
Abstract. We study model selection strategies based on penalized empirical loss minimization. We poi...
Statistical learning theory provides the theoretical basis for many of today's machine learning algo...
Statistical learning theory provides the theoretical basis for many of today's machine learning algo...
We investigate the problem of model selection for learning algorithms depending on a continuous para...
We investigate the problem of model selection for learning algorithms depending on a continuous para...
Wide-ranging digitalization has made it possible to capture increasingly larger amounts of data. In ...
Statistical learning theory provides the theoretical basis for many of today's machine learning algo...
RePEc Working Paper Series: No. 03/2011This review surveys a number of common Model Selection Algori...