Learning is a distinctive feature of intelligent behaviour. High-throughput experimental data and Big Data promise to open new windows on complex systems such as cells, the brain or our societies. Yet, the puzzling success of Artificial Intelligence and Machine Learning shows that we still have a poor conceptual understanding of learning. These applications push statistical inference into uncharted territories where data is high-dimensional and scarce, and prior information on "true" models is scant if not totally absent. Here we review recent progress on understanding learning, based on the notion of "relevance". The relevance, as we define it here, quantifies the amount of information that a dataset or the internal representation of a lea...
\u3cp\u3eLearning Analytics (LA) has a major interest in exploring and understanding the learning pr...
International audience—Probabilistic and neural approaches, through their incorporation of nonlinear...
We consider how mathematical models enable predictions for conditions that are qualitatively differe...
This paper argues that a notion of statistical explanation, based on Salmon's statistical relevance ...
Reinforcement learning models of human and animal learning usually concentrate on how we learn the r...
Broad distributions appear frequently in empirical data obtained from natural systems even in seemin...
Finding a dataset of minimal cardinality to characterize the optimal parameters of a model is of par...
Information theoretical measures are used to design, from first principles, an objective function th...
The analysis of complex physical systems hinges on the ability to extract the relevant degrees of fr...
There has been a lot of recent interest in adopting machine learning methods for scientific and engi...
The claim that the human cognitive system tends to allocate resources to the processing of available...
Optimal Learning Machines (OLM) are systems that extract maximally informative representation from d...
Pfannschmidt L. Relevance learning for redundant features. Bielefeld: Universität Bielefeld; 2021.Fe...
Abstract—In this paper, a mathematical theory of learning is proposed that has many parallels with i...
In machine learning, the choice of a learning algorithm that is suitable for the application domain ...
\u3cp\u3eLearning Analytics (LA) has a major interest in exploring and understanding the learning pr...
International audience—Probabilistic and neural approaches, through their incorporation of nonlinear...
We consider how mathematical models enable predictions for conditions that are qualitatively differe...
This paper argues that a notion of statistical explanation, based on Salmon's statistical relevance ...
Reinforcement learning models of human and animal learning usually concentrate on how we learn the r...
Broad distributions appear frequently in empirical data obtained from natural systems even in seemin...
Finding a dataset of minimal cardinality to characterize the optimal parameters of a model is of par...
Information theoretical measures are used to design, from first principles, an objective function th...
The analysis of complex physical systems hinges on the ability to extract the relevant degrees of fr...
There has been a lot of recent interest in adopting machine learning methods for scientific and engi...
The claim that the human cognitive system tends to allocate resources to the processing of available...
Optimal Learning Machines (OLM) are systems that extract maximally informative representation from d...
Pfannschmidt L. Relevance learning for redundant features. Bielefeld: Universität Bielefeld; 2021.Fe...
Abstract—In this paper, a mathematical theory of learning is proposed that has many parallels with i...
In machine learning, the choice of a learning algorithm that is suitable for the application domain ...
\u3cp\u3eLearning Analytics (LA) has a major interest in exploring and understanding the learning pr...
International audience—Probabilistic and neural approaches, through their incorporation of nonlinear...
We consider how mathematical models enable predictions for conditions that are qualitatively differe...