International audienceSome recent results showed that the renormalization group (RG) can be considered as a promising framework to address open issues in data analysis. In this work, we focus on one of these aspects, closely related to principal component analysis (PCA) for the case of large dimensional data sets with covariance having a nearly continuous spectrum. In this case, the distinction between ‘noise-like’ and ‘non-noise’ modes becomes arbitrary and an open challenge for standard methods. Observing that both RG and PCA search for simplification for systems involving many degrees of freedom, we aim to use the RG argument to clarify the turning point between noise and information modes. The analogy between coarse-graining renormaliza...
International audienceStarting from a well-defined local Lagrangian, we analyze the renormalization ...
We reconsider the conceptual foundations of the renormalization-group (RG) formalism, and prove some...
We reconsider the conceptual foundations of the renormalization-group (RG) formalism, and prove some...
International audienceSome recent results showed that the renormalization group (RG) can be consider...
Machine learning has been a fast growing field of research in several areas dealing with large datas...
We formulate a renormalization group analysis for the study of the accumula-tion of period doubling ...
International audienceThe large scale behavior of systems having a large number of interacting degre...
I show how a renormalization group (RG) method can be used to incrementally integrate the informatio...
How do statistical dependencies in measurement noise influence high-dimensional inference? To answer...
Evaluation of likelihood functions for cosmological large scale structure data sets (including CMB, ...
We reconsider the conceptual foundations of the renormalization-group (RG) formalism, and prove some...
This thesis is, broadly speaking, on the subject of the Renormalization Group (RG), that is, the sys...
Discovering robust low-rank data representations is important in many real-world problems. Tradition...
This chapter confronts renormalization used in quantum field theory and that used in critical phenom...
Recently, a novel real-space renormalization group (RG) algorithm was introduced. By maximizing an i...
International audienceStarting from a well-defined local Lagrangian, we analyze the renormalization ...
We reconsider the conceptual foundations of the renormalization-group (RG) formalism, and prove some...
We reconsider the conceptual foundations of the renormalization-group (RG) formalism, and prove some...
International audienceSome recent results showed that the renormalization group (RG) can be consider...
Machine learning has been a fast growing field of research in several areas dealing with large datas...
We formulate a renormalization group analysis for the study of the accumula-tion of period doubling ...
International audienceThe large scale behavior of systems having a large number of interacting degre...
I show how a renormalization group (RG) method can be used to incrementally integrate the informatio...
How do statistical dependencies in measurement noise influence high-dimensional inference? To answer...
Evaluation of likelihood functions for cosmological large scale structure data sets (including CMB, ...
We reconsider the conceptual foundations of the renormalization-group (RG) formalism, and prove some...
This thesis is, broadly speaking, on the subject of the Renormalization Group (RG), that is, the sys...
Discovering robust low-rank data representations is important in many real-world problems. Tradition...
This chapter confronts renormalization used in quantum field theory and that used in critical phenom...
Recently, a novel real-space renormalization group (RG) algorithm was introduced. By maximizing an i...
International audienceStarting from a well-defined local Lagrangian, we analyze the renormalization ...
We reconsider the conceptual foundations of the renormalization-group (RG) formalism, and prove some...
We reconsider the conceptual foundations of the renormalization-group (RG) formalism, and prove some...