Defining the energy function as the negative logarithm of the density, we explore the energy landscape of a distribution via the tree of sublevel sets of its energy. This tree represents the hierarchy among the connected components of the sublevel sets. We propose ways to annotate the tree so that it provides information on both topological and statistical aspects of the distribution, such as the local energy minima (local modes), their local domains and volumes, and the barriers between them. We develop a computational method to estimate the tree and reconstruct the energy landscape from Monte Carlo samples simulated at a wide energy range of a distribution. This method can be applied to any arbitrary distribution on a space with defined c...
Machine learning techniques are being increasingly used as flexible non-linear fitting and predictio...
International audienceWe present novel algorithms and software addressing four core problems in comp...
We propose an approach for summarizing the output of long simulations of complex systems, affording ...
Defining the energy function as the negative logarithm of the density, we explore the energy landsca...
Abstract. In many statistical learning problems, the target functions to be optimized are highly non...
Energy-based models are a powerful and flexible tool for studying emergent properties in systems wit...
International audienceWe present novel algorithms and software addressing four core problemsin compu...
International audienceThe number of local minima of the potential energy landscape (PEL) of molecula...
Energy landscape approaches have become increasingly popular for analyzing a wide variety of chemica...
International audienceThe number of local minima of the potential energy landscape (PEL) of molecula...
International audienceThis paper presents a new method for exploring conformational energy landscape...
We report in the present work a new method for exploring conformational energy landscapes. The metho...
Energy landscape approaches have become increasingly popular for analyzing a wide variety of chemica...
The analysis of energy landscapes plays an important role in mathematical modelling, simulation and ...
This article is organized as follows: Section 2 opens with an introduction to the requisite terminol...
Machine learning techniques are being increasingly used as flexible non-linear fitting and predictio...
International audienceWe present novel algorithms and software addressing four core problems in comp...
We propose an approach for summarizing the output of long simulations of complex systems, affording ...
Defining the energy function as the negative logarithm of the density, we explore the energy landsca...
Abstract. In many statistical learning problems, the target functions to be optimized are highly non...
Energy-based models are a powerful and flexible tool for studying emergent properties in systems wit...
International audienceWe present novel algorithms and software addressing four core problemsin compu...
International audienceThe number of local minima of the potential energy landscape (PEL) of molecula...
Energy landscape approaches have become increasingly popular for analyzing a wide variety of chemica...
International audienceThe number of local minima of the potential energy landscape (PEL) of molecula...
International audienceThis paper presents a new method for exploring conformational energy landscape...
We report in the present work a new method for exploring conformational energy landscapes. The metho...
Energy landscape approaches have become increasingly popular for analyzing a wide variety of chemica...
The analysis of energy landscapes plays an important role in mathematical modelling, simulation and ...
This article is organized as follows: Section 2 opens with an introduction to the requisite terminol...
Machine learning techniques are being increasingly used as flexible non-linear fitting and predictio...
International audienceWe present novel algorithms and software addressing four core problems in comp...
We propose an approach for summarizing the output of long simulations of complex systems, affording ...