Many dynamical systems, from quantum many-body systems to evolving populations to financial markets, are described by stochastic processes. Parameters characterizing such processes can often be inferred using information integrated over stochastic paths. However, estimating time-integrated quantities from real data with limited time resolution is challenging. Here, we propose a framework for accurately estimating time-integrated quantities using Bézier interpolation. We applied our approach to two dynamical inference problems: Determining fitness parameters for evolving populations and inferring forces driving Ornstein-Uhlenbeck processes. We found that Bézier interpolation reduces the estimation bias for both dynamical inference problems. ...
Simulation-based inference enables learning the parameters of a model even when its likelihood canno...
Simulation-based inference enables learning the parameters of a model even when its likelihood canno...
International audienceIn most current data modelling for time-dynamic systems, one works with a pres...
Linear dynamical relations that may exist in continuous-time, or at some natural sampling rate, are ...
To monitor or control a stochastic dynamic system, we need to reason about its current state. Exact ...
In this thesis, we explore concepts related to interpolation between series of measures with a focus...
In the study of biological, ecological, or environmental dynamical processes, many theoretical model...
Many living and complex systems exhibit second-order emergent dynamics. Limited experimental access ...
This thesis focuses on inference problems involving stochastic dynamics in biological systems. Many ...
Inference is a key component in learning probabilistic models from partially observable data. When l...
Many living and complex systems exhibit second-order emergent dynamics. Limited experimental access ...
Dynamic processes generating time series are a phenomenon occurring in many events and systems worth...
We present a novel method for interpolating univariate time series data. The proposed method combine...
A phenomenological interpolation model for the transition operator of a stationary Markov process is...
Although the governing equations of many systems, when derived from first principles, may be viewed ...
Simulation-based inference enables learning the parameters of a model even when its likelihood canno...
Simulation-based inference enables learning the parameters of a model even when its likelihood canno...
International audienceIn most current data modelling for time-dynamic systems, one works with a pres...
Linear dynamical relations that may exist in continuous-time, or at some natural sampling rate, are ...
To monitor or control a stochastic dynamic system, we need to reason about its current state. Exact ...
In this thesis, we explore concepts related to interpolation between series of measures with a focus...
In the study of biological, ecological, or environmental dynamical processes, many theoretical model...
Many living and complex systems exhibit second-order emergent dynamics. Limited experimental access ...
This thesis focuses on inference problems involving stochastic dynamics in biological systems. Many ...
Inference is a key component in learning probabilistic models from partially observable data. When l...
Many living and complex systems exhibit second-order emergent dynamics. Limited experimental access ...
Dynamic processes generating time series are a phenomenon occurring in many events and systems worth...
We present a novel method for interpolating univariate time series data. The proposed method combine...
A phenomenological interpolation model for the transition operator of a stationary Markov process is...
Although the governing equations of many systems, when derived from first principles, may be viewed ...
Simulation-based inference enables learning the parameters of a model even when its likelihood canno...
Simulation-based inference enables learning the parameters of a model even when its likelihood canno...
International audienceIn most current data modelling for time-dynamic systems, one works with a pres...