We propose an intuitive, machine-learning approach to multiparameter inference, dubbed the InferoStatic Networks (ISN) method, to model the score and likelihood ratio estimators in cases when the probability density can be sampled but not computed directly. The ISN uses a backend neural network that models a scalar function called the inferostatic potential $\varphi$. In addition, we introduce new strategies, respectively called Kernel Score Estimation (KSE) and Kernel Likelihood Ratio Estimation (KLRE), to learn the score and the likelihood ratio functions from simulated data. We illustrate the new techniques with some toy examples and compare to existing approaches in the literature. We mention en passant some new loss functions that opti...
We present PPI++: a computationally lightweight methodology for estimation and inference based on a ...
Simulation models of complex dynamics in the natural and social sciences commonly lack a tractable...
Among the existing machine learning frameworks, reservoir computing demonstrates fast and low-cost t...
We present a machine learning approach for model-independent new physics searches. The corresponding...
We summarize and discuss new inference techniques for systems that are described by a simulator wit...
Posterior inference with an intractable likelihood is becoming an increasingly common task in scient...
The standard approach to inference from cosmic large-scale structure data employs summary statistics...
Simulation-based inference (SBI) is rapidly establishing itself as a standard machine learning techn...
Many analyses in particle and nuclear physics use simulations to infer fundamental, effective, or ph...
Machine-learning techniques have become fundamental in high-energy physics and, for new physics sear...
Machine Learning is a powerful tool to reveal and exploit correlations in a multi-dimensional parame...
We develop, discuss, and compare several inference techniques to constrain theory parameters in coll...
Simulators often provide the best description of real-world phenomena; however, they also lead to ch...
The exchange of ideas between statistical physics and computer science has been very fruitful and is...
In many areas of science, complex phenomena are modeled by stochastic parametric simulators, often f...
We present PPI++: a computationally lightweight methodology for estimation and inference based on a ...
Simulation models of complex dynamics in the natural and social sciences commonly lack a tractable...
Among the existing machine learning frameworks, reservoir computing demonstrates fast and low-cost t...
We present a machine learning approach for model-independent new physics searches. The corresponding...
We summarize and discuss new inference techniques for systems that are described by a simulator wit...
Posterior inference with an intractable likelihood is becoming an increasingly common task in scient...
The standard approach to inference from cosmic large-scale structure data employs summary statistics...
Simulation-based inference (SBI) is rapidly establishing itself as a standard machine learning techn...
Many analyses in particle and nuclear physics use simulations to infer fundamental, effective, or ph...
Machine-learning techniques have become fundamental in high-energy physics and, for new physics sear...
Machine Learning is a powerful tool to reveal and exploit correlations in a multi-dimensional parame...
We develop, discuss, and compare several inference techniques to constrain theory parameters in coll...
Simulators often provide the best description of real-world phenomena; however, they also lead to ch...
The exchange of ideas between statistical physics and computer science has been very fruitful and is...
In many areas of science, complex phenomena are modeled by stochastic parametric simulators, often f...
We present PPI++: a computationally lightweight methodology for estimation and inference based on a ...
Simulation models of complex dynamics in the natural and social sciences commonly lack a tractable...
Among the existing machine learning frameworks, reservoir computing demonstrates fast and low-cost t...