Motivated by data-rich experiments in transcriptional regulation and sensory neuroscience, we consider the following general problem in statistical inference: when exposed to a high-dimensional signal S, a system of interest computes a representation R of that signal, which is then observed through a noisy measurement M. From a large number of signals and measurements, we wish to infer the "filter" that maps S to R. However, the standard method for solving such problems, likelihood-based inference, requires perfect a priori knowledge of the "noise function" mapping R to M. In practice such noise functions are usually known only approximately, if at all, and using an incorrect noise function will typically bias the inferred filter. Here we s...
Abstract. Consider measuring a vector x ∈ Rn through the inner product with several measurement vect...
We consider the high-dimensional inference problem where the signal is a low-rank symmetric matrix w...
We investigate the problem of estimating persistent homology of noisy one dimensional signals. We re...
Motivated by data-rich experiments in transcriptional regulation and sensory neuroscience, we consid...
A fundamental problem in modern high-dimensional data analysis involves efficiently inferring a set ...
Information theory provides a powerful framework to analyse the representation of sensory stimuli in...
Inference in a high-dimensional situation may involve regularization of a certain form to treat over...
The estimation of the information carried by spike times is crucial for a quantitative understanding...
Simulation-based inference enables learning the parameters of a model even when its likelihood canno...
The ability to discriminate between similar sensory stimuli relies on the amount of information enco...
(A) Matrix of covariances Σij among neurons in MSTd and VIP (N=128). Top: Extensive information mode...
A wide variety of problems that are encountered in different fields can be formulated as an inferenc...
In the general signal+noise (allowing non-normal, non-independent observations) model, we construct ...
How neurons in the brain collectively represent stimuli is a long standing open problem. Studies in...
International audienceMaximum entropy models provide the least constrained probability distributions...
Abstract. Consider measuring a vector x ∈ Rn through the inner product with several measurement vect...
We consider the high-dimensional inference problem where the signal is a low-rank symmetric matrix w...
We investigate the problem of estimating persistent homology of noisy one dimensional signals. We re...
Motivated by data-rich experiments in transcriptional regulation and sensory neuroscience, we consid...
A fundamental problem in modern high-dimensional data analysis involves efficiently inferring a set ...
Information theory provides a powerful framework to analyse the representation of sensory stimuli in...
Inference in a high-dimensional situation may involve regularization of a certain form to treat over...
The estimation of the information carried by spike times is crucial for a quantitative understanding...
Simulation-based inference enables learning the parameters of a model even when its likelihood canno...
The ability to discriminate between similar sensory stimuli relies on the amount of information enco...
(A) Matrix of covariances Σij among neurons in MSTd and VIP (N=128). Top: Extensive information mode...
A wide variety of problems that are encountered in different fields can be formulated as an inferenc...
In the general signal+noise (allowing non-normal, non-independent observations) model, we construct ...
How neurons in the brain collectively represent stimuli is a long standing open problem. Studies in...
International audienceMaximum entropy models provide the least constrained probability distributions...
Abstract. Consider measuring a vector x ∈ Rn through the inner product with several measurement vect...
We consider the high-dimensional inference problem where the signal is a low-rank symmetric matrix w...
We investigate the problem of estimating persistent homology of noisy one dimensional signals. We re...