ABSTRACT Time-series analysis allows for the determination of the Power Spectral Density (PSD) and Probability Density Function (PDF) for astrophysical sources. The former of these illustrates the distribution of power at various time-scales, typically taking a power-law form, while the latter characterizes the distribution of the underlying stochastic physical processes, with Gaussian and lognormal functional forms both physically motivated. In this paper, we use artificial time series generated using the prescription of Timmer & Koenig to investigate connections between the PDF and PSD. PDFs calculated for these artificial light curves are less likely to be well described by a Gaussian functional form for steep (Γ⪆1) PSD indices due t...
We present a framework for modelling the star-formation histories of galaxies as a stochastic proces...
International audienceOne of the principle efforts in cosmic microwave background (CMB) research is ...
Context. Timing analysis can be a powerful tool with which to shed light on the still obscure emissi...
Time-series analysis allows for the determination of the Power Spectral Density (PSD) and Probabilit...
The power density spectrum of a light curve is often calculated as the average of a number of spectr...
International audienceDetermining whether the flux distribution of an astrophysical source is a Gaus...
Despite the high accuracy of photometric redshifts (zphot) derived using machine learning (ML) metho...
Detecting primordial non-Gaussianity on mildly non-linear scales requires precise modelling of late-...
We present the results of the Fermi-Large Area Telescope 10 yr long light curve (LC) modeling of sel...
We present the results of the Fermi-Large Area Telescope 10 yr long light curve (LC) modeling of sel...
We present the use of continuous-time autoregressive moving average (CARMA) models as a method for e...
We present a new approach to extract the power-law part of a density/column-density probability dens...
Aims. Theory of random processes provides an attractive mathematical tool to describe the fluctuati...
Aims. Deriving accurate frequencies, amplitudes, and mode lifetimes from stochastically driven pulsa...
Probability distribution functions of column density (N-PDFs) are used to evaluate the relative impo...
We present a framework for modelling the star-formation histories of galaxies as a stochastic proces...
International audienceOne of the principle efforts in cosmic microwave background (CMB) research is ...
Context. Timing analysis can be a powerful tool with which to shed light on the still obscure emissi...
Time-series analysis allows for the determination of the Power Spectral Density (PSD) and Probabilit...
The power density spectrum of a light curve is often calculated as the average of a number of spectr...
International audienceDetermining whether the flux distribution of an astrophysical source is a Gaus...
Despite the high accuracy of photometric redshifts (zphot) derived using machine learning (ML) metho...
Detecting primordial non-Gaussianity on mildly non-linear scales requires precise modelling of late-...
We present the results of the Fermi-Large Area Telescope 10 yr long light curve (LC) modeling of sel...
We present the results of the Fermi-Large Area Telescope 10 yr long light curve (LC) modeling of sel...
We present the use of continuous-time autoregressive moving average (CARMA) models as a method for e...
We present a new approach to extract the power-law part of a density/column-density probability dens...
Aims. Theory of random processes provides an attractive mathematical tool to describe the fluctuati...
Aims. Deriving accurate frequencies, amplitudes, and mode lifetimes from stochastically driven pulsa...
Probability distribution functions of column density (N-PDFs) are used to evaluate the relative impo...
We present a framework for modelling the star-formation histories of galaxies as a stochastic proces...
International audienceOne of the principle efforts in cosmic microwave background (CMB) research is ...
Context. Timing analysis can be a powerful tool with which to shed light on the still obscure emissi...