Holger Kantz


Ontology type: schema:Person     


Person Info

NAME

Holger

SURNAME

Kantz

Publications in SciGraph latest 50 shown

  • 2017-11 Ageing effects in ultraslow continuous time random walks in THE EUROPEAN PHYSICAL JOURNAL B
  • 2016 Prediction of Complex Dynamics: Who Cares About Chaos? in CHAOS DETECTION AND PREDICTABILITY
  • 2015-12 The relationship between the detrendend fluctuation analysis and the autocorrelation function of a signal in THE EUROPEAN PHYSICAL JOURNAL B
  • 2015-05 The fluctuation function of the detrended fluctuation analysis — investigation on the AR(1) process in THE EUROPEAN PHYSICAL JOURNAL B
  • 2011-03 Probability distribution function for systems driven by superheavy-tailed noise in THE EUROPEAN PHYSICAL JOURNAL B
  • 2011-01 Prediction of extreme events in the OFC model on a small world network in THE EUROPEAN PHYSICAL JOURNAL B
  • 2010-07 Biased diffusion in a piecewise linear random potential in THE EUROPEAN PHYSICAL JOURNAL B
  • 2010 Dynamics and Statistics of Extreme Events in NETWORK SCIENCE
  • 2009-12 Bivariate time-periodic Fokker-Planck model for freeway traffic in THE EUROPEAN PHYSICAL JOURNAL B
  • 2009-08 A first order geometric auto regressive process for boundary layer wind speed simulation in THE EUROPEAN PHYSICAL JOURNAL B
  • 2009-02 Finite-size effects on the statistics of extreme events in the BTW model in THE EUROPEAN PHYSICAL JOURNAL B
  • 2009 About First Order Geometric Auto Regressive Processes for Boundary Layer Wind Speed Simulation in PROGRESS IN TURBULENCE III
  • 2008-10 Editorial in THE EUROPEAN PHYSICAL JOURNAL SPECIAL TOPICS
  • 2008 Prediction of Extreme Events in NONLINEAR TIME SERIES ANALYSIS IN THE GEOSCIENCES
  • 2007 Short Time Prediction of Wind Speeds from Local Measurements in WIND ENERGY
  • 2006 Extreme Events: Magic, Mysteries, and Challenges in EXTREME EVENTS IN NATURE AND SOCIETY
  • 2006 Dynamical Interpretation of Extreme Events: Predictability and Predictions in EXTREME EVENTS IN NATURE AND SOCIETY
  • 2005 Predicting Probability for Stochastic Processes with Local Markov Property in PROGRESS IN TURBULENCE
  • 2003-07 Elimination of Fast Chaotic Degrees of Freedom: On the Accuracy of the Born Approximation in JOURNAL OF STATISTICAL PHYSICS
  • 2002-11 Analysing the information flow between financial time series in THE EUROPEAN PHYSICAL JOURNAL B
  • 2002 Nonlinear Noise Reduction in MODELLING AND FORECASTING FINANCIAL DATA
  • 2001 Dynamical systems with time scale separation: averaging, stochastic modelling, and central limit theorems in STOCHASTIC CLIMATE MODELS
  • 2000-04 Reconstruction of systems with delayed feedback: II. Application in THE EUROPEAN PHYSICAL JOURNAL D
  • 2000-04 Reconstruction of systems with delayed feedback: I. Theory in THE EUROPEAN PHYSICAL JOURNAL D
  • 1999 Nichtlineare Zeitreihenanalyse in der Physik: Möglichkeiten und Grenzen in KOMPLEXE SYSTEME UND NICHTLINEARE DYNAMIK IN NATUR UND GESELLSCHAFT
  • 1998 Problems in the Reconstruction of High-dimensional Deterministic Dynamics from Time Series in NONLINEAR ANALYSIS OF PHYSIOLOGICAL DATA
  • 1996 Observing and Predicting Chaotic Signals: Is 2% Noise Too Much? in PREDICTABILITY OF COMPLEX DYNAMICAL SYSTEMS
  • 1996 Nonlinear time series analysis — Potentials and limitations in NONLINEAR PHYSICS OF COMPLEX SYSTEMS
  • 1994-07 Equipartition thresholds in chains of anharmonic oscillators in JOURNAL OF STATISTICAL PHYSICS
  • 1994-07 Self-consistent check of the validity of Gibbs calculus using dynamical variables in JOURNAL OF STATISTICAL PHYSICS
  • 1994 Gibbsian Check of the Validity of Gibbsian Calculation through Dynamical Observables in HAMILTONIAN MECHANICS
  • 1991-05 On a forest fire model with supposed self-organized criticality in JOURNAL OF STATISTICAL PHYSICS
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