CHAOS and DYNAMICS in BIOLOGICAL NETWORKS

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1 International Workshop-School CHAOS and DYNAMICS in BIOLOGICAL NETWORKS Programme Monday May 5, :45 9:15 Registration 9:15 9:30 Opening 9:30 10:15 Leon Chua, CNN : Twenty Years Later 10:15 11 Leonid Bunimovich, Dynamical Networks 11 11:30 Coffee and Tea Christophe Letellier, Analysis of cardio-respiratory rhythms using symbolic dynamics and Shannon entropies 12 12:30 Vladimir Nekorkin, Heteroclinic Contours and Self-Replicated Wave Patterns in a Neural Networks with Complex Threshold Excitation Ra'ul Rechtman, Synchronizable networks :30 Gustavo Martinez-Mekler, Modeling a flagelum calcium oscillation network related to sperm swimming. 16:30 17:00 Coffee and Tea 17-17: 30 Nikolai Rulkov, Map-based neural models for large-scale network studies. 17: Miguel Sanjuan, A map-based approach to neuronal dynamics 18 19:00 Welcome Cocktail

2 Tuesday May :45 Henri Korn, Generation and temporal structure of chaotic patterns in a vertebrate sensory-motor command neuron 9: 45 10:30 Mikhail Rabinovich, TRANSIENT COGNITIVE DYNAMICS 1: Experiments and Modeling 10:30 11 Coffee and Tea Bruno Cessac, Neural Networks as dynamical systems Srdjan Ostojic, Synchronization in networks of spiking neurons in presence of noise: comparing the effects of chemical and electrical synapses 12-12:20 Sandhya Patidar, Network of Stochastic Oscillators - An Analytical Approach Michael C. Mackey, Understanding the Dynamics of Gene Regulatory Systems: A Mathematical Modeling Approach 15:45 16:30 Bastien Fernandez, Athermal dynamics of strongly coupled stochastic three-state oscillators 16:30 17:00 Coffee and Tea 17: 00 17:45 Tomoki Fukai, Reliability vs. variability in spike responses of recurrent neuronal networks 17:45 18: 05 Anna Levina, Dynamical systems approach to self-organized criticality in neuralnetworks. 18:05-18:25 Jean-Marc Ginoux, Invariant Manifolds of Biological Dynamical Systems

3 Wednesday May 7, :45 Sergio Rinaldi, Synchrony in slow-fast metacommunities 9:45 10:30 Esa Ranta, No chaotic dynamics in fluctuations of natural populations 10:30 11 Coffee and Tea 11-11:30 Bernard Cazelles, Unexpected influences of noise on nonlinear population dynamics. 11:30 12 M.A. Aziz-Alaoui, Predator-Prey Dynamics : (Stability, Bifurcations, Chaos) 12 12:30 Xiao-Song YANG Crossing bocks, horseshoe, and chaos in some biological networks Excursion

4 Thursday May 8, :45 Alain Desxhtehe, Stochastic dynamics, chaos or self-organized critical states: which one best describes brain activity? 9:45 10:15 Philippe Faure, Analysis of the sequential organisation of behaviors 10:15 10:45 Maurice Courbage, Chaotic bursting oscillations in neural models 10: Coffee and Tea 11: 15 11: 45 Jose C.Valverde, Bifurcations in discrete and continuous time dynamical systems generalized 11:50-12:15 Mario Chavez, Dynamic complex topology in functional brainwebs Pierre Collet, Quasi stationary distributions and applications in population dynamics 15:45 16:15 V. Afraïmovich, Transient dynamics of sensory and cognitive networks.ii: rigorous results. 16:15 16:45 Coffee and Tea 16:45 19:00 Posters 19:30 Dinner

5 Friday May 9, :00 9:45 Igor Belykh, What matters in synchronization of bursting neurons 9:45 10:15 Lev Tsimring, Stochastic oscillations in small genetic networks 10:15-10:35 Mike Fowler, Population synchrony in small-world networks. 10:35-11:05 Coffee and Tea 11:05 11:25 Arndt Benecke, Non-linear chromatin dynamics and stochasticity in gene expression. 11:25-11:45 Andrey Pototsky; Synchronization of a large number of continuous one-dimensional stochastic elements with time delayed mean field coupling Vladimir Klinshov, Synchronization in system of oscillating neurons with time-delay coupling" :40 Anna Vasylenko, Phase Chaos in Discrete Kuramoto Model 15:40 16:00 Sandro Vaienti, The Reniy entropies and large deviations for short recurrence 16:00 16:45 Discussion and closing 16:45 17:15 Coffee and Tea

6 POSTERS Michel Besserve Modeling neuronal network dynamics in asynchronous brain computer interfaces Nathalie Corson Bifurcations, synchronization and complexity in Hindmarsh-Rose system Sami El Boustani A master equation formalism to describe spiking neuron networks Masatoshi Funabashi Synthetic Modeling of Intrinsic Learning with Chaotic Neural Network Hongjun Cao and Miguel A. F. Sanjuan Elliptic Bursting of Bursts in a two Identical Map-Based Neuron Network Dmitry Kazatkin Phase clusters and self-referential phase reset phenomenon in ensembles of FitzHugh-Nagumo neurons. Annick Lesne, joint work with C. Bécavin and J.M.Victor When steric hindrance facilitates processivity: polymerase activity within heterochromatin Qiuying LU Stability of SIRS system with random perturbations Jan Pyrzowski & Justyna Signerska DISORDER-INDUCED PHASE TRANSITIONS IN NEURAL NETWORK MODELS Adrien Richard On the link between oscillations and negative circuits in discrete genetic regulatory networks Jonathan Touboul and Romain Brette Chaos and dynamics of bidimensional integrate-and-fire neurons Miguel Valencia Unveiling dynamic complex brain webs Denis Zakharov Dynamics of two coupled inferior olive neurons with coupling break

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