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WINNERLESS COMPETITION PRINCIPLE IN NEUROSCIENCE Mikhail Rabinovich

WINNERLESS COMPETITION PRINCIPLE IN NEUROSCIENCE Mikhail Rabinovich INLS University of California, San Diego. ’. competition stimulus Winnerless without + dependent = Competition WINNER clique Principle. Hierarchy of the Models.

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WINNERLESS COMPETITION PRINCIPLE IN NEUROSCIENCE Mikhail Rabinovich

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  1. WINNERLESS COMPETITION PRINCIPLE IN NEUROSCIENCE Mikhail Rabinovich INLS University of California, San Diego ’

  2. competition stimulus Winnerless without + dependent = CompetitionWINNER clique Principle

  3. Hierarchy of the Models • Network with realistic H-H model neurons & random inhibitory & excitatory connections • Network with FitzHugh-Nagumo spiking neurons • Lotka-Volterra type model to describe the spiking rate of the Principal Neurons (PNs)

  4. From standard rate equations to Lotka-Volterra type model

  5. is the strength of inhibition in i by j is the strength of excitation in i by k is the excitation from the other neural ensembles is an external action Stimulus dependent Rate Model Is the firing rate of neuron i

  6. Canonical L-V model (N>3) A heteroclinic sequence consists of finitely many saddle equilibria and finitely many separatrices connecting these equilibria. The heteroclinic sequence can serve as an attracting set if every saddle point has only one unstable direction. The condition for this is: i+1 i Necessary condition for stability:

  7. Then the heteroclinic contour is a global attractor if A noise transfer the heteroclinic contour to a stable limit cycle with the same order of a sequential switching Consider the matrix Canonical Lotka-Volterra model Rigorous results (N=3)

  8. WLC Principle & SHS (rate model) Geometrical image of the switching activity in the phase space is the orbit in the vicinity of the heteroclinic sequence

  9. WLC Principle & SHS (H-H neurons) Geometrical image of the switching activity in the phase space is the orbit in the vicinity of the heteroclinic contour

  10. WLC in a network of three spiking-bursting neurons

  11. The main questions: • How does sensory information transform into behavior in a robust and reproducible way? • Do neural systems generate new information based on their sensory inputs? • Can transient dynamics be reproducible?

  12. WLC dynamics of the piloric CPG: experiment & theory

  13. Real timeClione’s hunting behavior

  14. Clione’s hunting behavior

  15. Clione’s neural circuit

  16. WLC can generate an irregular but reproducible sequence Model assumptions • All connections are inhibitory • The SRCs are asymmetrically connected • There is 30% connectivity among the neurons • The hunting neuron excites allSCHs at variable strength

  17. Projection of the strange attractorfrom the 6D phase space of the statocyst network

  18. Weak reciprocal excitation stabilizes WLCdynamics:Birth of the stable limit cycle in the vicinity of the former heteroclinic sequence

  19. Conductance-based model for “Winner take all” and “Winnerless” competition Winner take all Winnerless

  20. Sequential dynamics of statocyst neurons

  21. Motor output dynamics Firing rates of 4 different tail motorneurons at different burst episodes In spite of the irregularity the sequence is preserved

  22. IMAGES OF THE DYNAMICAL SEQUENCES

  23. Spatio-temporal coding in the Antennal Lobe of Locust(space = odor space) Lessons from the experiments: The key role of the inhibition Nonsymmetric connections No direct connection between PNs

  24. input output 1 1 0 2 1 1 8 2 0 9 Time 8 9 0 Transformation of the identity input Into spatio-temporal output based on the intrinsic sequential dynamics of the neural ensemble 0 1 0 1 0 1 0 0 0 1 1 Winnerless Competition Principle & New Dynamical Object: Stable Heteroclinic Sequence WLC & SHS

  25. Transient dynamics of the bee antennal lobe activity during post-stimulus relaxation

  26. Low dimensional projection of Trajectories Representing PN Population Response over Time

  27. Stable Heteroclinic Sequence

  28. Reproducible sequences in complex networks Inequalities for reproducibility:

  29. Neuron Reproducibility of the heteroclinic sequence

  30. Stable manifolds of the saddle points keep the divergent directions in check in the vicinity of a heteroclinic sequence

  31. WLC in complex neural ensembles Complex network = many elements + + disordered connections Most important phenomena in complex systems on the edge of reproducibility are: (i) clustering, and (ii) competition

  32. Rate model of the Random network QIs the step function

  33. TWO REGIMES: A) B)

  34. What controls the dynamics?

  35. Phase portrait of the sequential activity

  36. Chaos in random network

  37. Reproducible transient sequence generated in random network

  38. Reproducibility of the transient dynamics

  39. Example of sequence

  40. The network of songbird brain

  41. HVC Songbird patterns

  42. Self-organized WLC in a network with Hebbian learning

  43. WLC in the network with local learning

  44. WLC networks cooperation: * synchronization(i) electrical connections, (ii) synaptic connections; (iii) ultra-subharmonic synchronization ** competition

  45. Synchronization of the CPGs of two different animals

  46. Heteroclinic synchronization: Ultra-subharmonic locking

  47. Heteroclinic Arnold tongues

  48. Chaos between stairs of synchronizaton

  49. Heteroclinic synchronization: Map’s description

  50. Competition between learned sequences: on line decision making

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