Learning to imitate stochastic time series in a compositional way by chaos

Nonlinear Sciences – Chaotic Dynamics

Scientific paper

Rate now

  [ 0.00 ] – not rated yet Voters 0   Comments 0

Details

24 pages, 16 figures and 2 tables

Scientific paper

This study shows that a mixture of RNN experts model can acquire the ability to generate sequences combining multiple primitive patterns by means of self-organizing chaos. By training of the model, each expert learns a primitive sequence pattern, and a gating network learns to imitate stochastic switching of the multiple primitives via a chaotic dynamics, utilizing a sensitive dependence on initial conditions. As a demonstration, we present a numerical simulation in which the model learns Markov chain switching among some Lissajous curves by a chaotic dynamics. Our analysis shows that by using a sufficient amount of training data, balanced with the network memory capacity, it is possible to satisfy the conditions for embedding the target stochastic sequences into a chaotic dynamical system. It is also shown that reconstruction of a stochastic time series by a chaotic model can be stabilized by adding a negligible amount of noise to the dynamics of the model.

No associations

LandOfFree

Say what you really think

Search LandOfFree.com for scientists and scientific papers. Rate them and share your experience with other people.

Rating

Learning to imitate stochastic time series in a compositional way by chaos does not yet have a rating. At this time, there are no reviews or comments for this scientific paper.

If you have personal experience with Learning to imitate stochastic time series in a compositional way by chaos, we encourage you to share that experience with our LandOfFree.com community. Your opinion is very important and Learning to imitate stochastic time series in a compositional way by chaos will most certainly appreciate the feedback.

Rate now

     

Profile ID: LFWR-SCP-O-472085

  Search
All data on this website is collected from public sources. Our data reflects the most accurate information available at the time of publication.