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Probabilistic Parametric Curves for Sequence Modeling

Probabilistic Parametric Curves for Sequence Modeling

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This work proposes a probabilistic extension to Bézier curves as a basis for effectively modeling stochastic processes with a bounded index set. The proposed stochastic process model is based on Mixture Density Networks and Bézier curves with Gaussian random variables as control points. A key advantage of this model is given by the ability to generate multi-mode predictions in a single inference step, thus avoiding the need for Monte Carlo simulation.

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This work has been downloaded 17 times via unglue.it ebook links.
  1. 17 - pdf (CC BY) at OAPEN Library.

Keywords

  • Computer science
  • Computing & information technology
  • Mathematical theory of computation
  • Maths for computer scientists
  • neural networks
  • Neuronale Netzwerke
  • Parametric Curves
  • Parametrische Kurven
  • Probabilistic Sequence Modeling
  • Probabilistische Sequenzmodellierung
  • Stochastic processes
  • Stochastische Prozesse

Links

DOI: 10.5445/KSP/1000146434

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