Introducing Probabilistic Bézier Curves for N-Step Sequence Prediction
Ronny Hug, Wolfgang Hübner, Michael Arens
Abstract
Representations of sequential data are commonly based on the assumption that observed sequences are realizations of an unknown underlying stochastic process, where the learning problem includes determination of the model parameters. In this context, a model must be able to capture the multi-modal nature of the data, without blurring between single modes. This paper proposes probabilistic B'{e}zier curves (
Topics & Concepts
Probabilistic logicSequence (biology)Context (archaeology)Computer scienceBézier curveAlgorithmModalProcess (computing)MathematicsArtificial intelligenceGeometryPolymer chemistryBiologyPaleontologyChemistryGeneticsOperating systemImage and Signal Denoising MethodsMusic and Audio ProcessingNeural Networks and Applications