Search Results for author: Florian Pausinger

Found 1 papers, 0 papers with code

Learn2Extend: Extending sequences by retaining their statistical properties with mixture models

no code implementations3 Dec 2023 Dimitris Vartziotis, George Dasoulas, Florian Pausinger

Leveraging advancements in deep learning applied to point processes, this paper explores the use of an auto-regressive \textit{Sequence Extension Mixture Model} (SEMM) for extending finite sequences, by estimating directly the conditional density, instead of the intensity function.

Point Processes

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