Encoding Binary Events from Continuous Time Series in Rooted Trees using Contrastive Learning

  • Tobias Engelhardt Rasmussen
  • , Siv Sørensen

Research output: Contribution to conferenceConference abstract for conferenceResearch

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Abstract

Broadband infrastructure owners do not always know how their customers are connected in the local networks, which are structured as rooted trees. A recent study is able to infer the topology of a local network using discrete time series data from the leaves of the tree (customers). In this study we propose a contrastive approach for learning a binary event encoder from continuous time series data. As a preliminary result, we show that our approach has some potential in learning a valuable encoder.
Original languageEnglish
Publication date2024
Publication statusPublished - 2024
EventNorthern Lights Deep Learning Conference 2024 - Tromsø, Norway
Duration: 9 Jan 202411 Jan 2024

Conference

ConferenceNorthern Lights Deep Learning Conference 2024
Country/TerritoryNorway
CityTromsø
Period09/01/202411/01/2024

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