Robust classification with belief functions and deep learning applied to STM

Luis Sánchez, Victor Rodríguez-Fernández, Massimiliano Vasile

Research output: Chapter in Book/Report/Conference proceedingConference contribution book

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Abstract

This work proposes an approach to robust con-junction risk assessment given a sequence of Conjunction Data Messages (CDM). Dempster-Shafer theory of evidence (DSt) is used to account for epistemic uncertainty in the sequence of CDMs and derive a robust classification of conjunction events. We then use Artificial Intelligence (AI) to bypass the computationally expensive parts of DSt and directly produce a robust classification from a given sequence of CDMs. Five AI techniques are proposed: Random Forest (RF) with DSt structures, RF with CDMs, Light Gradient Boosting machine (LGBm) with CDMs, autoregressive LGBm (aLGBm), and Transformers for time series. These meth-ods were trained and tested both on synthetic and in real datasets to study their applicability to real scenarios. The results show the potential of AI techniques, especially LGBm, for robustly classifying encounters from the sequence of CDMs, provided balanced datasets are available.
Original languageEnglish
Title of host publication2024 IEEE Congress on Evolutionary Computation, CEC 2024 - Proceedings
Place of PublicationPiscataway, NJ
PublisherIEEE
Number of pages8
ISBN (Electronic)9798350308365
ISBN (Print)9798350308372
DOIs
Publication statusPublished - 8 Aug 2024

Keywords

  • radio frequency
  • training
  • databases
  • computational modeling
  • time series analysis
  • transformers
  • boosting

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