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Stream-Based Active Learning with Adaptive Uncertainty and Diversity Thresholds

  • Prajit T. Rajendran*
  • , Huascar Espinoza
  • , Agnes Delaborde
  • , Chokri Mraidha
  • *Autor correspondiente de este trabajo

Producción científica: Capítulo del libro/informe/acta de congresoContribución a la conferenciarevisión exhaustiva

Resumen

This paper proposes Stream-based Active Learning method using Adaptive uncertainty and Diversity Thresholds (SALAT), which aims to reduce the amount of data required for labeling in stream-based data settings while accounting for concept drift. The proposed method uses adaptive uncertainty and diversity thresholds, which are monitored by a sliding window of data selection history to ensure that the data selection is neither too conservative nor too aggressive. The effectiveness of SALAT is validated on the MNIST and FashionMNIST datasets, where it achieves similar performance to the baseline with fewer training samples. The experiments also confirm the hypothesis that a fixed threshold approach is deficient, and an adaptive threshold significantly reduces the data requirement to reach an adequate level of performance. The paper shows that SRLRT can handle concept drift effectively, making it applicable to various real-world applications such as text classification, image classification, and speech recognition.

Idioma originalInglés
Título de la publicación alojadaProceedings of the 2023 IEEE 33rd International Workshop on Machine Learning for Signal Processing, MLSP 2023
EditoresDanilo Comminiello, Michele Scarpiniti
EditorialIEEE Computer Society
ISBN (versión digital)9798350324112
DOI
EstadoPublicada - 2023
Publicado de forma externa
Evento33rd IEEE International Workshop on Machine Learning for Signal Processing, MLSP 2023 - Rome, Italia
Duración: 17 sept 202320 sept 2023

Serie de la publicación

NombreIEEE International Workshop on Machine Learning for Signal Processing, MLSP
Volumen2023-September
ISSN (versión impresa)2161-0363
ISSN (versión digital)2161-0371

Conferencia

Conferencia33rd IEEE International Workshop on Machine Learning for Signal Processing, MLSP 2023
País/TerritorioItalia
CiudadRome
Período17/09/2320/09/23

ODS de las Naciones Unidas

Este resultado contribuye a los siguientes Objetivos de Desarrollo Sostenible

  1. ODS 4: Educación de calidad
    ODS 4: Educación de calidad

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