Publications des scientifiques de l'IRD

Personnaz A., Amer-Yahia S., Berti-Equille Laure, Fabricius M., Subramanian S. (2021). Dora the explorer : exploring very large data with interactive deep reinforcement learning authors' copy [demonstration paper]. In : CIKM'21 : proceedings of the 30th ACM International Conference on Information and Knowledge Management. New York : ACM, 4769-4773. CIKM'21.International Conference on Information and Knowledge Management, 30., [En ligne] (AUS), 2021/11/01-05. ISBN 978-1-4503-8446-9.

Titre du document
Dora the explorer : exploring very large data with interactive deep reinforcement learning authors' copy [demonstration paper]
Année de publication
2021
Type de document
Partie d'ouvrage
Auteurs
Personnaz A., Amer-Yahia S., Berti-Equille Laure, Fabricius M., Subramanian S.
In
CIKM'21 : proceedings of the 30th ACM International Conference on Information and Knowledge Management
Source
New York : ACM, 2021, 4769-4773 ISBN 978-1-4503-8446-9
Colloque
CIKM'21.International Conference on Information and Knowledge Management, 30., [En ligne] (AUS), 2021/11/01-05
We demonstrate dora the explorer, a system that guides users in finding items of interest in a very large data set. dora the explorer provides users with the full spectrum of exploration modes and is driven by Data Familiarity or Curiosity, as well as User Interventions. dora the explorer is able to handle data and search scenario complexity, i.e., the difficulty to find scattered/clustered individual records in the data set, and user ability to express what s/he needs. dora the explorer relies on Deep Reinforcement Learning that combines intrinsic (curiosity) and extrinsic (familiarity) rewards. dora's main goal is to support scientific discovery from data. We describe the system architecture and illustrate it with three demonstration scenarios on a 2.6 million galaxies SDSS, a large sky survey data set1. A video of dora the explorer is available at https://bit.ly/dora-demo, the code https://github.com/apersonnaz/rl-guided-galaxy-exploration, and the application at https://bit.ly/dora-application.
Plan de classement
Sciences fondamentales / Techniques d'analyse et de recherche [020] ; Informatique [122]
Identifiant IRD
fdi:010083557
Contact