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From Continual Learning to Causal Discovery in Robotics

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conference contribution
posted on 2024-10-23, 11:11 authored by Luca Castri, Sariah Mghames, Nicola BellottoNicola Bellotto

Reconstructing accurate causal models of dynamic systems from time-series of sensor data is a key problem in many real-world scenarios. In this paper, we present an overview based on our experience about practical challenges that the causal analysis encounters when applied to autonomous robots and how Continual Learning~(CL) could help to overcome them. We propose a possible way to leverage the CL paradigm to make causal discovery feasible for robotics applications where the computational resources are limited, while at the same time exploiting the robot as an active agent that helps to increase the quality of the reconstructed causal models.

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School affiliated with

  • School of Computer Science (Research Outputs)

Publication Title

Proceedings of The First AAAI Bridge Program on Continual Causality

Volume

208

Pages/Article Number

85-91

Date Submitted

2023-05-23

Date Accepted

2022-12-05

Date of First Publication

2023-01-01

Date of Final Publication

2023-01-01

Event Name

AAAI Bridge Program “Continual Causality”

Event Dates

7-8 February 2023

Date Document First Uploaded

2023-01-13

ePrints ID

53116

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