TY - JOUR
T1 - From Continuous Observations to Symbolic Concepts
T2 - A Discrimination-Based Strategy for Grounded Concept Learning.
AU - Nevens, Jens
AU - Eecke, Paul Van
AU - Beuls, Katrien
N1 - Funding Information:
Funding. The research reported in this paper was funded by the European Union's Horizon 2020 research and innovation programme under grant agreement no. 732942 and the Flemish Government under the Onderzoeksprogramma Artificiële Intelligentie (AI) Vlaanderen programme. JN was supported by the Research Foundation Flanders (FWO) through grant 1SB6219N.
Publisher Copyright:
© Copyright © 2020 Nevens, Van Eecke and Beuls.
PY - 2020/6/26
Y1 - 2020/6/26
N2 - Autonomous agents perceive the world through streams of continuous sensori-motor data. Yet, in order to reason and communicate about their environment, agents need to be able to distill meaningful concepts from their raw observations. Most current approaches that bridge between the continuous and symbolic domain are using deep learning techniques. While these approaches often achieve high levels of accuracy, they rely on large amounts of training data, and the resulting models lack transparency, generality, and adaptivity. In this paper, we introduce a novel methodology for grounded concept learning. In a tutor-learner scenario, the method allows an agent to construct a conceptual system in which meaningful concepts are formed by discriminative combinations of prototypical values on human-interpretable feature channels. We evaluate our approach on the CLEVR dataset, using features that are either simulated or extracted using computer vision techniques. Through a range of experiments, we show that our method allows for incremental learning, needs few data points, and that the resulting concepts are general enough to be applied to previously unseen objects and can be combined compositionally. These properties make the approach well-suited to be used in robotic agents as the module that maps from continuous sensory input to grounded, symbolic concepts that can then be used for higher-level reasoning tasks.
AB - Autonomous agents perceive the world through streams of continuous sensori-motor data. Yet, in order to reason and communicate about their environment, agents need to be able to distill meaningful concepts from their raw observations. Most current approaches that bridge between the continuous and symbolic domain are using deep learning techniques. While these approaches often achieve high levels of accuracy, they rely on large amounts of training data, and the resulting models lack transparency, generality, and adaptivity. In this paper, we introduce a novel methodology for grounded concept learning. In a tutor-learner scenario, the method allows an agent to construct a conceptual system in which meaningful concepts are formed by discriminative combinations of prototypical values on human-interpretable feature channels. We evaluate our approach on the CLEVR dataset, using features that are either simulated or extracted using computer vision techniques. Through a range of experiments, we show that our method allows for incremental learning, needs few data points, and that the resulting concepts are general enough to be applied to previously unseen objects and can be combined compositionally. These properties make the approach well-suited to be used in robotic agents as the module that maps from continuous sensory input to grounded, symbolic concepts that can then be used for higher-level reasoning tasks.
KW - CLEVR
KW - emergent communication
KW - grounded concept learning
KW - hybrid AI
KW - language games
UR - http://www.scopus.com/inward/record.url?scp=85087782839&partnerID=8YFLogxK
U2 - 10.3389/frobt.2020.00084
DO - 10.3389/frobt.2020.00084
M3 - Article
SN - 2296-9144
VL - 7
JO - Frontiers in Robotics and AI
JF - Frontiers in Robotics and AI
M1 - 84
ER -