Building Human-like Communicative Intelligence: A Grounded Perspective
Marina Dubova

TL;DR
This paper advocates for a grounded, embodied approach to developing human-like communicative AI, emphasizing real-world interaction, active exploration, and environmental feedback to overcome current limitations in language generalization and semantic understanding.
Contribution
It critiques existing cognitively-inspired AI paradigms and proposes a grounded, 4E cognition-based framework with concrete components for advancing linguistic intelligence in machines.
Findings
Grounded AI can improve language generalization and semantic understanding.
Active exploration and embodiment are crucial for naturalistic language development.
Environmental feedback enhances adaptive language learning in AI systems.
Abstract
Modern Artificial Intelligence (AI) systems excel at diverse tasks, from image classification to strategy games, even outperforming humans in many of these domains. After making astounding progress in language learning in the recent decade, AI systems, however, seem to approach the ceiling that does not reflect important aspects of human communicative capacities. Unlike human learners, communicative AI systems often fail to systematically generalize to new data, suffer from sample inefficiency, fail to capture common-sense semantic knowledge, and do not translate to real-world communicative situations. Cognitive Science offers several insights on how AI could move forward from this point. This paper aims to: (1) suggest that the dominant cognitively-inspired AI directions, based on nativist and symbolic paradigms, lack necessary substantiation and concreteness to guide progress in…
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