Concept Curve Paradigm - A new approach to Knowledge representation in the AI era

Read the full article See related articles

Listed in

This article is not in any list yet, why not save it to one of your lists.
Log in to save this article

Abstract

Current knowledge representation techniques in Artificial Intelligence, particularly high dimensional embeddings, face significant limitations when handling complex, structured information like extensive narratives or large bodies of knowledge. Representing rich semantic structures as single vectors often leads to information compression, loss of meaning, and potential hallucinations in generative models. This paper introduces the Concept Curve Paradigm, a novel approach that redefines knowledge representation by modeling concepts, stories, and reasoning sequences not as isolated points, but as dynamic networks or trajectories of interrelated concepts within a semantic space. This new paradigm preserves the inherent structure and relationships within information, overcoming the constraints of static embeddings. We detail Concept Curve Embeddings Indexation (CC-EI), a practical method derived from this paradigm, which indexes information fragments based on their key conceptual interconnections rather than compressing them into dense vectors. The Concept Curve approach offers numerous benefits, including eliminating redundancy, enabling flexible conceptual connections, enhancing AI reasoning, facilitating unlimited context input and output, improving computational efficiency, and potentially shifting AI bottlenecks away from compute constraints. Overall, the Concept Curve Paradigm offers a new foundation for more scalable, interpretable, and capable AI systems. All methods described in this paper are publicly implemented and freely available through open source code and documentation.

Article activity feed