KR2026Proceedings of the 23rd International Conference on Principles of Knowledge Representation and ReasoningProceedings of the 23rd International Conference on Principles of Knowledge Representation and Reasoning

Lisbon, Portugal. July 20-23, 2026.

Edited by

ISSN: 2334-1033
ISBN: 978-1-956792-18-8

Sponsored by
Published by

Copyright © 2026 International Joint Conferences on Artificial Intelligence Organization

BoxLitE: A Faithful Knowledge Base Embedding Based on Convex Optimization

  1. Bruno F. Lourenço(The Institute of Statistical Mathematics)
  2. Hesham Morgan(TU Wien)
  3. Ana Ozaki(University of Oslo)
  4. Aleksandar Pavlović(University of Applied Science FH Campus Wien)
  5. Emanuel Sallinger(TU Wien)

Keywords

  1. null-Knowledge Base Embeddings
  2. null-Description Logic
  3. null-Convex Optimization
  4. null-Faithfulness

Abstract

Knowledge base (KB) embeddings aim at combining the capability of classical knowledge graph embeddings to generalize the information present in facts, the ABox, with conceptual

knowledge represented in an ontology language, the TBox. Several authors have recently explored the idea of mapping concepts to convex regions in a vector space. This is useful

to represent hierarchies, typically present in TBoxes, since more general concepts can be mapped to larger regions, containing those regions associated with more specific concepts.

However, the power of convexity is rarely leveraged during the actual learning tasks. Here, we introduce BoxLitE, a KB embedding model for DL-Lite that allows for convex optimization. We show that for any satisfiable DL-Lite KB, there is a BoxLitE embedding that is a weakly faithful model. As a proof of concept, we show how to formulate the KB embedding task as a convex optimization problem and how to obtain embeddings with such desirable faithfulness property.