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Knowledge Graphs as Structured Memory for Embedding Spaces: From Training Clusters to Explainable Inference

Published: November 18, 2025 | arXiv ID: 2511.14961v1

By: Artur A. Oliveira , Mateus Espadoto , Roberto M. Cesar and more

Potential Business Impact:

Helps computers learn from fewer examples.

Business Areas:
Semantic Search Internet Services

We introduce Graph Memory (GM), a structured non-parametric framework that augments embedding-based inference with a compact, relational memory over region-level prototypes. Rather than treating each training instance in isolation, GM summarizes the embedding space into prototype nodes annotated with reliability indicators and connected by edges that encode geometric and contextual relations. This design unifies instance retrieval, prototype-based reasoning, and graph-based label propagation within a single inductive model that supports both efficient inference and faithful explanation. Experiments on synthetic and real datasets including breast histopathology (IDC) show that GM achieves accuracy competitive with $k$NN and Label Spreading while offering substantially better calibration and smoother decision boundaries, all with an order of magnitude fewer samples. By explicitly modeling reliability and relational structure, GM provides a principled bridge between local evidence and global consistency in non-parametric learning.

Country of Origin
🇧🇷 Brazil

Page Count
11 pages

Category
Computer Science:
Machine Learning (CS)