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  4. Hierarchical Model Trees for Semantic Summarization and Adaptive Inference
 
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2025
Conference Paper
Title

Hierarchical Model Trees for Semantic Summarization and Adaptive Inference

Abstract
Learning systems must handle scale while remaining context-aware, adaptive, and interpretable. Symbolic methods are precise but rigid; neural models generalize but obscure structure. We propose a hybrid hierarchical system that organizes data into a dynamic tree of contextual models. Each node maintains both explicit (e.g., topic/cluster signals) and latent (neural) representations, adapting the hybridization locally. The system refines itself via border-sensitive updates and localized restructuring, avoiding costly global retraining. On Reddit and Cora, our approach outperforms strong baselines for classification and recommendation, with up to 47 % F1 and 150 % MRR improvements across epochs. The result is an efficient, interpretable framework that integrates symbolic and neural reasoning to build and maintain adaptive context at scale.
Author(s)
Foucard, Damien
Technische Universität Berlin  
Martini, Moneer
Bender, Lukas
Mainwork
IEEE International Conference on Big Data, BigData 2025  
Conference
International Conference on Big Data 2025  
DOI
10.1109/BigData66926.2025.11402440
Language
English
Fraunhofer-Institut für Offene Kommunikationssysteme FOKUS  
Keyword(s)
  • Large language models

  • Incremental learning

  • Reinforcement learning

  • Tree data structures

  • Gaussian distribution

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