Paper Detail

CobwebTM: Probabilistic Concept Formation for Lifelong and Hierarchical Topic Modeling

Karthik Singaravadivelan, Anant Gupta, Zekun Wang, Christopher MacLellan, Christopher J. MacLellan

arxiv Score 14.0

Published 2026-04-15 · First seen 2026-04-17

Research Track A

Abstract

Topic modeling seeks to uncover latent semantic structure in text corpora with minimal supervision. Neural approaches achieve strong performance but require extensive tuning and struggle with lifelong learning due to catastrophic forgetting and fixed capacity, while classical probabilistic models lack flexibility and adaptability to streaming data. We introduce \textsc{CobwebTM}, a low-parameter lifelong hierarchical topic model based on incremental probabilistic concept formation. By adapting the Cobweb algorithm to continuous document embeddings, \textsc{CobwebTM} constructs semantic hierarchies online, enabling unsupervised topic discovery, dynamic topic creation, and hierarchical organization without predefining the number of topics. Across diverse datasets, \textsc{CobwebTM} achieves strong topic coherence, stable topics over time, and high-quality hierarchies, demonstrating that incremental symbolic concept formation combined with pretrained representations is an efficient approach to topic modeling.

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BibTeX

@article{singaravadivelan2026cobwebtm,
  title = {CobwebTM: Probabilistic Concept Formation for Lifelong and Hierarchical Topic Modeling},
  author = {Karthik Singaravadivelan and Anant Gupta and Zekun Wang and Christopher MacLellan and Christopher J. MacLellan},
  year = {2026},
  abstract = {Topic modeling seeks to uncover latent semantic structure in text corpora with minimal supervision. Neural approaches achieve strong performance but require extensive tuning and struggle with lifelong learning due to catastrophic forgetting and fixed capacity, while classical probabilistic models lack flexibility and adaptability to streaming data. We introduce \textbackslash{}textsc\{CobwebTM\}, a low-parameter lifelong hierarchical topic model based on incremental probabilistic concept formation. By adapting t},
  url = {https://arxiv.org/abs/2604.14489},
  keywords = {cs.CL},
  eprint = {2604.14489},
  archiveprefix = {arXiv},
}

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