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AutoML-Guided Fusion of Entity and LLM-Based Representations for Document Classification

  • 2025
  • OriginalPaper
  • Chapter
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Abstract

The chapter delves into the evolution of document representation techniques, from early methods like bag-of-words to advanced approaches such as Doc2Vec and LLM2Vec. It highlights the limitations of high-dimensional representations and introduces BabelFusion, a method that fuses entity and LLM-based representations using AutoML. The author discusses the benefits of low-dimensional projection and presents experimental results demonstrating the superior performance of BabelFusion in various classification tasks.

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Title
AutoML-Guided Fusion of Entity and LLM-Based Representations for Document Classification
Authors
Boshko Koloski
Senja Pollak
Roberto Navigli
Blaž Škrlj
Copyright Year
2025
DOI
https://doi.org/10.1007/978-3-031-78977-9_7
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