Result: AdaGram in Python: An AI Framework for Multi-Sense Embedding in Text and Scientific Formulas.

Title:
AdaGram in Python: An AI Framework for Multi-Sense Embedding in Text and Scientific Formulas.
Source:
Mathematics (2227-7390); Jul2025, Vol. 13 Issue 14, p2241, 27p
Database:
Complementary Index

Further Information

The Adaptive Skip-gram (AdaGram) algorithm extends traditional word embeddings by learning multiple vector representations per word, enabling the capture of contextual meanings and polysemy. Originally implemented in Julia, AdaGram has seen limited adoption due to ecosystem fragmentation and the comparative scarcity of Julia's machine learning tooling compared to Python's mature frameworks. In this work, we present a Python-based reimplementation of AdaGram that facilitates broader integration with modern machine learning tools. Our implementation expands the model's applicability beyond natural language, enabling the analysis of scientific notation—particularly chemical and physical formulas encoded in LaTeX. We detail the algorithmic foundations, preprocessing pipeline, and hyperparameter configurations needed for interdisciplinary corpora. Evaluations on real-world texts and LaTeX-encoded formulas demonstrate AdaGram's effectiveness in unsupervised word sense disambiguation. Comparative analyses highlight the importance of corpus design and parameter tuning. This implementation opens new applications in formula-aware literature search engines, ambiguity reduction in automated scientific summarization, and cross-disciplinary concept alignment. [ABSTRACT FROM AUTHOR]

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