Events
Content Meeting Session – 3rd September 2024
🌐 Discussion Topic:
A Comparison of Correspondence Analysis with PMI-Based Word Embedding Methods
🔍 Overview of the Presentation
This session explored the integration of Correspondence Analysis (CA) with popular PMI-based word embedding techniques like GloVe and Word2Vec. The research presented a novel link between CA and PMI, demonstrating how square-root and root-root transformations can significantly improve the performance of CA for NLP tasks, particularly word similarity evaluations. The paper also highlighted how these transformations help mitigate extreme values in word-context matrices.
🚨 Key Insights:
- Enhanced performance of CA using square-root and root-root transformations
- Theoretical relationships between CA and PMI-based methods
- Improved word embeddings through dimensionality reduction
🌟 Presenter:
This insightful session was led by Qianqian Qi, sharing valuable insights from her research. Peter van der Heijden, a co-author of the paper, also took part in the meeting, providing his expertise and enriching the discussion.
For further information, you can review the full paper here.