Isotropy Matters: Soft-ZCA Whitening of Embeddings for Semantic Code Search

Diera, Andor, Galke, Lukas, Scherp, Ansgar

arXiv.org Artificial Intelligence 

Our study investigates the impact of isotropy on semantic code search performance and explores post-processing techniques to mitigate this issue. We analyze various code language models, examine isotropy in their embedding spaces, and its influence on search effectiveness. We propose a modified ZCA whitening technique to control isotropy levels in embeddings. Our results demonstrate that Soft-ZCA whitening improves the performance of pre-trained code language models and can complement contrastive fine-tuning.