
Premium content
Access to this content requires a subscription. You must be a premium user to view this content.
Monthly subscription - $9.99Pay per view - $4.99Access through your institutionLogin with Underline account
Need help?
Contact us
VIDEO DOI: https://doi.org/10.48448/5071-xy89
poster
Isotropy, Clusters, and Classifiers
keywords:
linear classification
isotropy
clustering
Whether embedding spaces use all their dimensions equally, i.e., whether they are isotropic, has been a recent subject of discussion. Evidence has been accrued both for and against enforcing isotropy in embedding spaces. In the present paper, we stress that isotropy imposes requirements on the embedding space that are not compatible with the presence of clusters—which also negatively impacts linear classification objectives. We demonstrate this fact both empirically and mathematically and use it to shed light on previous results from the literature.