DS1 spectrogram: Is Cosine-Similarity of Embeddings Really About Similarity?

Is Cosine-Similarity of Embeddings Really About Similarity?

March 8, 20242403.05440

Authors

Chaitanya Ekanadham,Nathan Kallus,Harald Steck

Abstract

Cosine-similarity is the cosine of the angle between two vectors, or equivalently the dot product between their normalizations. A popular application is to quantify semantic similarity between high-dimensional objects by applying cosine-similarity to a learned low-dimensional feature embedding.

This can work better but sometimes also worse than the unnormalized dot-product between embedded vectors in practice. To gain insight into this empirical observation, we study embeddings derived from regularized linear models, where closed-form solutions facilitate analytical insights.

We derive analytically how cosine-similarity can yield arbitrary and therefore meaningless `similarities.' For some linear models the similarities are not even unique, while for others they are implicitly controlled by the regularization. We discuss implications beyond linear models: a combination of different regularizations are employed when learning deep models; these have implicit and unintended effects when taking cosine-similarities of the resulting embeddings, rendering results opaque and possibly arbitrary.

Based on these insights, we caution against blindly using cosine-similarity and outline alternatives.

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