Keywords: representational geometry, shape metrics, dissimilarity metrics, optimal transport, representational similarity measures
Abstract: A multitude of (dis)similarity measures between neural networks representations have been proposed, resulting in a fragmented research landscape. Most (dis)similarity measures fall into one of two categories. First, measures such as linear regression, canonical correlations analysis (CCA), and shape distances, all learn explicit mappings between neural units to quantify similarity while accounting for expected invariances. Second, measures such as representational similarity analysis (RSA), centered kernel alignment (CKA), and normalized Bures similarity (NBS) all quantify similarity in summary statistics that are already invariant to such symmetries (e.g. by comparing stimulus-by-stimulus kernel matrices). Here, we take steps towards unifying these two broad categories of methods by observing that the cosine of the Riemannian shape distance (from category 1) is equal to NBS (from category 2). We explore how this connection leads to new interpretations of shape distances and NBS, and draw contrasts of these measures with CKA, a popular similarity measure in the deep learning literature.
Track: Proceedings Track
Submission Number: 71
Loading