A short letter on the dot product between rotated Fourier transforms

07/24/2020
by   Aaron R. Voelker, et al.
0

Spatial Semantic Pointers (SSPs) have recently emerged as a powerful tool for representing and transforming continuous space, with numerous applications to cognitive modelling and deep learning. Fundamental to SSPs is the notion of "similarity" between vectors representing different points in n-dimensional space – typically the dot product or cosine similarity between vectors with rotated unit-length complex coefficients in the Fourier domain. The similarity measure has previously been conjectured to be a Gaussian function of Euclidean distance. Contrary to this conjecture, we derive a simple trigonometric formula relating spatial displacement to similarity, and prove that, in the case where the Fourier coefficients are uniform i.i.d., the expected similarity is a product of normalized sinc functions: ∏_k=1^nsinc( a_k ), where 𝐚∈ℝ^n is the spatial displacement between the two n-dimensional points. This establishes a direct link between space and the similarity of SSPs, which in turn helps bolster a useful mathematical framework for architecting neural networks that manipulate spatial structures.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/04/2017

The Size of a Hyperball in a Conceptual Space

The cognitive framework of conceptual spaces [3] provides geometric mean...
research
05/19/2019

Correlation Coefficients and Semantic Textual Similarity

A large body of research into semantic textual similarity has focused on...
research
10/19/2021

Generalised Wendland functions for the sphere

In this paper we compute the spherical Fourier expansions coefficients f...
research
07/30/2019

On an optimal quadrature formula for approximation of Fourier integrals in the space L_2^(1)

This paper deals with the construction of an optimal quadrature formula ...
research
10/01/2020

Learning Set Functions that are Sparse in Non-Orthogonal Fourier Bases

Many applications of machine learning on discrete domains, such as learn...
research
07/21/2021

How many Fourier coefficients are needed?

We are looking at families of functions or measures on the torus (in dim...
research
06/16/2019

A General Interpretation of Deep Learning by Affine Transform and Region Dividing without Mutual Interference

This paper mainly deals with the "black-box" problem of deep learning co...

Please sign up or login with your details

Forgot password? Click here to reset