Approximating Higher-Order Distances Using Random Projections

03/15/2012
by   Ping Li, et al.
0

We provide a simple method and relevant theoretical analysis for efficiently estimating higher-order lp distances. While the analysis mainly focuses on l4, our methodology extends naturally to p = 6,8,10..., (i.e., when p is even). Distance-based methods are popular in machine learning. In large-scale applications, storing, computing, and retrieving the distances can be both space and time prohibitive. Efficient algorithms exist for estimating lp distances if 0 < p <= 2. The task for p > 2 is known to be difficult. Our work partially fills this gap.

READ FULL TEXT
research
02/06/2021

Understanding Higher-order Structures in Evolving Graphs: A Simplicial Complex based Kernel Estimation Approach

Dynamic graphs are rife with higher-order interactions, such as co-autho...
research
08/02/2019

Network Shrinkage Estimation

Networks are a natural representation of complex systems across the scie...
research
12/12/2018

Massively scalable Sinkhorn distances via the Nyström method

The Sinkhorn distance, a variant of the Wasserstein distance with entrop...
research
06/15/2020

Augmented Sliced Wasserstein Distances

While theoretically appealing, the application of the Wasserstein distan...
research
10/12/2020

k-simplex2vec: a simplicial extension of node2vec

We present a novel method of associating Euclidean features to simplicia...
research
11/23/2020

Functions that Preserve Manhattan Distances

What functions, when applied to the pairwise Manhattan distances between...

Please sign up or login with your details

Forgot password? Click here to reset