Approximating Dynamic Time Warping Distance Between Run-Length Encoded Strings

07/02/2022
by   Zoe Xi, et al.
0

Dynamic Time Warping (DTW) is a widely used similarity measure for comparing strings that encode time series data, with applications to areas including bioinformatics, signature verification, and speech recognition. The standard dynamic-programming algorithm for DTW takes O(n^2) time, and there are conditional lower bounds showing that no algorithm can do substantially better. In many applications, however, the strings x and y may contain long runs of repeated letters, meaning that they can be compressed using run-length encoding. A natural question is whether the DTW-distance between these compressed strings can be computed efficiently in terms of the lengths k and ℓ of the compressed strings. Recent work has shown how to achieve O(kℓ^2 + ℓ k^2) time, leaving open the question of whether a near-quadratic Õ(kℓ)-time algorithm might exist. We show that, if a small approximation loss is permitted, then a near-quadratic time algorithm is indeed possible: our algorithm computes a (1 + ϵ)-approximation for DTW(x, y) in Õ(kℓ / ϵ^3) time, where k and ℓ are the number of runs in x and y. Our algorithm allows for DTW to be computed over any metric space (Σ, δ) in which distances are O(log(n))-bit integers. Surprisingly, the algorithm also works even if δ does not induce a metric space on Σ (e.g., δ need not satisfy the triangle inequality).

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset
Success!
Error Icon An error occurred

Sign in with Google

×

Use your Google Account to sign in to DeepAI

×

Consider DeepAI Pro