English

Quantum diffusion map for nonlinear dimensionality reduction

Quantum Physics 2021-11-24 v2 Machine Learning

Abstract

Inspired by random walk on graphs, diffusion map (DM) is a class of unsupervised machine learning that offers automatic identification of low-dimensional data structure hidden in a high-dimensional dataset. In recent years, among its many applications, DM has been successfully applied to discover relevant order parameters in many-body systems, enabling automatic classification of quantum phases of matter. However, classical DM algorithm is computationally prohibitive for a large dataset, and any reduction of the time complexity would be desirable. With a quantum computational speedup in mind, we propose a quantum algorithm for DM, termed quantum diffusion map (qDM). Our qDM takes as an input NN classical data vectors, performs an eigen-decomposition of the Markov transition matrix in time O(log3N)O(\log^3 N), and classically constructs the diffusion map via the readout (tomography) of the eigenvectors, giving a total expected runtime proportional to N2polylogNN^2 \text{polylog}\, N. Lastly, quantum subroutines in qDM for constructing a Markov transition matrix, and for analyzing its spectral properties can also be useful for other random walk-based algorithms.

Keywords

Cite

@article{arxiv.2106.07302,
  title  = {Quantum diffusion map for nonlinear dimensionality reduction},
  author = {Apimuk Sornsaeng and Ninnat Dangniam and Pantita Palittapongarnpim and Thiparat Chotibut},
  journal= {arXiv preprint arXiv:2106.07302},
  year   = {2021}
}

Comments

13 pages, 4 figures