Topological Learning for Motion Data via Mixed Coordinates
Abstract
Topology can extract the structural information in a dataset efficiently. In this paper, we attempt to incorporate topological information into a multiple output Gaussian process model for transfer learning purposes. To achieve this goal, we extend the framework of circular coordinates into a novel framework of mixed valued coordinates to take linear trends in the time series into consideration. One of the major challenges to learn from multiple time series effectively via a multiple output Gaussian process model is constructing a functional kernel. We propose to use topologically induced clustering to construct a cluster based kernel in a multiple output Gaussian process model. This kernel not only incorporates the topological structural information, but also allows us to put forward a unified framework using topological information in time and motion series.
Cite
@article{arxiv.2310.19960,
title = {Topological Learning for Motion Data via Mixed Coordinates},
author = {Hengrui Luo and Jisu Kim and Alice Patania and Mikael Vejdemo-Johansson},
journal= {arXiv preprint arXiv:2310.19960},
year = {2023}
}
Comments
7 pages, 4 figures