Uncertainty Estimates for Ordinal Embeddings
Machine Learning
2019-06-28 v1 Machine Learning
Abstract
To investigate objects without a describable notion of distance, one can gather ordinal information by asking triplet comparisons of the form "Is object closer to or is closer to ?" In order to learn from such data, the objects are typically embedded in a Euclidean space while satisfying as many triplet comparisons as possible. In this paper, we introduce empirical uncertainty estimates for standard embedding algorithms when few noisy triplets are available, using a bootstrap and a Bayesian approach. In particular, simulations show that these estimates are well calibrated and can serve to select embedding parameters or to quantify uncertainty in scientific applications.
Cite
@article{arxiv.1906.11655,
title = {Uncertainty Estimates for Ordinal Embeddings},
author = {Michael Lohaus and Philipp Hennig and Ulrike von Luxburg},
journal= {arXiv preprint arXiv:1906.11655},
year = {2019}
}
Comments
16 pages