Computer Science > Machine Learning
[Submitted on 22 Sep 2021 (v1), last revised 7 Mar 2022 (this version, v5)]
Title:The Curse Revisited: When are Distances Informative for the Ground Truth in Noisy High-Dimensional Data?
View PDFAbstract:Distances between data points are widely used in machine learning applications. Yet, when corrupted by noise, these distances -- and thus the models based upon them -- may lose their usefulness in high dimensions. Indeed, the small marginal effects of the noise may then accumulate quickly, shifting empirical closest and furthest neighbors away from the ground truth. In this paper, we exactly characterize such effects in noisy high-dimensional data using an asymptotic probabilistic expression. Previously, it has been argued that neighborhood queries become meaningless and unstable when distance concentration occurs, which means that there is a poor relative discrimination between the furthest and closest neighbors in the data. However, we conclude that this is not necessarily the case when we decompose the data in a ground truth -- which we aim to recover -- and noise component. More specifically, we derive that under particular conditions, empirical neighborhood relations affected by noise are still likely to be truthful even when distance concentration occurs. We also include thorough empirical verification of our results, as well as interesting experiments in which our derived 'phase shift' where neighbors become random or not turns out to be identical to the phase shift where common dimensionality reduction methods perform poorly or well for recovering low-dimensional reconstructions of high-dimensional data with dense noise.
Submission history
From: Robin Vandaele [view email][v1] Wed, 22 Sep 2021 08:04:15 UTC (395 KB)
[v2] Wed, 1 Dec 2021 15:01:57 UTC (382 KB)
[v3] Thu, 16 Dec 2021 08:00:18 UTC (640 KB)
[v4] Mon, 14 Feb 2022 13:01:37 UTC (639 KB)
[v5] Mon, 7 Mar 2022 11:57:59 UTC (639 KB)
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