MLLGSep 15, 2023

Conditional validity of heteroskedastic conformal regression

arXiv:2309.08313v26 citationsh-index: 72
Originality Incremental advance
AI Analysis

This work addresses the need for more reliable prediction intervals in regression with varying noise, though it appears incremental by building on existing conformal prediction techniques.

The paper tackles the problem of non-adaptive prediction intervals in heteroskedastic regression by exploring methods like normalized and Mondrian conformal prediction to improve conditional validity, presenting theoretical and experimental comparisons.

Conformal prediction, and split conformal prediction as a specific implementation, offer a distribution-free approach to estimating prediction intervals with statistical guarantees. Recent work has shown that split conformal prediction can produce state-of-the-art prediction intervals when focusing on marginal coverage, i.e. on a calibration dataset the method produces on average prediction intervals that contain the ground truth with a predefined coverage level. However, such intervals are often not adaptive, which can be problematic for regression problems with heteroskedastic noise. This paper tries to shed new light on how prediction intervals can be constructed, using methods such as normalized and Mondrian conformal prediction, in such a way that they adapt to the heteroskedasticity of the underlying process. Theoretical and experimental results are presented in which these methods are compared in a systematic way. In particular, it is shown how the conditional validity of a chosen conformal predictor can be related to (implicit) assumptions about the data-generating distribution.

Code Implementations1 repo
Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes