LGFeb 12, 2024

Predictive Churn with the Set of Good Models

arXiv:2402.07745v215 citationsh-index: 20
Originality Incremental advance
AI Analysis

It bridges fairness/transparency research with practical deployment concerns, addressing a translational gap in ML.

This paper connects predictive multiplicity (conflicting predictions from similarly-performing models) and predictive churn (prediction changes after model updates), showing they are fundamentally related through theoretical and empirical analysis.

Issues can arise when research focused on fairness, transparency, or safety is conducted separately from research driven by practical deployment concerns and vice versa. This separation creates a growing need for translational work that bridges the gap between independently studied concepts that may be fundamentally related. This paper explores connections between two seemingly unrelated concepts of predictive inconsistency that share intriguing parallels. The first, known as predictive multiplicity, occurs when models that perform similarly (e.g., nearly equivalent training loss) produce conflicting predictions for individual samples. This concept is often emphasized in algorithmic fairness research as a means of promoting transparency in ML model development. The second concept, predictive churn, examines the differences in individual predictions before and after model updates, a key challenge in deploying ML models in consumer-facing applications. We present theoretical and empirical results that uncover links between these previously disconnected concepts.

Foundations

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

Your Notes