LGSTMLDec 2, 2025

Hypothesis Testing for Generalized Thurstone Models

arXiv:2512.02912v13 citationsh-index: 14ICML
Originality Incremental advance
AI Analysis

This addresses the fundamental testing problem for Thurstone models, which is incremental as it builds on prior estimation work.

The authors tackled the problem of determining if pairwise comparison data comes from a generalized Thurstone model by developing a hypothesis testing framework, resulting in a critical threshold scaling as Θ((nk)^{-1/2}) for complete graphs and establishing error bounds.

In this work, we develop a hypothesis testing framework to determine whether pairwise comparison data is generated by an underlying \emph{generalized Thurstone model} $\mathcal{T}_F$ for a given choice function $F$. While prior work has predominantly focused on parameter estimation and uncertainty quantification for such models, we address the fundamental problem of minimax hypothesis testing for $\mathcal{T}_F$ models. We formulate this testing problem by introducing a notion of separation distance between general pairwise comparison models and the class of $\mathcal{T}_F$ models. We then derive upper and lower bounds on the critical threshold for testing that depend on the topology of the observation graph. For the special case of complete observation graphs, this threshold scales as $Θ((nk)^{-1/2})$, where $n$ is the number of agents and $k$ is the number of comparisons per pair. Furthermore, we propose a hypothesis test based on our separation distance, construct confidence intervals, establish time-uniform bounds on the probabilities of type I and II errors using reverse martingale techniques, and derive minimax lower bounds using information-theoretic methods. Finally, we validate our results through experiments on synthetic and real-world datasets.

Foundations

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

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