On Temperature-Constrained Non-Deterministic Machine Translation: Potential and Evaluation
Weichuan Wang, Mingyang Liu, Linqi Song, Chen Ma

TL;DR
This paper explores temperature-constrained non-deterministic machine translation, revealing its potential to address multimodality issues, while also highlighting new evaluation challenges and proposing a robust selection strategy.
Contribution
It systematically evaluates ND-MT, identifies its advantages and challenges, and introduces ExpectoSample for reliable system evaluation and selection.
Findings
ND-MT can better address multimodality in translation.
Evaluation metrics are inconsistent for ND-MT, affected by the Buckets Effect.
ExpectoSample improves robustness in ND-MT system selection.
Abstract
In recent years, the non-deterministic properties of language models have garnered considerable attention and have shown a significant influence on real-world applications. However, such properties remain under-explored in machine translation (MT), a complex, non-deterministic NLP task. In this study, we systematically evaluate modern MT systems and identify temperature-constrained Non-Deterministic MT (ND-MT) as a distinct phenomenon. Additionally, we demonstrate that ND-MT exhibits significant potential in addressing the multimodality issue that has long challenged MT research and provides higher-quality candidates than Deterministic MT (D-MT) under temperature constraints. However, ND-MT introduces new challenges in evaluating system performance. Specifically, the evaluation framework designed for D-MT fails to yield consistent evaluation results when applied to ND-MT. We further…
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