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Pushing the right buttons: adversarial evaluation of quality estimation
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In: Proceedings of the Sixth Conference on Machine Translation ; 625 ; 638 (2022)
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Reverse racism: the construction of a slip narrative ; Racismo inverso: la construcción de una narrativa deslizante ; Racismo reverso: a construção de uma narrativa de esquiva
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In: Signótica; Vol. 34 (2022) ; Signótica; v. 34 (2022) ; 2316-3690 ; 0103-7250 (2022)
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When Does Translation Require Context? A Data-driven, Multilingual Exploration ...
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Measuring and Increasing Context Usage in Context-Aware Machine Translation ...
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SPECTRA: Sparse Structured Text Rationalization ...
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Abstract:
Anthology paper link: https://aclanthology.org/2021.emnlp-main.525/ Abstract: Selective rationalization aims to produce decisions along with rationales (e.g., text highlights or word alignments between two sentences). Commonly, rationales are modeled as stochastic binary masks, requiring sampling-based gradient estimators, which complicates training and requires careful hyperparameter tuning. Sparse attention mechanisms are a deterministic alternative, but they lack a way to regularize the rationale extraction (e.g., to control the sparsity of a text highlight or the number of alignments). In this paper, we present a unified framework for deterministic extraction of structured explanations via constrained inference on a factor graph, forming a differentiable layer. Our approach greatly eases training and rationale regularization, generally outperforming previous work on what comes to performance and plausibility of the extracted rationales. We further provide a comparative study of stochastic and ...
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Keyword:
Computational Linguistics; Machine Learning; Machine Learning and Data Mining; Natural Language Processing
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URL: https://dx.doi.org/10.48448/nvqs-r058 https://underline.io/lecture/37820-spectra-sparse-structured-text-rationalization
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Do Context-Aware Translation Models Pay the Right Attention? ...
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Findings of the WMT 2021 Shared Task on Quality Estimation ...
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Do Context-Aware Translation Models Pay the Right Attention? ...
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Findings of the WMT 2021 shared task on quality estimation
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In: 689 ; 730 (2021)
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MLQE-PE: A Multilingual Quality Estimation and Post-Editing Dataset ...
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Understanding the Mechanics of SPIGOT: Surrogate Gradients for Latent Structure Learning ...
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Findings of the WMT 2020 shared task on quality estimation
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In: 743 ; 764 (2020)
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MLQE-PE: A multilingual quality estimation and post-editing dataset
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