Hernán Maina


2022

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What kinds of errors do reference resolution models make and what can we learn from them?
Jorge Sánchez | Mauricio Mazuecos | Hernán Maina | Luciana Benotti
Findings of the Association for Computational Linguistics: NAACL 2022

Referring resolution is the task of identifying the referent of a natural language expression, for example “the woman behind the other woman getting a massage”. In this paper we investigate which are the kinds of referring expressions on which current transformer based models fail. Motivated by this analysis we identify the weakening of the spatial natural constraints as one of its causes and propose a model that aims to restore it. We evaluate our proposed model on different datasets for the task showing improved performance on the most challenging kinds of referring expressions. Finally we present a thorough analysis of the kinds errors that are improved by the new model and those that are not and remain future challenges for the task.

2021

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Region under Discussion for visual dialog
Mauricio Mazuecos | Franco M. Luque | Jorge Sánchez | Hernán Maina | Thomas Vadora | Luciana Benotti
Proceedings of the 2021 Conference on Empirical Methods in Natural Language Processing

Visual Dialog is assumed to require the dialog history to generate correct responses during a dialog. However, it is not clear from previous work how dialog history is needed for visual dialog. In this paper we define what it means for a visual question to require dialog history and we release a subset of the Guesswhat?! questions for which their dialog history completely changes their responses. We propose a novel interpretable representation that visually grounds dialog history: the Region under Discussion. It constrains the image’s spatial features according to a semantic representation of the history inspired by the information structure notion of Question under Discussion.We evaluate the architecture on task-specific multimodal models and the visual transformer model LXMERT.