Maharshi Gor
2021
Toward Deconfounding the Effect of Entity Demographics for Question Answering Accuracy
Maharshi Gor
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Kellie Webster
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Jordan Boyd-Graber
Proceedings of the 2021 Conference on Empirical Methods in Natural Language Processing
The goal of question answering (QA) is to answer _any_ question. However, major QA datasets have skewed distributions over gender, profession, and nationality. Despite that skew, an analysis of model accuracy reveals little evidence that accuracy is lower for people based on gender or nationality; instead, there is more variation on professions (question topic) and question ambiguity. But QA’s lack of representation could itself hide evidence of bias, necessitating QA datasets that better represent global diversity.
MATE: Multi-view Attention for Table Transformer Efficiency
Julian Eisenschlos
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Maharshi Gor
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Thomas Müller
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William Cohen
Proceedings of the 2021 Conference on Empirical Methods in Natural Language Processing
This work presents a sparse-attention Transformer architecture for modeling documents that contain large tables. Tables are ubiquitous on the web, and are rich in information. However, more than 20% of relational tables on the web have 20 or more rows (Cafarella et al., 2008), and these large tables present a challenge for current Transformer models, which are typically limited to 512 tokens. Here we propose MATE, a novel Transformer architecture designed to model the structure of web tables. MATE uses sparse attention in a way that allows heads to efficiently attend to either rows or columns in a table. This architecture scales linearly with respect to speed and memory, and can handle documents containing more than 8000 tokens with current accelerators. MATE also has a more appropriate inductive bias for tabular data, and sets a new state-of-the-art for three table reasoning datasets. For HybridQA (Chen et al., 2020), a dataset that involves large documents containing tables, we improve the best prior result by 19 points.
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