2019
DOI: 10.48550/arxiv.1910.09302
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Diversify Your Datasets: Analyzing Generalization via Controlled Variance in Adversarial Datasets

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Cited by 1 publication
(1 citation statement)
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“…1. predicates and names are sampled from different, disjunct domains (texts are about, e.g., allergies and family relations versus, e.g., badminton and cooking) to test a model's robustness to lexical diversity (Rozen et al, 2019); 2. similarly, AAAC01 applies automatic paraphrasing (Alisetti, 2021) to the final source text whereas AAAC02 doesn't; 3. AAAC02 allows for imprecise renditions of logical formulas, while AAAC01 sticks to plain formulations to test robustness to variations in description of rules.…”
Section: Datasetsmentioning
confidence: 99%
“…1. predicates and names are sampled from different, disjunct domains (texts are about, e.g., allergies and family relations versus, e.g., badminton and cooking) to test a model's robustness to lexical diversity (Rozen et al, 2019); 2. similarly, AAAC01 applies automatic paraphrasing (Alisetti, 2021) to the final source text whereas AAAC02 doesn't; 3. AAAC02 allows for imprecise renditions of logical formulas, while AAAC01 sticks to plain formulations to test robustness to variations in description of rules.…”
Section: Datasetsmentioning
confidence: 99%