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arxiv: 2112.07566 · v2 · pith:GAJLVPIM · submitted 2021-12-14 · cs.CL · cs.CV

VALSE: A Task-Independent Benchmark for Vision and Language Models Centered on Linguistic Phenomena

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classification cs.CL cs.CV
keywords modelslinguisticvalsephenomenabenchmarklanguagevisionevaluations
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We propose VALSE (Vision And Language Structured Evaluation), a novel benchmark designed for testing general-purpose pretrained vision and language (V&L) models for their visio-linguistic grounding capabilities on specific linguistic phenomena. VALSE offers a suite of six tests covering various linguistic constructs. Solving these requires models to ground linguistic phenomena in the visual modality, allowing more fine-grained evaluations than hitherto possible. We build VALSE using methods that support the construction of valid foils, and report results from evaluating five widely-used V&L models. Our experiments suggest that current models have considerable difficulty addressing most phenomena. Hence, we expect VALSE to serve as an important benchmark to measure future progress of pretrained V&L models from a linguistic perspective, complementing the canonical task-centred V&L evaluations.

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