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VUT: Versatile UI Transformer for Multi-Modal Multi-Task User Interface Modeling

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arxiv 2112.05692 v1 pith:LIYR5B7D submitted 2021-12-10 cs.CV cs.AIcs.HCcs.LG

VUT: Versatile UI Transformer for Multi-Modal Multi-Task User Interface Modeling

classification cs.CV cs.AIcs.HCcs.LG
keywords modeltaskstransformerinputlanguagemultimodalstructuresconsists
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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User interface modeling is inherently multimodal, which involves several distinct types of data: images, structures and language. The tasks are also diverse, including object detection, language generation and grounding. In this paper, we present VUT, a Versatile UI Transformer that takes multimodal input and simultaneously accomplishes 5 distinct tasks with the same model. Our model consists of a multimodal Transformer encoder that jointly encodes UI images and structures, and performs UI object detection when the UI structures are absent in the input. Our model also consists of an auto-regressive Transformer model that encodes the language input and decodes output, for both question-answering and command grounding with respect to the UI. Our experiments show that for most of the tasks, when trained jointly for multi-tasks, VUT substantially reduces the number of models and footprints needed for performing multiple tasks, while achieving accuracy exceeding or on par with baseline models trained for each individual task.

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Cited by 3 Pith papers

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