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arxiv: 2101.11103 · v1 · pith:BUCTCJT5 · submitted 2021-01-11 · cs.HC

Screen2Vec: Semantic Embedding of GUI Screens and GUI Components

pith:BUCTCJT5open to challenge →

classification cs.HC
keywords screen2veccomponentsembeddingscreensannotationinteractionmanualrepresentations
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Representing the semantics of GUI screens and components is crucial to data-driven computational methods for modeling user-GUI interactions and mining GUI designs. Existing GUI semantic representations are limited to encoding either the textual content, the visual design and layout patterns, or the app contexts. Many representation techniques also require significant manual data annotation efforts. This paper presents Screen2Vec, a new self-supervised technique for generating representations in embedding vectors of GUI screens and components that encode all of the above GUI features without requiring manual annotation using the context of user interaction traces. Screen2Vec is inspired by the word embedding method Word2Vec, but uses a new two-layer pipeline informed by the structure of GUIs and interaction traces and incorporates screen- and app-specific metadata. Through several sample downstream tasks, we demonstrate Screen2Vec's key useful properties: representing between-screen similarity through nearest neighbors, composability, and capability to represent user tasks.

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Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. MUIAnno: An Expert-Annotated Dataset and Evaluation Benchmark for Mobile UI Understanding

    cs.HC 2026-05 unverdicted novelty 5.0

    MUIAnno is an expert-annotated dataset of mobile UI screens from iOS apps with structured JSON labels and baseline results for UI element detection.