HCMar 6

Visualization Retrieval for Data Literacy: Position Paper

arXiv:2604.095981 citationsh-index: 1
AI Analysis

This addresses the problem of inefficient learning tools for data literacy education, though it's a conceptual position paper rather than an implementation.

This position paper argues that current data literacy resources lack effective querying and navigation capabilities, and proposes visualization retrieval as essential infrastructure to transform static collections into dynamic learning environments that support design exploration, visualization comparison, and data management.

Current resources for data literacy education, such as visualization galleries and datasets, provide useful examples but lack mechanisms for learners to query, compare, and navigate the visualization design space efficiently. This position paper advocates for visualization retrieval as essential infrastructure for data literacy, transforming static collections into dynamic, inquiry-based learning environments. We analyze the role of retrieval across the data lifecycle, demonstrating how it facilitates design space exploration and vocabulary expansion, supports data consumption through visualization comparison and critique, and aids data management via resource curation. We outline key opportunities for future research and system design, including integrated retrieval-authoring environments, pedagogical relevance modeling, and collaborative educational corpora. Ultimately, we argue that visualization retrieval systems empower learners to articulate intent, bridge technical barriers, and proactively reason with data.

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