HCAIAug 10, 2025

VA-Blueprint: Uncovering Building Blocks for Visual Analytics System Design

arXiv:2508.07497v11 citationsh-index: 4IEEE Trans Vis Comput Graph
Originality Incremental advance
AI Analysis

This work addresses the practical challenges of developing visual analytics systems for researchers and practitioners, offering a structured approach to improve design efficiency and reproducibility, though it is incremental in building on prior knowledge.

The paper tackles the lack of structured guidance for designing visual analytics systems by proposing VA-Blueprint, a methodology and knowledge base that identifies and organizes building blocks from urban VA systems, scaling to 101 papers with automated extraction and showing effectiveness through expert interviews and quantitative analysis.

Designing and building visual analytics (VA) systems is a complex, iterative process that requires the seamless integration of data processing, analytics capabilities, and visualization techniques. While prior research has extensively examined the social and collaborative aspects of VA system authoring, the practical challenges of developing these systems remain underexplored. As a result, despite the growing number of VA systems, there are only a few structured knowledge bases to guide their design and development. To tackle this gap, we propose VA-Blueprint, a methodology and knowledge base that systematically reviews and categorizes the fundamental building blocks of urban VA systems, a domain particularly rich and representative due to its intricate data and unique problem sets. Applying this methodology to an initial set of 20 systems, we identify and organize their core components into a multi-level structure, forming an initial knowledge base with a structured blueprint for VA system development. To scale this effort, we leverage a large language model to automate the extraction of these components for other 81 papers (completing a corpus of 101 papers), assessing its effectiveness in scaling knowledge base construction. We evaluate our method through interviews with experts and a quantitative analysis of annotation metrics. Our contributions provide a deeper understanding of VA systems' composition and establish a practical foundation to support more structured, reproducible, and efficient system development. VA-Blueprint is available at https://urbantk.org/va-blueprint.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes