TL;DR
ASTRA is a computational framework that maps art-technology institutions using an eight-axis conceptual model, text embeddings, clustering, and visualization to reveal thematic groupings and cross-disciplinary links.
Contribution
It introduces a novel methodology combining conceptual axes, text embeddings, and clustering to systematically analyze and visualize the multidimensional landscape of art-technology institutions.
Findings
Identified coherent institutional clusters such as art-science hubs and electronic music festivals.
Achieved high clustering quality with a silhouette coefficient of 0.803.
Developed an interactive tool for exploring institutional similarities and thematic boundaries.
Abstract
The global landscape of art-technology institutions, including festivals, biennials, research labs, conferences, and hybrid organizations, has grown increasingly diverse, yet systematic frameworks for analyzing their multidimensional characteristics remain scarce. This paper proposes ASTRA (Art-technology Institution Spatial Taxonomy and Relational Analysis), a computational methodology combining an eight-axis conceptual framework (Curatorial Philosophy, Territorial Relation, Knowledge Production Mode, Institutional Genealogy, Temporal Orientation, Ecosystem Function, Audience Relation, and Disciplinary Positioning) with a text-embedding and clustering pipeline to map 78 cultural-technology institutions into a unified analytical space. Each institution is characterized through qualitative descriptions along the eight axes, encoded via E5-large-v2 sentence embeddings and quantized…
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