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Autori principali: Lombeyda, Santiago, Djorgovski, S. G., Donalek, Ciro
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2603.05509
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author Lombeyda, Santiago
Djorgovski, S. G.
Donalek, Ciro
author_facet Lombeyda, Santiago
Djorgovski, S. G.
Donalek, Ciro
contents The growing complexity and information content of data, together with the need to understand both the complex structures, relationships, and phenomena present in these data spaces, compounded with the emerging need to understand the results produced by AI tools used to analyze the data, requires development of novel, effective data visualization tools. Much of the growing complexity is reflected in the increasing dimensionality of data spaces, where extended reality (XR) naturally emerges as a candidate to help extend our capability for higher dimensional understanding. However, humans often understand lower dimensionality representations more effectively. Still, XR offers an opportunity for a seamless integration of simulated traditional data displays within the 3-dimensional virtual data spaces, leading to more intuitive and more effective data analytics. In this paper we present an overview of the benefits of seamlessly integrated 2-dimensional and 3-dimensional interactive visual representations embedded in XR spaces, and present three case studies that leverage these approaches for more efficient data analytics.
format Preprint
id arxiv_https___arxiv_org_abs_2603_05509
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle XR and Hybrid Data Visualization Spaces for Enhanced Data Analytics
Lombeyda, Santiago
Djorgovski, S. G.
Donalek, Ciro
Human-Computer Interaction
The growing complexity and information content of data, together with the need to understand both the complex structures, relationships, and phenomena present in these data spaces, compounded with the emerging need to understand the results produced by AI tools used to analyze the data, requires development of novel, effective data visualization tools. Much of the growing complexity is reflected in the increasing dimensionality of data spaces, where extended reality (XR) naturally emerges as a candidate to help extend our capability for higher dimensional understanding. However, humans often understand lower dimensionality representations more effectively. Still, XR offers an opportunity for a seamless integration of simulated traditional data displays within the 3-dimensional virtual data spaces, leading to more intuitive and more effective data analytics. In this paper we present an overview of the benefits of seamlessly integrated 2-dimensional and 3-dimensional interactive visual representations embedded in XR spaces, and present three case studies that leverage these approaches for more efficient data analytics.
title XR and Hybrid Data Visualization Spaces for Enhanced Data Analytics
topic Human-Computer Interaction
url https://arxiv.org/abs/2603.05509