Salvato in:
Dettagli Bibliografici
Autori principali: Sarigai, Sarigai, Yang, Liping, Slack, Katie, Lane, K. Maria D., Buenemann, Michaela, Wu, Qiusheng, Woodhull, Gordon, Driscol, Joshua
Natura: Preprint
Pubblicazione: 2024
Soggetti:
Accesso online:https://arxiv.org/abs/2402.11001
Tags: Aggiungi Tag
Nessun Tag, puoi essere il primo ad aggiungerne!!
_version_ 1866913236168736768
author Sarigai, Sarigai
Yang, Liping
Slack, Katie
Lane, K. Maria D.
Buenemann, Michaela
Wu, Qiusheng
Woodhull, Gordon
Driscol, Joshua
author_facet Sarigai, Sarigai
Yang, Liping
Slack, Katie
Lane, K. Maria D.
Buenemann, Michaela
Wu, Qiusheng
Woodhull, Gordon
Driscol, Joshua
contents We are surrounded by overwhelming big data, which brings substantial advances but meanwhile poses many challenges. Geospatial big data comprises a big portion of big data, and is essential and powerful for decision-making if being utilized strategically. Volumes in size and high dimensions are two of the major challenges that prevent strategic decision-making from (geospatial) big data. Interactive map-based and geovisualization enabled web applications are intuitive and useful to construct knowledge and reveal insights from high-dimensional (geospatial) big data for actionable decision-making. We propose an interactive and data-driven web mapping framework, named idwMapper, for visualizing and sensing high dimensional geospatial (big) data in an interactive and scalable manner. To demonstrate the wide applicability and usefulness of our framework, we have applied our idwMapper framework to three real-world case studies and implemented three corresponding web map applications: iLit4GEE-AI, iWURanking, and iTRELISmap. We expect and hope the three web maps demonstrated in different domains, from literature big data analysis through world university ranking to scholar mapping, will provide a good start and inspire researchers and practitioners in various domains to apply our idwMapper to solve (or at least aid them in solving) their impactful problems.
format Preprint
id arxiv_https___arxiv_org_abs_2402_11001
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle idwMapper: An interactive and data-driven web mapping framework for visualizing and sensing high-dimensional geospatial (big) data
Sarigai, Sarigai
Yang, Liping
Slack, Katie
Lane, K. Maria D.
Buenemann, Michaela
Wu, Qiusheng
Woodhull, Gordon
Driscol, Joshua
Databases
We are surrounded by overwhelming big data, which brings substantial advances but meanwhile poses many challenges. Geospatial big data comprises a big portion of big data, and is essential and powerful for decision-making if being utilized strategically. Volumes in size and high dimensions are two of the major challenges that prevent strategic decision-making from (geospatial) big data. Interactive map-based and geovisualization enabled web applications are intuitive and useful to construct knowledge and reveal insights from high-dimensional (geospatial) big data for actionable decision-making. We propose an interactive and data-driven web mapping framework, named idwMapper, for visualizing and sensing high dimensional geospatial (big) data in an interactive and scalable manner. To demonstrate the wide applicability and usefulness of our framework, we have applied our idwMapper framework to three real-world case studies and implemented three corresponding web map applications: iLit4GEE-AI, iWURanking, and iTRELISmap. We expect and hope the three web maps demonstrated in different domains, from literature big data analysis through world university ranking to scholar mapping, will provide a good start and inspire researchers and practitioners in various domains to apply our idwMapper to solve (or at least aid them in solving) their impactful problems.
title idwMapper: An interactive and data-driven web mapping framework for visualizing and sensing high-dimensional geospatial (big) data
topic Databases
url https://arxiv.org/abs/2402.11001