12 results on '"Wang, Shaowen"'
Search Results
2. Feature Extraction of Museum Big Data Text Information Based on the Similarity Mapping Algorithm.
- Author
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Yang, Zhe, Wang, Huiqin, Tang, Qixuan, Wang, Ting, Wang, Shaowen, and Kong, Yulei
- Subjects
FEATURE extraction ,BIG data ,ALGORITHMS ,WORD frequency ,MUSEUMS ,SEARCH engines - Abstract
Under big data, a large number of features, as well as their complex data types, make traditional feature extraction and knowledge reasoning unable to adapt to new conditions. To solve these problems, this study proposes a museum big data feature extraction method based on a similarity mapping algorithm. Under the museum big data analysis, the museum big data text information is collected through web crawler technology. The web crawler is used to index the content of websites all across the Internet so that the museum websites can appear in search engine results and the collected text information is denoised and smoothed by a Gaussian filter to construct the processed text information set mapping matrix. The semantic similarity is computed according to the text word concept. Based on the calculation results, through word frequency and document probability inverse document frequency weight, the museum big data text information features are extracted. Simulation results show that the proposed method has high accuracy and short extraction time. Through the comparative analysis, it can be realized that this method not only solves the problems existing in traditional methods but also lays a foundation for the analysis of museum massive data. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
3. Cyber literacy for GIScience: toward formalizing geospatial computing education
- Author
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Shook, Eric, Bowlick, Forrest J., Kemp, Karen K., Ahlqvist, Ola, Carbajeles-dale, Patricia, Dibiase, David, Kim, Eun-kyeong, Lathrop, Scott, Ricker, B.A., Rickles, Patrick, Rush, Johnathan, Swift, Jennifer N., Wang, Shaowen, Environmental Sciences, University of Zurich, Environmental Sciences, Department of Geo-information Processing, UT-I-ITC-STAMP, and Faculty of Geo-Information Science and Earth Observation
- Subjects
Geospatial analysis ,Computer science ,geographic education ,media_common.quotation_subject ,Geography, Planning and Development ,0211 other engineering and technologies ,0507 social and economic geography ,1904 Earth-Surface Processes ,02 engineering and technology ,Space and place ,computer.software_genre ,Literacy ,computational thinking ,3305 Geography, Planning and Development ,big data ,Multiple time dimensions ,spatial thinking ,910 Geography & travel ,Earth-Surface Processes ,Pace ,media_common ,Planning and Development ,Focus (computing) ,Geography ,05 social sciences ,021107 urban & regional planning ,Earth ,GIS ,Data science ,n/a OA procedure ,10122 Institute of Geography ,Surface Processes ,ITC-ISI-JOURNAL-ARTICLE ,050703 geography ,computer - Abstract
The unprecedented availability of geospatial data and technologies is driving innovation and discovery but not without the risk of losing focus on the geographic foundations of space and place in this vast “cyber sea” of data and technology. There is a pressing need to educate a new generation of scientists and citizens who understand how space and place matter in the real world and who understand and can keep pace with technological advancements in the computational world. We define cyberliteracy for GIScience (cyberGIScience literacy) and outline eight core areas that serve as a framework for establishing the essential abilities and foundational knowledge necessary to navigate and thrive in this new technologically rich world. The core areas are arranged to provide multiple dimensions of learning ranging from a technological focus to a problem solving focus or a focus on GIScience or computational science. We establish a competency matrix as a means of assessing and evaluating levels of cyberGIScience literacy across the eight core areas. We outline plans to catalyze the collaborative development and sharing of instructional materials to embed cyberGIScience literacy in the classroom and begin to realize a cyberliterate citizenry and academe.
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- 2019
4. ESCIP: An Expansion-Based Spatial Clustering Method for Inhomogeneous Point Processes.
- Author
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Li, Ting, Gao, Yizhao, and Wang, Shaowen
- Subjects
CLUSTERING of particles ,POINT processes ,BIG data ,POISSON distribution ,BINOMIAL distribution ,SPATIAL analysis (Statistics) - Abstract
Copyright of Annals of the American Association of Geographers is the property of Taylor & Francis Ltd and its content may not be copied or emailed to multiple sites or posted to a listserv without the copyright holder's express written permission. However, users may print, download, or email articles for individual use. This abstract may be abridged. No warranty is given about the accuracy of the copy. Users should refer to the original published version of the material for the full abstract. (Copyright applies to all Abstracts.)
- Published
- 2020
- Full Text
- View/download PDF
5. A cyberGIS-enabled multi-criteria spatial decision support system: A case study on flood emergency management.
- Author
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Zhang, Zhe, Hu, Hao, Yin, Dandong, Kashem, Shakil, Li, Ruopu, Cai, Heng, Perkins, Dylan, and Wang, Shaowen
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DECISION support systems ,MULTIPLE criteria decision making ,EMERGENCY management ,DISASTER relief ,DECISION making ,STATISTICAL decision making - Abstract
With the increased frequency of natural hazards and disasters and consequent losses, it is imperative to develop efficient and timely strategies for emergency response and relief operations. In this paper, we propose a cyberGIS-enabled multi-criteria spatial decision support system for supporting rapid decision making during emergency management. It combines a high-performance computing environment (cyberGIS-Jupyter) and multi-criteria decision analysis models (Weighted Sum Model (WSM) and Technique for Order Preference by Similarity to Ideal Solution Model (TOPSIS)) with various types of social vulnerability indicators to solve decision problems that contain conflicting evaluation criteria in a flood emergency situation. Social media data (e.g. Twitter data) was used as an additional tool to support the decision-making process. Our case study involves two decision goals generated based on a past flood event in the city of Austin, Texas, U.S.A. As our result shows, WSM produces more diverse values and higher output category estimations than the TOPSIS model. Finally, the model was validated using an innovative questionnaire. This cyberGIS- enabled spatial decision support system allows collaborative problem solving and efficient knowledge transformation between decision makers, where different emergency responders can formulate their decision objectives, select relevant evaluation criteria, and perform interactive weighting and sensitivity analyses. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
6. A multidimensional spatial scan statistics approach to movement pattern comparison.
- Author
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Gao, Yizhao, Li, Ting, Wang, Shaowen, Jeong, Myeong-Hun, and Soltani, Kiumars
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ORIGIN & destination traffic surveys ,TRAFFIC patterns ,SPATIAL analysis (Statistics) ,TAXICABS ,BIG data - Abstract
This paper describes a multidimensional spatial scan statistics approach to comparing spatial movement patterns based on origin-destination (OD) representation. This approach aims to evaluate differences and similarities between the spatial distributions of a pair of OD movement datasets, and detect areas where the two spatial distributions differ the most. Specifically, two OD datasets being compared are modeled as a bivariate marked spatial point process in a multidimensional space, consisting of points representing individual OD movement records. Such multidimensional space is formed by the Cartesian product of the origins’ and the destinations’ geographic spaces. With this spatial data model, one can evaluate how two movement distributions differ from each other by testing against a random labeling null hypothesis. A multidimensional Bernoulli spatial scan statistics method is developed to detect OD region pairs with abnormally high concentrations of one movement dataset over the other. The existence and the spatial extents of these OD region pairs indicate whether and where the two movement distributions differ. Two case studies were conducted to evaluate the approach by comparing morning and afternoon taxi trips (individual movements), and county-to-county migration flows between age groups (aggregated movement flows), and demonstrated that areas with the most significant spatial distribution differences could be detected from large movement datasets. [ABSTRACT FROM AUTHOR]
- Published
- 2018
- Full Text
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7. Computational and data sciences for health-GIS.
- Author
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Shi, Xun and Wang, Shaowen
- Subjects
- *
GEOGRAPHIC information systems , *PUBLIC health research , *DATA science , *BIG data , *MONTE Carlo method - Abstract
Computational and data sciences are transforming the entire science enterprise. In the arena of GIS, this is represented by the emergence of cyberGIS. We provide an overview of applying the cyberGIS approach to spatial analysis for health studies. We emphasize that cyberGIS is not just aserviceto traditional spatial analyses, but itself is an alternative approach to problem solving. Some fundamental and profound distinctions of cyberGIS approaches in health-GIS include the following: (1) they may greatly reduce the reliance on models or assumptions, and instead seek actual empirical evidence through mining a large amount of data orvirtualempirical evidence generated through computation; (2) they tend to be non-parametric and tend to generate local solution; (3) they are scalable to high-resolution and less aggregated data; (4) they tend to be stochastic rather than deterministic; and (5) with these approaches, the large amount of data may not be only from input data-sets, but also from analytical workflows. We described the kernel ratio estimation for local intensity estimation, therestrictedandcontrolledMonte Carlo for data disaggregation, andunrestrictedandcontrolledMonte Carlo for statistical significance evaluation as examples of the cyberGIS approaches in health-GIS. [ABSTRACT FROM PUBLISHER]
- Published
- 2015
- Full Text
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8. TopoLens: Building a CyberGIS community data service for enhancing the usability of high‐resolution national topographic datasets.
- Author
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Hu, Hao, Yin, Dandong, Liu, Yan Y., Terstriep, Jeff, Hong, Xingchen, Wendel, Jeff, and Wang, Shaowen
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COMMUNITY services ,GEOSPATIAL data ,WEB-based user interfaces ,VIRTUAL communities ,BIG data ,GEOLOGICAL surveys - Abstract
Summary: In recent years, geospatial data have exploded to massive volume and diversity and subsequently cause serious usability issues for researchers in various scientific areas. This paper describes a cyberGIS community data service framework to facilitate geospatial big data access, processing, and sharing based on a hybrid supercomputer architecture. Specifically, the framework aims to enhance the usability of national elevation dataset released by the U.S. Geological Survey in the contiguous United States at the resolution of 1/3 arc‐second. A community data service, namely TopoLens, is created to demonstrate the workflow integration of national elevation dataset and the associated computation and analysis. Two user‐friendly environments, including a publicly available web application and a private workspace based on the Jupyter notebook, are provided for users to access both precomputed and on‐demand computed high‐resolution elevation data. The system architecture of TopoLens is implemented by exploiting the ROGER supercomputer, the first cyberGIS supercomputer dedicated to geospatial problem‐solving. The usability of TopoLens has been acknowledged in the topographic user community evaluation. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
9. CyberGIS‐Jupyter for reproducible and scalable geospatial analytics.
- Author
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Yin, Dandong, Liu, Yan, Hu, Hao, Terstriep, Jeff, Hong, Xingchen, Padmanabhan, Anand, and Wang, Shaowen
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GATEWAYS (Computer networks) ,GEOGRAPHIC information systems ,GEOSPATIAL data ,BIG data ,CYBERINFRASTRUCTURE - Abstract
Summary: The interdisciplinary field of cyberGIS (geographic information science and systems (GIS) based on advanced cyberinfrastructure) has a major focus on data‐ and computation‐intensive geospatial analytics. The rapidly growing needs across many application and science domains for such analytics based on disparate geospatial big data poses significant challenges to conventional GIS approaches. This paper describes CyberGIS‐Jupyter, an innovative cyberGIS framework for achieving data‐intensive, reproducible, and scalable geospatial analytics using Jupyter Notebook based on ROGER, the first cyberGIS supercomputer. The framework adapts the Notebook with built‐in cyberGIS capabilities to accelerate gateway application development and sharing while associated data, analytics, and workflow runtime environments are encapsulated into application packages that can be elastically reproduced through cloud‐computing approaches. As a desirable outcome, data‐intensive and scalable geospatial analytics can be efficiently developed and improved and seamlessly reproduced among multidisciplinary users in a novel cyberGIS science gateway environment. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
10. Integration of Web GIS with High-Performance Computing: A Container-Based Cloud Computing Approach
- Author
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Slocum, Zachery, Tang, Wenwu, Gatrell, Jay D., Series Editor, Jensen, Ryan R., Series Editor, Tang, Wenwu, editor, and Wang, Shaowen, editor
- Published
- 2020
- Full Text
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11. Enabling Spatial Big Data via CyberGIS: Challenges and Opportunities
- Author
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Evans, Michael R., Oliver, Dev, Yang, KwangSoo, Zhou, Xun, Ali, Reem Y., Shekhar, Shashi, Sui, Daniel Z., Managing Editor, Wang, Shaowen, editor, and Goodchild, Michael F., editor
- Published
- 2019
- Full Text
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12. A Smart Service-Oriented CyberGIS Framework for Solving Data-Intensive Geospatial Problems
- Author
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Li, Wenwen, Goodchild, Michael F., Anselin, Luc, Weber, Keith T., Sui, Daniel Z., Managing Editor, Wang, Shaowen, editor, and Goodchild, Michael F., editor
- Published
- 2019
- Full Text
- View/download PDF
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