Knowledge Maps of Tourism Big Data Research in China Based on Visualization Analysis

Author(s):  
Liu Jie
2021 ◽  
Author(s):  
Tingting Lu ◽  
Jiandong Zhao ◽  
Xiongna Deng ◽  
Lirong Dong ◽  
Peng Huang

2019 ◽  
Vol 24 (11) ◽  
pp. 8173-8186 ◽  
Author(s):  
Weihong Wang ◽  
Chang Lu

2019 ◽  
Vol 3 (1) ◽  
Author(s):  
Xi Chen ◽  
Bo Fan ◽  
Jie Zheng ◽  
Hongyan Cui

At present, it has become a hot research field to improve production efficiency and improve life experience through big data analysis. In the process of big data analysis, how to vividly display the results of the analysis is crucial. So, this paper introduces a set of big data visualization analysis platform based on financial field. The platform adopts the MVC system architecture, which is mainly composed of two parts: the background and the front end. The background part is built on the Django framework, and the front end is built with html5, css3, and JavaScript. The chart is rendered by Echarts. The platform can realize the classification of customers' savings potential through bank data, and make portraits of customers with different savings levels. The data analysis results can be dynamically displayed and interact wit


2013 ◽  
Vol 411-414 ◽  
pp. 277-282
Author(s):  
Ming Hai Yang ◽  
Yan Xiang Xue

The methods of personnel selection in Human Resource Management can not meet the screening requirements of academic standards and influence about the scientific and technological talent engaged in graphene research, and it is difficult to obtain a comprehensive worldwide information to researchers in the field of graphene. The article utilizes visualization software CiteSpaceIIbased on knowledge mapping, takes the theme of grapheme included in Web of Science as data resources, to draw and analyze knowledge maps of the grapheme field literature, and explores the region distribution, main knowledge cluster, representatives, classic literatures, research front and trends in the grapheme field. This can help us to grasp the whole development of the field. Moreover, this can provide the decision making support for introduction of high-level scientific and technological talent.


Author(s):  
Kiran Fahd ◽  
Sitalakshmi Venkatraman

AbstractScholarly communication of knowledge is predominantly document-based in digital repositories, and researchers find it tedious to automatically capture and process the semantics among related articles. Despite the present digital era of big data, there is a lack of visual representations of the knowledge present in scholarly articles, and a time-saving approach for a literature search and visual navigation is warranted. The majority of knowledge display tools cannot cope with current big data trends and pose limitations in meeting the requirements of automatic knowledge representation, storage, and dynamic visualization. To address this limitation, the main aim of this paper is to model the visualization of unstructured data and explore the feasibility of achieving visual navigation for researchers to gain insight into the knowledge hidden in scientific articles of digital repositories. Contemporary topics of research and practice, including modifiable risk factors leading to a dramatic increase in Alzheimer’s disease and other forms of dementia, warrant deeper insight into the evidence-based knowledge available in the literature. The goal is to provide researchers with a visual-based easy traversal through a digital repository of research articles. This paper takes the first step in proposing a novel integrated model using knowledge maps and next-generation graph datastores to achieve a semantic visualization with domain-specific knowledge, such as dementia risk factors. The model facilitates a deep conceptual understanding of the literature by automatically establishing visual relationships among the extracted knowledge from the big data resources of research articles. It also serves as an automated tool for a visual navigation through the knowledge repository for faster identification of dementia risk factors reported in scholarly articles. Further, it facilitates a semantic visualization and domain-specific knowledge discovery from a large digital repository and their associations. In this study, the implementation of the proposed model in the Neo4j graph data repository, along with the results achieved, is presented as a proof of concept. Using scholarly research articles on dementia risk factors as a case study, automatic knowledge extraction, storage, intelligent search, and visual navigation are illustrated. The implementation of contextual knowledge and its relationship for a visual exploration by researchers show promising results in the knowledge discovery of dementia risk factors. Overall, this study demonstrates the significance of a semantic visualization with the effective use of knowledge maps and paves the way for extending visual modeling capabilities in the future.


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