利用知识图谱和下一代数据模型从学术文献中可视化痴呆症的危险因素。

4区 计算机科学 Q1 Arts and Humanities
Kiran Fahd, Sitalakshmi Venkatraman
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引用次数: 3

摘要

知识的学术交流主要是基于数字存储库中的文档,研究人员发现自动捕获和处理相关文章之间的语义非常繁琐。尽管现在是大数据的数字时代,但学术文章中缺乏知识的可视化表示,因此需要一种节省时间的文献搜索和视觉导航方法。大多数知识显示工具无法适应当前大数据的发展趋势,在满足知识的自动表示、存储和动态可视化方面存在局限性。为了解决这一限制,本文的主要目的是对非结构化数据的可视化建模,并探索实现可视化导航的可行性,以便研究人员深入了解数字知识库中隐藏的科学文章中的知识。当代的研究和实践主题,包括导致阿尔茨海默病和其他形式的痴呆症急剧增加的可改变的风险因素,需要更深入地了解文献中现有的循证知识。目标是为研究人员提供一个基于视觉的研究文章的数字存储库的简单遍历。本文首先提出了一种新的集成模型,使用知识地图和下一代图形数据存储来实现特定领域知识(如痴呆风险因素)的语义可视化。该模型通过自动建立从研究文章的大数据资源中提取的知识之间的视觉关系,促进了对文献的深刻概念理解。它还可以作为通过知识库进行视觉导航的自动化工具,以更快地识别学术文章中报道的痴呆风险因素。此外,它还有助于从大型数字存储库及其关联中进行语义可视化和领域特定知识发现。在本研究中,提出的模型在Neo4j图形数据存储库中的实现,以及所取得的结果,作为概念的证明。以痴呆风险因素的学术研究文章为例,说明了知识的自动提取、存储、智能搜索和视觉导航。语境知识及其关系的实施为研究人员进行了视觉探索,在痴呆症危险因素的知识发现方面显示出有希望的结果。总的来说,本研究证明了有效使用知识地图的语义可视化的重要性,并为未来扩展可视化建模能力铺平了道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Visualizing risk factors of dementia from scholarly literature using knowledge maps and next-generation data models.

Visualizing risk factors of dementia from scholarly literature using knowledge maps and next-generation data models.

Visualizing risk factors of dementia from scholarly literature using knowledge maps and next-generation data models.

Visualizing risk factors of dementia from scholarly literature using knowledge maps and next-generation data models.

Scholarly 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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来源期刊
Visual Computing for Industry, Biomedicine, and Art
Visual Computing for Industry, Biomedicine, and Art Arts and Humanities-Visual Arts and Performing Arts
CiteScore
5.60
自引率
0.00%
发文量
28
审稿时长
5 weeks
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