Visual Collaboration - An Approach for Visual Analytical Collaborative Research

Midhad Blazevic, Lennart B. Sina, Kawa Nazemi
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引用次数: 1

Abstract

Studies have shown that collaboration in scientific fields is rising and considered enormously important. However, collaboration has proved to be challenging for various reasons, among others, the requirements for human-machine workflows. The importance of scientific collaboration lies in the complexity of the challenges that are faced today. The more complex the challenge, the more scientists should work together. The current form of collaboration in the scientific community is not as intelligent as it should be. Scientists have to multitask with various applications, often losing cognitive focus. Collaboration itself is very nearsighted as it is usually conducted not solely based on expertise but instead on social or local networks. We introduce a single-source visual collaboration approach based on learning methods in this work. We use machine learning and natural language processing approaches to improve the traditional research and development process and create a system that facilitates and encourages collaboration based on expertise, enhancing the research collaboration process in many ways. Our approach combines collaborative Visual Analytics with enhanced collaboration techniques to support researchers from different disciplines.
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视觉协作——视觉分析协作研究的一种方法
研究表明,科学领域的合作正在增加,并且被认为是极其重要的。然而,由于各种原因,协作已被证明是具有挑战性的,其中包括人机工作流的需求。科学合作的重要性在于当今面临的挑战的复杂性。挑战越复杂,就应该有越多的科学家共同努力。目前科学界的合作形式并没有达到应有的智慧。科学家们不得不同时处理各种应用程序,往往会失去认知焦点。合作本身是非常短视的,因为它通常不是完全基于专业知识,而是基于社会或本地网络。在这项工作中,我们介绍了一种基于学习方法的单源可视化协作方法。我们使用机器学习和自然语言处理方法来改进传统的研究和开发过程,并创建一个系统,促进和鼓励基于专业知识的合作,在许多方面加强研究合作过程。我们的方法将协作可视化分析与增强的协作技术相结合,以支持来自不同学科的研究人员。
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