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Iterative generation of insight from text collections through mutually reinforcing visualizations and fuzzy cognitive maps

机译:通过相互加强的可视化和模糊认知地图迭代文本收集的洞察

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Developing a comprehensive explanation of complex social phenomena is a difficult task that analysts often have to perform using vast collections of text documents. On the one hand, solutions exist to assist analysts in creating causal maps from text documents, but these can only articulate the relationships at work in a problem. On the other hand, Fuzzy Cognitive Maps (FCMs) can articulate these relationships and perform simulations, but no environment exists to help analysts in iteratively developing FCMs from text. In this paper, we detail the design and implementation of the first tool that allows analysts to develop FCMs from text collections, using interactive visualizations. We make three contributions: (i) we combine text mining and FCMs, (ii) we implement the first visual analytics environment built on FCMs, and (iii) we promote a strong feedback loop between interactive data exploration and model building. We provide two case studies exemplifying how to create a model from the ground-up or improve an existing one. Limitations include the increase in display complexity when working with large collection of files, and the reliance on KL-divergence for ad-hoc retrieval. Several improvements are discussed to further support analysts in creating high-quality models through interactive visualizations. (C) 2018 Elsevier B.V. All rights reserved.
机译:制定对复杂的社会现象的全面解释是一项艰巨的任务,分析师通常必须使用丰富的文本文件进行。一方面,存在解决方案,以帮助分析师从文本文件创建因果贴图,但这些可以只阐明在问题中的工作中的关系。另一方面,模糊认知地图(FCMS)可以阐明这些关系并执行模拟,但没有存在环境,以帮助分析师迭代地从文本中开发FCM。在本文中,我们详细介绍了第一个工具的设计和实现,允许分析师使用交互式可视化从文本集合开发FCMS。我们进行三个贡献:(i)我们结合了文本挖掘和FCM,(ii)我们实施了FCMS的第一个视觉分析环境,(iii)我们在交互式数据探索和模型建筑之间推广了强大的反馈环路。我们提供了两种案例研究,示出了如何从地上创建模型或改进现有的模型。限制包括在使用大量文件时的显示复杂性的增加,以及依赖于临时检索的KL分歧。讨论了几种改进,以通过交互式可视化进一步支持分析师创建高质量模型。 (c)2018 Elsevier B.v.保留所有权利。

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