关联驱动的财务绩效指标可视化

H. Ziegler, Tilo Nietzschmann, D. Keim
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引用次数: 17

摘要

近年来,可视化数据分析受到了广泛的研究兴趣,各种新的可视化技术和应用程序已经被开发出来,以提高对各个应用领域的洞察力。然而,在金融数据分析中,分析人员仍然主要依靠一组统计性能参数结合传统的折线图来评估资产和做出决策,信息可视化只是非常缓慢地进入这一重要领域。在本文中,我们分析了一些用于技术财务数据分析的标准统计措施,并展示了它们产生不充分和误导性结果的案例,这些结果不能反映资产的真实表现。我们提出了一种可视化金融时间序列数据的技术,消除了这些不足,提供了对资产真实表现的完整视图。该技术通过根据用户偏好的相关性和加权函数来增强,以强调特定的兴趣区域。基于这些原则,我们重新定义了一些标准的性能度量。我们将我们的技术应用于真实世界的金融数据集,并将其与更高层次的财务分析技术(如绩效/风险分析、优势评估和效率曲线)相结合,以展示如何通过现代可视化数据分析技术改进经济学中的传统技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Relevance Driven Visualization of Financial Performance Measures
Visual data analysis has received a lot of research interest in recent years, and a wide variety of new visualization techniques and applications have been developed to improve insight into the various application domains. In financial data analysis, however, analysts still primarily rely on a set of statistical performance parameters in combination with traditional line charts in order to evaluate assets and to make decisions, and information visualization is only very slowly entering this important domain. In this paper, we analyze some of the standard statistical measures for technical financial data analysis and demonstrate cases where they produce insufficient and misleading results that do not reflect the real performance of an asset. We propose a technique for visualizing financial time series data that eliminates these inadequacies, offering a complete view on the real performance of an asset. The technique is enhanced by relevance and weighting functions according to the users' preferences in order to emphasize specific regions of interest. Based on these principles we redefine some of the standard performance measures. We apply our technique on real world financial data sets and combine it with higher-level financial analysis techniques such as performance/risk analysis, dominance evaluation, and efficiency curves in order to show how traditional techniques from economics can be improved by modern visual data analysis techniques.
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