核心概念
Effective static visualization of data with large value ranges (orders of magnitude) can be achieved by separating the values into mantissa and exponent, and using appropriate visual encodings for each.
要約
The key insights from the content are:
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Current visualization techniques like linear and logarithmic scales have limitations in effectively representing data with large value ranges (orders of magnitude values or OMVs).
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The authors explore a design space for static visualization of OMVs by separating the values into mantissa and exponent, and systematically evaluating different combinations of marks and visual channels.
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Through a qualitative assessment, the authors identify 25 "Effortless and Effective" visualizations that enable accurate value retrieval and quantitative comparisons of OMVs.
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The authors propose four design guidelines:
- Accuracy for Magnitude (AcM): Encode the exponent using highly accurate and discriminable channels to prevent order-of-magnitude errors.
- Detail Inside Magnitudes (DeM): Encode the mantissa using highly accurate and discriminable channels to facilitate estimation of difference and ratio between values of the same magnitude.
- Continuity Between Magnitudes (CoM): Use a channel for the mantissa that expresses a coherent transition from one exponent to the next.
- Parsimony in Channels (PaC): Use a minimal number of visual channels to encode the mantissa, exponent, and additional attribute.
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The authors also refine the definition of the "E+M" scale, which combines the exponent and mantissa in a single position channel, and demonstrate its effectiveness through the generated visualizations.
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The findings aim to enrich visualization systems to better support data with large value ranges and guide future research in this area.
統計
"The budget allocations of the French government range from tens of millions of Euros (10^7e) to hundreds of billions of Euros (10^11e), thereby covering five orders of magnitude."
"The 'WDC Web Table Corpus 2015' dataset includes 25,175 tables with OMVs."
引用
"OMVs are integral to various domains of daily life, including but not limited to financial analysis, pandemic tracking, demographic studies, environmental monitoring, and social media metrics."
"Linear scales prevent the reading of smaller magnitudes and their comparisons, while logarithmic scales are challenging for the general public to understand."
"Our design space leverages the approach of dividing OMVs into two different parts: mantissa and exponent, in a way similar to the scientific notation."