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Perceptual Biases in Font Size as a Data Encoding

Many visualizations, including word clouds, cartographic labels, and word trees, encode data within the sizes of fonts. While font size can be an intuitive dimension for the viewer, using it as an encoding can introduce factors that may bias the perception of the underlying values. Viewers might conflate the size of a word’s font with a word’s length, the number of letters it contains, or with the larger or smaller heights of particular characters (‘o’ vs. ‘p’ vs. ‘b’). We present a collection of empirical studies showing that such factors-which are irrelevant to the encoded values-can indeed influence comparative judgements of font size, though less than conventional wisdom might suggest. We highlight the largest potential biases and describe a strategy to mitigate them.

Publications

  • E. Alexander, C. Chang, M. Shimabukuro, S. Franconeri, C. Collins, and M. Gleicher, “The Biasing Effect of Word Length in Font Size Encodings,” Proc IEEE Information Visualization (InfoVis), Posters, 2016.

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    @poster{shi2016,
    author = {Eric Alexander and Chih-Ching Chang and Mariana Shimabukuro and Steven Franconeri and Christopher Collins and Michael Gleicher},
    title = {The Biasing Effect of Word Length in Font Size Encodings},
    booktitle = { Proc IEEE Information Visualization (InfoVis), Posters },
    series = {Poster},
    note = {Honorable Mention for Best Poster},
    year = 2016
    }

  • E. Alexander, C. Chang, M. Shimabukuro, S. Franconeri, C. Collins, and M. Gleicher, “Perceptual Biases in Font Size as a Data Encoding,” IEEE Transactions on Visualization and Computer Graphics, vol. 24, iss. 8, pp. 2397-2410, 2017.

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    @article{ale2017a,
    title={Perceptual Biases in Font Size as a Data Encoding},
    author={Eric Alexander and Chih-Ching Chang and Mariana Shimabukuro and Steven Franconeri and Christopher Collins and Michael Gleicher},
    publisher={TVCG Journal},
    journal = {IEEE Transactions on Visualization and Computer Graphics},
    ISSN = { 1077-2626 },
    volume = 24,
    Number = {8},
    Pages= { 2397–2410},
    year=2017,
    doi={10.1109/TVCG.2017.2723397}
    }