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A decomposition of book structure through ousiometric fluctuations in cumulative word-time

Author

Listed:
  • Mikaela Irene Fudolig

    (University of Vermont)

  • Thayer Alshaabi

    (University of Vermont
    Advanced Bioimaging Center)

  • Kathryn Cramer

    (University of Vermont)

  • Christopher M. Danforth

    (University of Vermont
    University of Vermont)

  • Peter Sheridan Dodds

    (University of Vermont
    University of Vermont)

Abstract

While quantitative methods have been used to examine changes in word usage in books, studies have focused on overall trends, such as the shapes of narratives, which are independent of book length. We instead look at how words change over the course of a book as a function of the number of words, rather than the fraction of the book, completed at any given point; we define this measure as “cumulative word-time”. Using ousiometrics, a reinterpretation of the valence–arousal–dominance framework of meaning obtained from semantic differentials, we convert text into time series of power and danger scores, with time corresponding to cumulative word-time. Each time series is then decomposed using empirical mode decomposition into a sum of constituent oscillatory modes and a non-oscillatory trend. By comparing the decomposition of the original power and danger time series with those derived from shuffled text, we find that shorter books exhibit only a general trend, while longer books have fluctuations in addition to the general trend. These fluctuations typically have a period of a few thousand words regardless of the book length or library classification code but vary depending on the content and structure of the book. Our findings suggest that, in the ousiometric sense, longer books are not expanded versions of shorter books, but rather are more similar in structure to a concatenation of shorter texts. Further, they are consistent with editorial practices that require longer texts to be broken down into sections, such as chapters. Our method also provides a data-driven denoising approach that works for texts of various lengths, in contrast to the more traditional approach of using large window sizes that may inadvertently smooth out relevant information, especially for shorter texts. Altogether, these results open up avenues for future work in computational literary analysis, particularly the possibility of measuring a basic unit of narrative.

Suggested Citation

  • Mikaela Irene Fudolig & Thayer Alshaabi & Kathryn Cramer & Christopher M. Danforth & Peter Sheridan Dodds, 2023. "A decomposition of book structure through ousiometric fluctuations in cumulative word-time," Palgrave Communications, Palgrave Macmillan, vol. 10(1), pages 1-12, December.
  • Handle: RePEc:pal:palcom:v:10:y:2023:i:1:d:10.1057_s41599-023-01680-4
    DOI: 10.1057/s41599-023-01680-4
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    References listed on IDEAS

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    1. Olivier Toubia & Jonah Berger & Jehoshua Eliashberg, 2021. "How quantifying the shape of stories predicts their success," Proceedings of the National Academy of Sciences, Proceedings of the National Academy of Sciences, vol. 118(26), pages 2011695118-, June.
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