The Taxonomy of Writing Systems: How to Measure how Logographic a System Is

Taxonomies of writing systems since Gelb (1952) have classified systems based on what the written symbols represent: if they represent words or morphemes, they are ; if syllables, ; if segments, ; and so forth. Sproat (2000) and Rogers (2005) broke with tradition by splitting the logographic and asp...

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Veröffentlicht in:Computational linguistics - Association for Computational Linguistics 2021-09, Vol.47 (3), p.1-52
Hauptverfasser: Sproat, Richard, Gutkin, Alexander
Format: Artikel
Sprache:eng
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Zusammenfassung:Taxonomies of writing systems since Gelb (1952) have classified systems based on what the written symbols represent: if they represent words or morphemes, they are ; if syllables, ; if segments, ; and so forth. Sproat (2000) and Rogers (2005) broke with tradition by splitting the logographic and aspects into two dimensions, with logography being graded rather than a categorical distinction. A system could be syllabic, and highly logographic; or alphabetic, and mostly non-logographic. This accords better with how writing systems actually work, but neither author proposed a method for measuring logography. In this article we propose a novel measure of the degree of logography that uses an attention-based sequence-to-sequence model trained to predict the of a token from its pronunciation in context. In an ideal phonographic system, the model should need to attend to only the current token in order to compute how to spell it, and this would show in the attention matrix activations. In contrast, with a logographic system, where a given pronunciation might correspond to several different spellings, the model would need to attend to a broader context. The ratio of the activation outside the token and the total activation forms the basis of our measure. We compare this with a simple lexical measure, and an entropic measure, as well as several other neural models, and argue that on balance our attention-based measure accords best with intuition about how logographic various systems are. Our work provides the first quantifiable measure of the notion of logography that accords with linguistic intuition and, we argue, provides better insight into what this notion means.
ISSN:0891-2017
1530-9312
DOI:10.1162/coli_a_00409