Abstract

Abstract This article highlights the usual overlook in the literature of regular occurrences of low-frequency words (hapax legomena) in specific authors’ texts. This overlook arises from a linguistic assumption of non-systematic and context-dependent low-frequency word occurrences in extensive texts, and from the tendency of SVM methods to mark low-frequency words as irrelevant compared to the more frequent lexicon (e.g. Boukhaled, M. A. and Ganascia, J.-G. (2015). Using function words for authorship attribution: bag-of-words vs. sequential rules. In The 11th International Workshop on Natural Language Processing and Cognitive Science, October 2014, Venice, Italy. de Gruyter, Natural Language Processing and Cognitive Science Proceedings 2014, pp. 115–122.). Many approaches to authorship attribution are based on the n most frequent ‘function words’, which (1) are grammatically essential, frequent, and therefore included in each text; (2) are not affected by the topic of the text; and (3) reflect the unintentional linguistic activity of the author (Binongo, J. N. G. (2003). Who wrote the 15th book of Oz? An application of multivariate analysis to authorship attribution. Chance, 16(2): 9–17). Hapax legomena meet these conditions as well, except frequency (Baayen, H., van Halteren, H., and Tweedie, F. (1996). Outside the cave of shadows: using syntactic annotation to enhance authorship attribution. Literary and Linguistic Computing, 11(3): 121–32). We test the hypothesis that hapax legomena may work for purposes of authorship attribution based on selecting only hapaxes from whole texts (or randomly selected tokens of hapaxes) while using a specific pre-processed input (eigendecomposition of a cosine distance matrix) to the SVM classifier. This method evaluated the attribution of texts from fourteen Czech authors (yielding ninety-one pairs in total) and Evert, S., Proisl, T., Jannidis, F. et al. (2017). Understanding and explaining Delta measures for authorship attribution. Digital Scholarship in the Humanities, 32(2): 4–16 data set, and proved itself a suitable tool for identifying authors of previously unknown texts. Our method identifies a sparse network of regular occurrences of low-frequency words in different authors’ texts.

Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call