CLLGOct 27, 2021

Syllabic Quantity Patterns as Rhythmic Features for Latin Authorship Attribution

arXiv:2110.14203v19 citations
Originality Incremental advance
AI Analysis

This work addresses authorship attribution for Latin prose texts, offering an incremental improvement by incorporating rhythmic features.

The study tackled the problem of distinguishing Latin prose authors by using syllabic quantity patterns as rhythmic features, and found that these features improved discrimination across three datasets with two machine learning methods.

It is well known that, within the Latin production of written text, peculiar metric schemes were followed not only in poetic compositions, but also in many prose works. Such metric patterns were based on so-called syllabic quantity, i.e., on the length of the involved syllables, and there is substantial evidence suggesting that certain authors had a preference for certain metric patterns over others. In this research we investigate the possibility to employ syllabic quantity as a base for deriving rhythmic features for the task of computational authorship attribution of Latin prose texts. We test the impact of these features on the authorship attribution task when combined with other topic-agnostic features. Our experiments, carried out on three different datasets, using two different machine learning methods, show that rhythmic features based on syllabic quantity are beneficial in discriminating among Latin prose authors.

Code Implementations1 repo
Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes