Several scholars designed tools to perform the automatic scansion of poetry in many different languages; however, none of these tools deals with Old English and Old Saxon meter. Therefore, the goal of this thesis was to develop and implement a Bidirectional Long Short Term Memory model to perform the automatic scansion of Old English and Old Saxon poems. Since this model is a supervised machine learning model; the first step of this thesis was to create a metrically annotated corpus of Old English. The 6000 verses of Heliand compose this corpus, which was annotated following Suzuki's annotation of Heliand from "The Metre of Old Saxon Poetry: The Remarking of Alliterative Tradition" (2004). The second step of this thesis consisted in training a Bidirectional Long Short Term Memory, in order to learn to identify the metrical patterns of the verses and to assign to each verse its correct metrical type.

Machine Learning Algorithm for the Scansion of Old English and Old Saxon Poetry

Miani, Irene
2023/2024

Abstract

Several scholars designed tools to perform the automatic scansion of poetry in many different languages; however, none of these tools deals with Old English and Old Saxon meter. Therefore, the goal of this thesis was to develop and implement a Bidirectional Long Short Term Memory model to perform the automatic scansion of Old English and Old Saxon poems. Since this model is a supervised machine learning model; the first step of this thesis was to create a metrically annotated corpus of Old English. The 6000 verses of Heliand compose this corpus, which was annotated following Suzuki's annotation of Heliand from "The Metre of Old Saxon Poetry: The Remarking of Alliterative Tradition" (2004). The second step of this thesis consisted in training a Bidirectional Long Short Term Memory, in order to learn to identify the metrical patterns of the verses and to assign to each verse its correct metrical type.
2023-03-14
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14247/15525