Counting the Jeremiahs: Machine Learning and the Jeremiah Narratives

Scholars have long debated the redactional history of the prose sections of Jeremiah (chapters 26-45) but no consensus has been reached on the number of redactional layers in the text, the verses that comprise these layers or their sources. This study used a machine learning method to organise the c...

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Bibliographic Details
Main Author: Campbell, Nicholas J. (Author)
Format: Electronic Article
Language:English
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Published: SA ePublications 2021
In: Old Testament essays
Year: 2021, Volume: 34, Issue: 3, Pages: 718-740
Standardized Subjects / Keyword chains:B Synonym / Textual criticism / Bible. Jeremia 26-45
IxTheo Classification:HB Old Testament
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Summary:Scholars have long debated the redactional history of the prose sections of Jeremiah (chapters 26-45) but no consensus has been reached on the number of redactional layers in the text, the verses that comprise these layers or their sources. This study used a machine learning method to organise the chapters into sections based upon authorial word choices. The method used pairs of synonyms in a hierarchical clustering algorithm in the statistical program R. The goal of the study was two-fold. First, the division of the text by computerised model was used to analyse the divisions made by three other more traditional critical methods. Second, the validity of the method used in this study and previous synonym-based studies was analysed and critiqued. The conclusion is that this type of analysis can validate findings from other methods but some of the inherent biases and linguistic ambiguities make it dubious as a primary method of investigation for the Hebrew Bible. https://doi.org/10.17159/2312-3621/2021/v34n3a5
ISSN:2312-3621
Contains:Enthalten in: Old Testament essays
Persistent identifiers:DOI: 10.17159/2312-3621/2021/v34n3a5