Machine Learning for Ancient Languages: A Survey

Author:

Sommerschield Thea1,Assael Yannis2,Pavlopoulos John3,Stefanak Vanessa4,Senior Andrew5,Dyer Chris6,Bodel John7,Prag Jonathan8,Androutsopoulos Ion9,de Freitas Nando10

Affiliation:

1. Ca’ Foscari University of Venice, Department of Humanities. thea.sommerschield@unive.it

2. Google DeepMind. yannisassael@google.com

3. Athens University of Economics and Business. annis@aueb.gr

4. Google DeepMind

5. Google DeepMind. andrewsenior@google.com

6. Google DeepMind. cdyer@google.com

7. Brown University Classics Faculty. John_Bodel@brown.edu

8. University of Oxford, Faculty of Classics. jonathan.prag@merton.ox.ac.uk

9. Athens University of Economics and Business, Department of Informatics. ion@aueb.gr

10. Google DeepMind. nandodefreitas@google.com

Abstract

Abstract Ancient languages preserve the cultures and histories of the past. However, their study is fraught with difficulties, and experts must tackle a range of challenging text-based tasks, from deciphering lost languages to restoring damaged inscriptions, to determining the authorship of works of literature. Technological aids have long supported the study of ancient texts, but in recent years advances in artificial intelligence and machine learning have enabled analyses on a scale and in a detail that are reshaping the field of humanities, similarly to how microscopes and telescopes have contributed to the realm of science. This article aims to provide a comprehensive survey of published research using machine learning for the study of ancient texts written in any language, script, and medium, spanning over three and a half millennia of civilizations around the ancient world. To analyze the relevant literature, we introduce a taxonomy of tasks inspired by the steps involved in the study of ancient documents: digitization, restoration, attribution, linguistic analysis, textual criticism, translation, and decipherment. This work offers three major contributions: first, mapping the interdisciplinary field carved out by the synergy between the humanities and machine learning; second, highlighting how active collaboration between specialists from both fields is key to producing impactful and compelling scholarship; third, highlighting promising directions for future work in this field. Thus, this work promotes and supports the continued collaborative impetus between the humanities and machine learning.

Publisher

MIT Press

Subject

Artificial Intelligence,Computer Science Applications,Linguistics and Language,Language and Linguistics

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