Ithaca

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Revision as of 17:37, 31 May 2022 by TheaSommerschield (talk | contribs) (added link)
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Authors

Yannis Assael*, Thea Sommerschield*, Brendan Shillingford, Mahyar Bordbar, John Pavlopoulos, Marita Chatzipanagiotou, Ion Androutsopoulos, Jonathan Prag & Nando de Freitas.

Institutions and Partners

DeepMind, Ca' Foscari University of Venice (PythiaPlus Project, Marie Skłodowska-Curie grant agreement No. 101026185), Athens University of Economics and Business, University of Oxford, Google Cloud, Google Arts and Culture.

Description

Ithaca: Restoring and attributing ancient texts using deep neural networks

Ancient history relies on disciplines such as epigraphy—the study of inscribed texts known as inscriptions—for evidence of the thought, language, society and history of past civilizations. However, over the centuries, many inscriptions have been damaged to the point of illegibility, transported far from their original location and their date of writing is steeped in uncertainty. Here we present Ithaca, a deep neural network for the textual restoration, geographical attribution and chronological attribution of ancient Greek inscriptions. Ithaca is designed to assist and expand the historian’s workflow. The architecture of Ithaca focuses on collaboration, decision support and interpretability. While Ithaca alone achieves 62% accuracy when restoring damaged texts, the use of Ithaca by historians improved their accuracy from 25% to 72%, confirming the synergistic effect of this research tool. Ithaca can attribute inscriptions to their original location with an accuracy of 71% and can date them to less than 30 years of their ground-truth ranges, redating key texts of Classical Athens and contributing to topical debates in ancient history. This research shows how models such as Ithaca can unlock the cooperative potential between artificial intelligence and historians, transformationally impacting the way that we study and write about one of the most important periods in human history.

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To cite this work:

Assael, Y., Sommerschield, T., Shillingford, B. et al. Restoring and attributing ancient texts using deep neural networks. Nature 603, 280–283 (2022). https://doi.org/10.1038/s41586-022-04448-z.

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Corresponding authors

  • thea {dot} sommerschield {at} unive {dot} it
  • assael {at} google {dot} com