Abstract
One of the key artefacts of epigraphy in Southeast Asia is the Singapore Stone inscription, which is, unfortunately, in a poor condition. There are huge spaces that separate the readable characters, rendering the text incomplete. This renders a traditional reconstruction and interpretation by philologists extremely challenging. We consider epigraphic restoration as a data-restoration task in this paper. We represent the inscription as a system of categorical symbols, in keeping with the original spatial disposition of characters and spaces. Our model is trained in a conservative, data-driven manner using the observed symbols to learn the local transition statistics, and it takes advantage of this information to make plausible predictions of the most likely characters in missing sequences that are short and well-constrained. The procedure generates a probabilistic hypothesis of restoration, which can be audited, as opposed to one definitive reading. The validation of masked-character recovery demonstrates that the model has a mean top-one error of 53.3%, which represents a significantly worse performance compared with simple baseline methods. The process is focused on interaction and transparency with experts. It relies upon assurance scores and prioritised alternative completions of each proposed reconstruction, as a useful means to produce hypotheses in computational epigraphy and the digital humanities.
| Original language | English |
|---|---|
| Article number | 170 |
| Pages (from-to) | 1-19 |
| Number of pages | 19 |
| Journal | Information (Switzerland) |
| Volume | 17 |
| Issue number | 2 |
| DOIs | |
| Publication status | Published - 7 Feb 2026 |
UN SDGs
This output contributes to the following UN Sustainable Development Goals (SDGs)
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SDG 4 Quality Education
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SDG 15 Life on Land
Keywords
- Singapore Stone
- Language Deciphering
- Digital Humanities
- Historical Linguistics
- Epigraphy
Projects
- 1 Finished
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Unveiling the Secrets of the Singapore Stone: A Digital Philology Investigation
2/06/25 → 29/08/25
Project: Internal Research Project
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Cracking the Code: How a "Prediction Machine" is Resurrecting the Singapore Stone
PERONO CACCIAFOCO, F., 12 Mar 2026, 1 p. Jakarta, Indonesia : The Conversation Trust (UK).Research output: Other contribution › peer-review
Open Access -
UPDATED - Data-Driven Reconstruction of the Singapore Stone: A Numerical Imputation Method of Epigraphic Restoration
Zahra, T., Perono Cacciafoco, F. & Zamir, M. T., 7 Feb 2026, In: Information (Switzerland). 17, 2, p. 1-19 19 p., 170.Research output: Contribution to journal › Article › peer-review
Open Access -
The Lonely Life of a Glyph-breaker
PERONO CACCIAFOCO, F., 7 Apr 2025, 18 p. Melbourne, Australia : Aeon Media Group Ltd.Research output: Other contribution › peer-review
Open AccessFile
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Unveiling the Secrets of the Singapore Stone: A Digital Philology Investigation
PERONO CACCIAFOCO, F. (Participant)
10 Jun 2025 → 28 Aug 2025Activity: Other
File -
Unveiling the Secrets of the Singapore Stone: A Digital Philology Investigation
PERONO CACCIAFOCO, F. (Supervisor)
10 Jun 2025 → 28 Aug 2025Activity: Supervision › Completed SURF Project
File -
Unveiling the Secrets of the Singapore Stone: A Digital Philology Investigation (Research Grant)
PERONO CACCIAFOCO, F. (Participant)
2 Jun 2025 → 29 Aug 2025Activity: Other
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