Submitted:
28 January 2026
Posted:
29 January 2026
You are already at the latest version
Abstract
Keywords:
1. Introduction
- Research question 1: Is there a changepoint in the Iberian Peninsula trade link time series?
- Research question 2: Is there a specific change in the network that can explain that changepoint?
- Research question 3: If that is the case, can that change in the network be explained by known historically established factors or events?
- Research question 4: Working in the other causal direction, would this be a new factor that would explain the fall of the Roman Empire and thus the end of Antiquity and the beginning of the Middle Ages?
- 1.
- Process the dataset so that the generated time series reflects meaningfully when the associated data occurred.
- 2.
- Validate the resulting time series by resorting to internal checks, checks against another existing dataset for the same period or matches against historically established facts.
- 3.
- Use changepoint detection methods to find a changepoint in the time series, validating it via cross-check using other algorithms or methods.
- 4.
- Analyze data before and after the changepoint to narrow down the set of factors that might have contributed to it. Use again statistical analysis for doing it, from complex network analysis to other kinds of methods.
2. State of the Art
3. Materials and Methods
[...] in Portugal and Spain urban hoards more often have a high data quality.
3.1. Dataset Processing
... We cannot simply assume that the data we have are a representative sample.
- Coin groups, a dataset that contains individual information on the group of coins found in every hoard and the mint where they were minted; it includes also information on the range of time those coins were minted cross referenced to the two files below.
- Hoards, which contains information on the hoard itself, including the date it was found, the number of coins, and the place where it was found.
- Mints, that contains location information on said establishments.
3.1.1. Geolocation
- Iberian-only trade links, which contain only the trade links where the mint and the coin finding (hoard) are in the Iberian Peninsula.
- All trade links of hoards found in the Iberian Peninsula or that contain coins minted in it.
3.1.2. Processing into a Time Series
3.1.3. Description of the Final Datasets
- Time series of trade link density per year within the Iberian Peninsula.
- Time series of trade link density per year between the Iberian Peninsula and elsewhere. This time series was shortened to match the same beginning and end year as the previous one.
3.2. Overview of Coin Hoard Data
3.3. Dataset Validation
... FLAME is not a representative sample of the ancient monetary circulation.
3.4. Checking the Time Series Against Known Events
4. Results

Geiseric’s conquest of Carthage in 439 is arguably the turning-point in the "fall" of the western empire
5. Discussion and Conclusions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
| 1 | Please note that we are separating it in two words, as in the literature, to differentiate it from the other changepoint, which is usually referred to in the literature as a single word. |
| 2 | There are no hoards found in Andorra or in the UK colony of Gibraltar. |
| 3 | The dataset refers to them simply as coin groups
|
| 4 | Please read the README.md file for specific location of the datasets used here. |
| 5 | Please note the small tails before roughly the year 300 and after 750, which are probably artifacts due to the way the coin hoard date ranges are processed into what we call link density; their value indicates that they are probably coming from a single or a small amount of coin groups. Since this value is very small, its influence in the result is correspondingly small so we will perform no additional assumptions (such as starting in a period that is covered by a certain number of coin groups) to eliminate them. However, a researcher following this methodology might need to take this into account. |
| 6 | By itself, this result would open an interesting avenue to explore, but will use it here only for the purpose of validating our dataset. |
| 7 | This was the default in one of the versions of the package we used but was changed when we upgraded; adding this (currently) non-default value helped reproducibility across package versions, if sacrificing a bit usability for non-technical users. |
| 8 | [57] marks the fall season of 409 "as good as date as any for the end of Roman rule in the Iberian peninsula", due to the invasion of the Alans, Suebi and Vandals crossing the Pyrenees. |
| 9 | As a matter of fact, [57], p. 13 points to a more direct relationship: The Vandals only crossed the Pyrenees because the troops of a rebel emperor, Constantine III, allowed them; these were the troops that had previously abandoned Britain, leading to its final separation from the network. |
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| Weight | Node |
|---|---|
| 4758.3277 | United Kingdom |
| 2099.6803 | Italy |
| 1989.0296 | Turkey |
| 1781.2078 | France |
| 704.6233 | Germany |
| 572.5325 | Netherlands |
| 541.1008 | Palestinian Territory |
| 436.5597 | Greece |
| 361.5953 | Israel |
| 307.7852 | Sweden |
| Series | ADF Statistic | KPSS statistic |
|---|---|---|
| Interior links | -3.020026 | 1.593249 |
| Exterior links | -2.584684 | 2.769855 |
| Method | Changepoint year | Changepoint (filtered) | Changepoint (midpoint) |
|---|---|---|---|
| Lanzante | 491 | 477 | 460 |
| Pettitt | 491 | 477 | 460 |
| Bu | 408 | 408 | 400 |
| Br | 408 | 408 | 400 |
| Method | Changepoint year |
|---|---|
| All links, cpt.meanvar (+filtered) | 423 |
| All links, cpt.meanvar (midpoint) | 420 |
| All Links, cpt.meanvar (PELT) | 408 |
| All links, Lanzante/Pettitt | 491 |
| All links, Lanzante/Pettitt (filtered) | 477 |
| Internal links, cpt.mean (+filtered) | 395 |
| Multi-sequence, e.divisive (+filtered) | 409 |
| Multi-sequence, e.divisive (midpoint) | 410 |
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