Bayesian inference for partial orders from random linear extensions: power relations from 12th century royal acta
Bayesian inference for partial orders from random linear extensions: power relations from 12th century royal acta
In the eleventh and twelfth centuries in England, Wales and Normandy, royal acta were legal documents in which witnesses were listed in order of social status. Any bishops present were listed as a group. For our purposes each witness-list is an ordered permutation of bishop names with a known date or date-range. Changes over time in the order bishops are listed may reflect changes in their authority. Historians would like to detect and quantify these changes. There is no reason to assume that the underlying social order, which constrains bishop-order, within lists is a complete order. We therefore model the evolving social order as an evolving partial ordered set or poset.
We construct a hidden Markov model for these data. The hidden state is an evolving poset (the evolving social hierarchy) and the emitted data are random total orders (dated lists) respecting the poset present at the time the order was observed. This generalises existing models for rank-order data such as Mallows and Plackett–Luce. We account for noise via a random “queue-jumping” process. Our latent-variable prior for the random process of posets is marginally consistent. A parameter controls poset depth, and actor-covariates inform the position of actors in the hierarchy. We fit the model, estimate posets and find evidence for changes in status over time. We interpret our results in terms of court politics. Simpler models, based on bucket orders and vertex-series-parallel orders, are rejected. We compare our results with a time-series extension of the Plackett–Luce model. Our software is publicly available.
Bayesian analysis, Partial order, hidden Markov model, royal acta, social hierarchy
1663-1690
Nicholls, Geoff K.
f47f6dea-a85d-4a61-9edd-b509292dbb07
Lee, Jeong Eun
e743867f-185b-4446-a444-c9ed9336ad40
Karn, Nicholas
e5a315e3-36a2-4c0d-b535-3c8bead463da
Johnson, David
fdbf8d42-98e8-471e-b40b-71b49c1d760e
Huang, Rukuang
65bb72ad-8bbc-4e20-a266-e80f518a7c1f
Muir-Watt, Alexis
4e2c17b3-24c1-4eef-93ac-dbdb299f808d
1 June 2025
Nicholls, Geoff K.
f47f6dea-a85d-4a61-9edd-b509292dbb07
Lee, Jeong Eun
e743867f-185b-4446-a444-c9ed9336ad40
Karn, Nicholas
e5a315e3-36a2-4c0d-b535-3c8bead463da
Johnson, David
fdbf8d42-98e8-471e-b40b-71b49c1d760e
Huang, Rukuang
65bb72ad-8bbc-4e20-a266-e80f518a7c1f
Muir-Watt, Alexis
4e2c17b3-24c1-4eef-93ac-dbdb299f808d
Nicholls, Geoff K., Lee, Jeong Eun, Karn, Nicholas, Johnson, David, Huang, Rukuang and Muir-Watt, Alexis
(2025)
Bayesian inference for partial orders from random linear extensions: power relations from 12th century royal acta.
The Annals of Applied Statistics, 19 (2), .
(doi:10.1214/24-AOAS2002).
Abstract
In the eleventh and twelfth centuries in England, Wales and Normandy, royal acta were legal documents in which witnesses were listed in order of social status. Any bishops present were listed as a group. For our purposes each witness-list is an ordered permutation of bishop names with a known date or date-range. Changes over time in the order bishops are listed may reflect changes in their authority. Historians would like to detect and quantify these changes. There is no reason to assume that the underlying social order, which constrains bishop-order, within lists is a complete order. We therefore model the evolving social order as an evolving partial ordered set or poset.
We construct a hidden Markov model for these data. The hidden state is an evolving poset (the evolving social hierarchy) and the emitted data are random total orders (dated lists) respecting the poset present at the time the order was observed. This generalises existing models for rank-order data such as Mallows and Plackett–Luce. We account for noise via a random “queue-jumping” process. Our latent-variable prior for the random process of posets is marginally consistent. A parameter controls poset depth, and actor-covariates inform the position of actors in the hierarchy. We fit the model, estimate posets and find evidence for changes in status over time. We interpret our results in terms of court politics. Simpler models, based on bucket orders and vertex-series-parallel orders, are rejected. We compare our results with a time-series extension of the Plackett–Luce model. Our software is publicly available.
Text
AOAS2307-011R1A0
- Accepted Manuscript
More information
e-pub ahead of print date: 28 May 2025
Published date: 1 June 2025
Keywords:
Bayesian analysis, Partial order, hidden Markov model, royal acta, social hierarchy
Identifiers
Local EPrints ID: 503450
URI: http://eprints.soton.ac.uk/id/eprint/503450
ISSN: 1932-6157
PURE UUID: e3321572-defb-400b-8588-d8113d6a1038
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Date deposited: 01 Aug 2025 16:31
Last modified: 17 Sep 2025 17:06
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Contributors
Author:
Geoff K. Nicholls
Author:
Jeong Eun Lee
Author:
David Johnson
Author:
Rukuang Huang
Author:
Alexis Muir-Watt
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