Opinion dynamics explain price formation in prediction markets
Opinion dynamics explain price formation in prediction markets
Prediction markets are heralded as powerful forecasting tools, but models that describe them often fail to capture the full complexity of the underlying mechanisms that drive price dynamics. To address this issue, we propose a model in which agents belong to a social network, have an opinion about the probability of a particular event to occur, and bet on the prediction market accordingly. Agents update their opinions about the event by interacting with their neighbours in the network, following the Deffuant model of opinion dynamics. Our results suggest that a simple market model that takes into account opinion formation dynamics is capable of replicating the empirical properties of historical prediction market time series, including volatility clustering and fat-tailed distribution of returns. Interestingly, the best results are obtained when there is the right level of variance in the opinions of agents. Moreover, this paper provides a new way to indirectly validate opinion dynamics models against real data by using historical data obtained from PredictIt, which is an exchange platform whose data have never been used before to validate models of opinion diffusion.
opinion dynamics, econophysics, prediction markets, complex networks, agent-based modelling
Restocchi, Valerio
5220ff2d-64fc-4e64-b202-cd57c740de72
McGroarty, Frank
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Gerding, Enrico
d9e92ee5-1a8c-4467-a689-8363e7743362
Brede, Markus
bbd03865-8e0b-4372-b9d7-cd549631f3f7
1 August 2023
Restocchi, Valerio
5220ff2d-64fc-4e64-b202-cd57c740de72
McGroarty, Frank
693a5396-8e01-4d68-8973-d74184c03072
Gerding, Enrico
d9e92ee5-1a8c-4467-a689-8363e7743362
Brede, Markus
bbd03865-8e0b-4372-b9d7-cd549631f3f7
Restocchi, Valerio, McGroarty, Frank, Gerding, Enrico and Brede, Markus
(2023)
Opinion dynamics explain price formation in prediction markets.
Entropy, 25 (8), [1152].
Abstract
Prediction markets are heralded as powerful forecasting tools, but models that describe them often fail to capture the full complexity of the underlying mechanisms that drive price dynamics. To address this issue, we propose a model in which agents belong to a social network, have an opinion about the probability of a particular event to occur, and bet on the prediction market accordingly. Agents update their opinions about the event by interacting with their neighbours in the network, following the Deffuant model of opinion dynamics. Our results suggest that a simple market model that takes into account opinion formation dynamics is capable of replicating the empirical properties of historical prediction market time series, including volatility clustering and fat-tailed distribution of returns. Interestingly, the best results are obtained when there is the right level of variance in the opinions of agents. Moreover, this paper provides a new way to indirectly validate opinion dynamics models against real data by using historical data obtained from PredictIt, which is an exchange platform whose data have never been used before to validate models of opinion diffusion.
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entropy-25-01152
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Accepted/In Press date: 26 July 2023
e-pub ahead of print date: 1 August 2023
Published date: 1 August 2023
Keywords:
opinion dynamics, econophysics, prediction markets, complex networks, agent-based modelling
Identifiers
Local EPrints ID: 480604
URI: http://eprints.soton.ac.uk/id/eprint/480604
PURE UUID: 309b9bf1-67a6-474e-9cfe-a9c2ebdd2fb4
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Date deposited: 07 Aug 2023 16:47
Last modified: 18 Mar 2024 03:02
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Contributors
Author:
Valerio Restocchi
Author:
Frank McGroarty
Author:
Enrico Gerding
Author:
Markus Brede
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