Accuracy-Risk Trade-Off Due to Social Learning in Crowd-Sourced Financial Predictions

<jats:p>A critical question relevant to the increasing importance of crowd-sourced-based finance is how to optimize collective information processing and decision-making. Here, we investigate an often under-studied aspect of the performance of online traders: beyond focusing on just accuracy,...

ver descrição completa

Detalhes bibliográficos
Principais autores: Adjodah, Dhaval, Leng, Yan, Chong, Shi Kai, Krafft, PM, Moro, Esteban, Pentland, Alex
Outros Autores: Program in Media Arts and Sciences (Massachusetts Institute of Technology)
Formato: Artigo
Idioma:English
Publicado em: MDPI AG 2022
Acesso em linha:https://hdl.handle.net/1721.1/146591
_version_ 1826191672294244352
author Adjodah, Dhaval
Leng, Yan
Chong, Shi Kai
Krafft, PM
Moro, Esteban
Pentland, Alex
author2 Program in Media Arts and Sciences (Massachusetts Institute of Technology)
author_facet Program in Media Arts and Sciences (Massachusetts Institute of Technology)
Adjodah, Dhaval
Leng, Yan
Chong, Shi Kai
Krafft, PM
Moro, Esteban
Pentland, Alex
author_sort Adjodah, Dhaval
collection MIT
description <jats:p>A critical question relevant to the increasing importance of crowd-sourced-based finance is how to optimize collective information processing and decision-making. Here, we investigate an often under-studied aspect of the performance of online traders: beyond focusing on just accuracy, what gives rise to the trade-off between risk and accuracy at the collective level? Answers to this question will lead to designing and deploying more effective crowd-sourced financial platforms and to minimizing issues stemming from risk such as implied volatility. To investigate this trade-off, we conducted a large online Wisdom of the Crowd study where 2037 participants predicted the prices of real financial assets (S&amp;P 500, WTI Oil and Gold prices). Using the data collected, we modeled the belief update process of participants using models inspired by Bayesian models of cognition. We show that subsets of predictions chosen based on their belief update strategies lie on a Pareto frontier between accuracy and risk, mediated by social learning. We also observe that social learning led to superior accuracy during one of our rounds that occurred during the high market uncertainty of the Brexit vote.</jats:p>
first_indexed 2024-09-23T08:59:33Z
format Article
id mit-1721.1/146591
institution Massachusetts Institute of Technology
language English
last_indexed 2024-09-23T08:59:33Z
publishDate 2022
publisher MDPI AG
record_format dspace
spelling mit-1721.1/1465912022-11-23T03:42:34Z Accuracy-Risk Trade-Off Due to Social Learning in Crowd-Sourced Financial Predictions Adjodah, Dhaval Leng, Yan Chong, Shi Kai Krafft, PM Moro, Esteban Pentland, Alex Program in Media Arts and Sciences (Massachusetts Institute of Technology) <jats:p>A critical question relevant to the increasing importance of crowd-sourced-based finance is how to optimize collective information processing and decision-making. Here, we investigate an often under-studied aspect of the performance of online traders: beyond focusing on just accuracy, what gives rise to the trade-off between risk and accuracy at the collective level? Answers to this question will lead to designing and deploying more effective crowd-sourced financial platforms and to minimizing issues stemming from risk such as implied volatility. To investigate this trade-off, we conducted a large online Wisdom of the Crowd study where 2037 participants predicted the prices of real financial assets (S&amp;P 500, WTI Oil and Gold prices). Using the data collected, we modeled the belief update process of participants using models inspired by Bayesian models of cognition. We show that subsets of predictions chosen based on their belief update strategies lie on a Pareto frontier between accuracy and risk, mediated by social learning. We also observe that social learning led to superior accuracy during one of our rounds that occurred during the high market uncertainty of the Brexit vote.</jats:p> 2022-11-22T18:46:17Z 2022-11-22T18:46:17Z 2021 2022-11-22T18:39:05Z Article http://purl.org/eprint/type/JournalArticle https://hdl.handle.net/1721.1/146591 Adjodah, Dhaval, Leng, Yan, Chong, Shi Kai, Krafft, PM, Moro, Esteban et al. 2021. "Accuracy-Risk Trade-Off Due to Social Learning in Crowd-Sourced Financial Predictions." Entropy, 23 (7). en 10.3390/E23070801 Entropy Creative Commons Attribution 4.0 International license https://creativecommons.org/licenses/by/4.0/ application/pdf MDPI AG MDPI
spellingShingle Adjodah, Dhaval
Leng, Yan
Chong, Shi Kai
Krafft, PM
Moro, Esteban
Pentland, Alex
Accuracy-Risk Trade-Off Due to Social Learning in Crowd-Sourced Financial Predictions
title Accuracy-Risk Trade-Off Due to Social Learning in Crowd-Sourced Financial Predictions
title_full Accuracy-Risk Trade-Off Due to Social Learning in Crowd-Sourced Financial Predictions
title_fullStr Accuracy-Risk Trade-Off Due to Social Learning in Crowd-Sourced Financial Predictions
title_full_unstemmed Accuracy-Risk Trade-Off Due to Social Learning in Crowd-Sourced Financial Predictions
title_short Accuracy-Risk Trade-Off Due to Social Learning in Crowd-Sourced Financial Predictions
title_sort accuracy risk trade off due to social learning in crowd sourced financial predictions
url https://hdl.handle.net/1721.1/146591
work_keys_str_mv AT adjodahdhaval accuracyrisktradeoffduetosociallearningincrowdsourcedfinancialpredictions
AT lengyan accuracyrisktradeoffduetosociallearningincrowdsourcedfinancialpredictions
AT chongshikai accuracyrisktradeoffduetosociallearningincrowdsourcedfinancialpredictions
AT krafftpm accuracyrisktradeoffduetosociallearningincrowdsourcedfinancialpredictions
AT moroesteban accuracyrisktradeoffduetosociallearningincrowdsourcedfinancialpredictions
AT pentlandalex accuracyrisktradeoffduetosociallearningincrowdsourcedfinancialpredictions