Investigating Retail Investors’ Decisions in a Social Network using Agent-Based Models

Research output: Contribution to conferenceAbstractpeer-review

Standard Standard

Investigating Retail Investors’ Decisions in a Social Network using Agent-Based Models. / He, Heather; Liu, Junda.
2023. Abstract from The Operational Research Society's Annual Conference OR65, Bath, United Kingdom.

Research output: Contribution to conferenceAbstractpeer-review

HarvardHarvard

He, H & Liu, J 2023, 'Investigating Retail Investors’ Decisions in a Social Network using Agent-Based Models', The Operational Research Society's Annual Conference OR65, Bath, United Kingdom, 12/09/23 - 14/09/23.

APA

He, H., & Liu, J. (2023). Investigating Retail Investors’ Decisions in a Social Network using Agent-Based Models. Abstract from The Operational Research Society's Annual Conference OR65, Bath, United Kingdom.

CBE

He H, Liu J. 2023. Investigating Retail Investors’ Decisions in a Social Network using Agent-Based Models. Abstract from The Operational Research Society's Annual Conference OR65, Bath, United Kingdom.

MLA

He, Heather and Junda Liu Investigating Retail Investors’ Decisions in a Social Network using Agent-Based Models. The Operational Research Society's Annual Conference OR65, 12 Sept 2023, Bath, United Kingdom, Abstract, 2023.

VancouverVancouver

He H, Liu J. Investigating Retail Investors’ Decisions in a Social Network using Agent-Based Models. 2023. Abstract from The Operational Research Society's Annual Conference OR65, Bath, United Kingdom.

Author

He, Heather ; Liu, Junda. / Investigating Retail Investors’ Decisions in a Social Network using Agent-Based Models. Abstract from The Operational Research Society's Annual Conference OR65, Bath, United Kingdom.

RIS

TY - CONF

T1 - Investigating Retail Investors’ Decisions in a Social Network using Agent-Based Models

AU - He, Heather

AU - Liu, Junda

PY - 2023/9/12

Y1 - 2023/9/12

N2 - With the escalating influence of social media and innovative social trading platforms on financial markets, understanding the behavioural patterns of retail investors becomes increasingly imperative. This study employs an Agent-Based Simulation approach (ABS) to scrutinise the retail investors’ behaviour in a social network. We built on the simulation model developed by Feng et al. (2012) [Feng, L.; Li, B.; Podobnik, B.; and Stanley, H.E. (2012). Linking agent-based models and stochastic models of financial markets. PNAS, 109 (22) 8388-8393], and proposed an innovative opinion clustering process. In particular, retail investors are divided into influencers and followers, where followers are further segregated into trend-chasers, contrarian traders, and noise traders. Trend-chasers buy after positive signals released by their focal influencers and sell after negative; contrarian traders behave conversely; and noise traders, acting independently of incoming signals, add an unpredictable element to the system. The results suggest that our model provides a closer reproduction of “fat” tails of the empirical financial market data compared to the baseline model developed by Feng et al. (2012). Our study provides a nuanced understanding of retail investors’ behaviour. It contributes to a more comprehensive portrayal of the complex financial decision-making in the digital age.

AB - With the escalating influence of social media and innovative social trading platforms on financial markets, understanding the behavioural patterns of retail investors becomes increasingly imperative. This study employs an Agent-Based Simulation approach (ABS) to scrutinise the retail investors’ behaviour in a social network. We built on the simulation model developed by Feng et al. (2012) [Feng, L.; Li, B.; Podobnik, B.; and Stanley, H.E. (2012). Linking agent-based models and stochastic models of financial markets. PNAS, 109 (22) 8388-8393], and proposed an innovative opinion clustering process. In particular, retail investors are divided into influencers and followers, where followers are further segregated into trend-chasers, contrarian traders, and noise traders. Trend-chasers buy after positive signals released by their focal influencers and sell after negative; contrarian traders behave conversely; and noise traders, acting independently of incoming signals, add an unpredictable element to the system. The results suggest that our model provides a closer reproduction of “fat” tails of the empirical financial market data compared to the baseline model developed by Feng et al. (2012). Our study provides a nuanced understanding of retail investors’ behaviour. It contributes to a more comprehensive portrayal of the complex financial decision-making in the digital age.

KW - Retail investors

KW - Agent based model

KW - Social network

M3 - Abstract

T2 - The Operational Research Society's Annual Conference OR65

Y2 - 12 September 2023 through 14 September 2023

ER -