Predicting the trading behavior of socially connected investors

Beskrivning

We find that investors’ future trading decisions are driven by the patterns of their social neighborhood and the trading activity therein. Moreover, we provide evidence that investors weigh their social connections differently in terms of information transfer. Methodologically, we tackle the complex, cyclical patterns of investor social networks by graph neural networks, which allow us to propose a sophisticated way to predict the behavior of investors with data on their social connections. Our analysis is based on the unique data on observed social links through director (insider) positions on the same companies as well as links to family members, together with full investor-level market-wise transaction data. The data is available online at https://doi.org/10.6084/m9.figshare.20310240.v1
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Publiceringsår

2022

Typ av data

Upphovspersoner

Kestutis Baltakys - Upphovsperson

Margarita Baltakiene - Upphovsperson

Zenodo - Utgivare

Projekt

Övriga uppgifter

Vetenskapsområden

Data- och informationsvetenskap

Språk

engelska

Öppen tillgång

Öppet

Licens

License Not Specified

Nyckelord

Computer and information sciences

Ämnesord

Temporal täckning

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