Artigo Acesso aberto

Estimating the Probability of Informed Trading - Does Trade Misclassification Matter?

2003; RELX Group (Netherlands); Linguagem: Inglês

10.2139/ssrn.367041

ISSN

1556-5068

Autores

Joachim Grammig, Erik Theissen,

Tópico(s)

Market Dynamics and Volatility

Resumo

Easley/Kiefer/O'Hara/Paperman (1996) (EKOP) have proposed an empirical methodology that allows to estimate the probability of informed trading and that has subsequently been used to address a wide range of issues in market microstructure. The data needed for estimation is the number of buyer- and seller-initiated trades. This information often has to be inferred by applying trade classification algorithms like the one proposed by Lee/Ready (1991). These algorithms are known to be inaccurate. In this paper we perform extensive simulations to show that inaccurate trade classification leads to biased estimation of the probability of informed trading when applying the EKOP methodology. The estimate is biased downward and the magnitude of the bias is related to the trading intensity of the stock in question. Scrutinizing prior empirical studies using the EKOP methodology, we conclude that the bias may severely affect the results of empirical microstructure studies.

Referência(s)