The consequences of errors in trade classification are potentially worse than documented in existing empirical research. This is demonstrated by the use of a formal model of classification errors in a generic regression-type microstructure model. The bias is a function of the probability of trade-reversal in addition to the probability of an error. These parameters depend on stock and trade characteristics in addition to trading procedures and trade reporting standards. The bias is highly sensitive to the background variables, thus causing concern about the validity of empirical studies applying possibly erroneous classification methods without controlling for such effects. The theory, outlined in the paper, predicts that given empirical ev...
It is a stylized fact that trade indicator models (e.g. Madhavan, Richardson, and Roomans (1997) an...
It is a stylized fact that trade indicator models (e.g. Madhavan, Richardson, and Roomans (1997) an...
It is a stylized fact that trade indicator models (e.g. Madhavan, Richardson, and Roomans (1997) an...
To the best of our knowledge we are the first to test a broad set of trade classification rules on t...
To the best of our knowledge we are the first to test a broad set of trade classification rules on t...
© 2016.Elsevier B.V. How best to discern trading intentions from market data? We examine the accurac...
<p>(<b>a</b>) Fraction of positive trades. Mirror trade has the highest fraction of positive trades....
We use recent low-latency data from Euronext Paris for which we can identify the true trade initiato...
Unit value export and import indices compiled from returns to customs authorities are often used as ...
TRADE regression is a two-step reweighted least squares method. The name comes from TRim And DElete....
Realised Stochastic Volatility model of Koopman and Scharth (2011) is applied to the five stocks lis...
TRADE regression is a two-step reweighted least squares method. The name comes from TRim And DElete....
The problem of classifying trades as buys or sells is examined. I propose estimated quotes for midpo...
TRADE regression is a two-step reweighted least squares method. The name comes from TRim And DElete....
It is a stylized fact that trade indicator models (e.g. Madhavan, Richardson, and Roomans (1997) an...
It is a stylized fact that trade indicator models (e.g. Madhavan, Richardson, and Roomans (1997) an...
It is a stylized fact that trade indicator models (e.g. Madhavan, Richardson, and Roomans (1997) an...
It is a stylized fact that trade indicator models (e.g. Madhavan, Richardson, and Roomans (1997) an...
To the best of our knowledge we are the first to test a broad set of trade classification rules on t...
To the best of our knowledge we are the first to test a broad set of trade classification rules on t...
© 2016.Elsevier B.V. How best to discern trading intentions from market data? We examine the accurac...
<p>(<b>a</b>) Fraction of positive trades. Mirror trade has the highest fraction of positive trades....
We use recent low-latency data from Euronext Paris for which we can identify the true trade initiato...
Unit value export and import indices compiled from returns to customs authorities are often used as ...
TRADE regression is a two-step reweighted least squares method. The name comes from TRim And DElete....
Realised Stochastic Volatility model of Koopman and Scharth (2011) is applied to the five stocks lis...
TRADE regression is a two-step reweighted least squares method. The name comes from TRim And DElete....
The problem of classifying trades as buys or sells is examined. I propose estimated quotes for midpo...
TRADE regression is a two-step reweighted least squares method. The name comes from TRim And DElete....
It is a stylized fact that trade indicator models (e.g. Madhavan, Richardson, and Roomans (1997) an...
It is a stylized fact that trade indicator models (e.g. Madhavan, Richardson, and Roomans (1997) an...
It is a stylized fact that trade indicator models (e.g. Madhavan, Richardson, and Roomans (1997) an...
It is a stylized fact that trade indicator models (e.g. Madhavan, Richardson, and Roomans (1997) an...