Limit Order Book Reconstruction and Beyond: An Application to Istanbul Stock Exchange

Author(s):  
Cumhur Ekinci
2005 ◽  
Vol 05 (02) ◽  
pp. L209-L216 ◽  
Author(s):  
FABRIZIO LILLO ◽  
J. DOYNE FARMER

Recent empirical analyses have shown that liquidity fluctuations are important for understanding large price changes of financial assets. These liquidity fluctuations are quantified by gaps in the order book, corresponding to blocks of adjacent price levels containing no quotes. Here we study the statistical properties of the state of the limit order book for 16 stocks traded at the London Stock Exchange (LSE). We show that the time series of the first three gaps are characterized by fat tails in the probability distribution and are described by long memory processes.


2014 ◽  
Vol 40 (3) ◽  
pp. 218-233
Author(s):  
Cheng-Yi Chien ◽  
Tzu-Hsiang Liao ◽  
Hsiu-Chuan Lee

Purpose – This paper aims to examine the impact of a reduction in tick size on the information content of the order book by using data from the Taiwan Stock Exchange (TWSE). Design/methodology/approach – To estimate the information content of the order book, the modified information share proposed by Hasbrouck and extended by Lien and Shrestha is used in this paper. Findings – The empirical results show that the limit order book is informative. Furthermore, the results indicate that a reduction in tick size will decrease the information content of the order book and the decrease in the information content of the order book is positively related to the thinner order book. Originality/value – This paper suggests that, in order to enhance the information content of the order book, the TWSE should disclose the full limit order book.


2008 ◽  
Vol 17 (2) ◽  
pp. 291-311 ◽  
Author(s):  
Nuttawat Visaltanachoti ◽  
Charlie Charoenwong ◽  
David K. Ding

Author(s):  
Matteo Aquilina ◽  
Eric Budish ◽  
Peter O’Neill

Abstract We use stock exchange message data to quantify the negative aspect of high-frequency trading, known as “latency arbitrage.” The key difference between message data and widely familiar limit order book data is that message data contain attempts to trade or cancel that fail. This allows the researcher to observe both winners and losers in a race, whereas in limit order book data you cannot see the losers, so you cannot directly see the races. We find that latency arbitrage races are very frequent (about one per minute per symbol for FTSE 100 stocks), extremely fast (the modal race lasts 5–10 millionths of a second), and account for a remarkably large portion of overall trading volume (about 20%). Race participation is concentrated, with the top six firms accounting for over 80% of all race wins and losses. The average race is worth just a small amount (about half a price tick), but because of the large volumes the stakes add up. Our main estimates suggest that races constitute roughly one-third of price impact and the effective spread (key microstructure measures of the cost of liquidity), that latency arbitrage imposes a roughly 0.5 basis point tax on trading, that market designs that eliminate latency arbitrage would reduce the market’s cost of liquidity by 17%, and that the total sums at stake are on the order of $5 billion per year in global equity markets alone.


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