The position profiles of order cancellations in an emerging stock market
Gao-Feng Gu (ECUST), Xiong Xiong (TJU), Fei Ren (ECUST), Wei-Xing Zhou, (ECUST), Wei Zhang (TJU)

TL;DR
This study analyzes the distribution and behavior of order cancellations in an emerging stock market, revealing universal patterns and scaling laws that inform models of order-driven markets.
Contribution
It provides the first detailed empirical analysis of order cancellation positions in an emerging market, uncovering universal distribution patterns and scaling behaviors.
Findings
Cancellation positions follow a log-normal distribution.
Profiles exhibit power-law scaling after normalization.
Cancellation profiles are similar across different stocks.
Abstract
Order submission and cancellation are two constituent actions of stock trading behaviors in order-driven markets. Order submission dynamics has been extensively studied for different markets, while order cancellation dynamics is less understood. There are two positions associated with a cancellation, that is, the price level in the limit-order book (LOB) and the position in the queue at each price level. We study the profiles of these two order cancellation positions through rebuilding the limit-order book using the order flow data of 23 liquid stocks traded on the Shenzhen Stock Exchange in the year 2003. We find that the profiles of relative price levels where cancellations occur obey a log-normal distribution. After normalizing the relative price level by removing the factor of order numbers stored at the price level, we find that the profiles exhibit a power-law scaling behavior on…
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Taxonomy
TopicsComplex Systems and Time Series Analysis · Innovation Diffusion and Forecasting · Stock Market Forecasting Methods
