| dc.description.abstract | This thesis proposes the limit order book (LOB) curvature as a new measure of liquidity.
Using high-frequency data on crude oil futures traded on the CME, curvature is estimated from a
power-law relation between normalized cumulative price distance and normalized cumulative
depth, capturing how liquidity is distributed across the order book. This thesis uses a vector
autoregression (VAR) model with impulse-response functions, examining the dynamic links
among curvature, depth, spreads, and returns, while two-scale realized volatility (TSRV) is used
to assess its predictive power for short-term volatility. Results show that curvature shocks reduce
depth, widen spreads, and that curvature significantly improves volatility forecasts beyond
traditional liquidity measures. The effect of scheduled news such as U.S. Energy Information
Administration (EIA) Weekly Petroleum Status Report is insignificant after controlling the
intraday seasonality, implying that liquidity dynamics are largely endogenous and resilient, with
structural adjustments restoring equilibrium after transient imbalances rather than reacting to new
information. Overall, curvature provides a unified non-linear perspective for understanding
liquidity dynamics and volatility in high-frequency futures markets, offering new insight for
market microstructure research and practice. | en_US |