Jump detection in financial asset prices that exhibit U-shape volatility
Cecilia Mancini

TL;DR
This paper introduces a Matlab routine for detecting jumps in five-minute log-returns of financial assets, accounting for time-of-day volatility effects, and demonstrates its application on Apple stock data.
Contribution
It presents a novel implementation of the threshold jump detection method that incorporates time-of-day volatility adjustments and recursive estimation for empirical financial data.
Findings
Effective jump detection in AAPL stock prices.
Incorporation of time-of-day volatility improves detection accuracy.
Routine validated on simulated and real data.
Abstract
We describe a Matlab routine that allows us to estimate the jumps in financial asset prices using the Threshold (or Truncation) method of Mancini (2009). The routine is designed for application to five-minute log-returns. The underlying assumption is that asset prices evolve in time following an Ito semimartingale with, possibly stochastic, volatility and jumps. A log-return is likely to contain a jump if its absolute value is larger than a threshold determined by the maximum increment of the Brownian semimartingale part. The latter is particularly sensitive to the magnitude of the volatility coefficient, and from an empirical point of view, volatility levels typically depend on the time of day (TOD), with volatility being highest at the beginning and end of the day, while it is low in the middle. The first routine presented allows for an estimation of the TOD effect, and is an…
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