Build, test, and implement statistical arbitrage trading strategies with MATLAB

Statistical arbitrage, also referred to as stat arb, is a computationally intensive approach to algorithmically trading financial market assets such as equities and commodities. It involves the simultaneous buying and selling of security portfolios according to predefined or adaptive statistical models.

Statistical arbitrage techniques are modern variations of the classic cointegration-based pairs trading strategy. This strategy is based on short-term mean reversion principles coupled with hedging strategies that take care of overall market risk.

Hedge funds, mutual funds, and proprietary trading firms build, test, and implement trading strategies based on statistical arbitrage. An effective workflow entails:

For more information, see MATLAB® and toolboxes for finance, econometrics, statistics, optimization, and trading.

See also: cointegration, equity trading, commodities trading, financial risk management, portfolio optimization, Financial Toolbox, Econometrics Toolbox, Trading Toolbox, Datafeed Toolbox, swing trading

Apply Machine Learning and Big Data Techniques to Improve Investment Performance