StatArbTools

A set of tools useful in exploring statistical arbitrage


License
MIT
Install
pip install StatArbTools==0.0.5

Documentation

StatArbTools

StatArbTools is a Python library primarily for determining if a pair of time series are cointegrated. It also includes tools for generating an array of log returns from a price array, looking for a linear relationship, and creating a potentially stationary distribution.

Installation

Use the package manager pip to install StatArbTools

pip install StatArbTools

You must also have numpy, scikitlearn, statsmodels, and matplot lib installed

pip install numpy
pip install sklearn
pip install statsmodels
pip install matplotlib

Usage

import StatArbTools

StatArbTools.gen_log_returns(numpy_time_series_1, numpy_time_series_2) # returns numpy arrays of the log returns for each time series
StatArbTools.gen_linear_relationship(numpy_log_returns_1, numpy_log_returns_2) # returns the coefficient from a linear regression between the two log returns arrays
StatArbTools.gen_stationary_distr(numpy_log_returns_1, numpy_log_returns_2, coefficient) # returns the linear combination of the two log returns arrays based on a linear regression coefficient
StatArbTools.test_stationarity(numpy_time_series_1, numpy_time_series_2) # returns "Rejected null hypothesis" if the null hypothesis of an Augmented Dickey Fuller test is rejected and "Failed to reject" otherwise. It also returns the p-value of the ADF test.
StatArbTools.find_pairs(ticker_data_dict) # returns a list of lists of the results of StatArbTools.test_stationarity for every possible pair of tickers in the dictionary
StatArbTools.portfolio_builder(ticker_data_dict, results) # returns a list of lists of every pair that passed the Augmented Dickey Fuller test and the profitability rating of the pair
StatArbTools.profitability_rating(stationary_distr) # returns a general metric of how profitable a pairs trade would be (note: this is not in dollars, just a means of ranking based on volatility)
StatArbTools.plot(stationary_distribution) # plots the passed distribution

gen_log_returns takes a numpy array of a time series as a parameter and returns a numpy array of the natural log of the price returns

gen_linear_relationship takes two numpy arrays of time series as parameters and returns the coefficient of the least squares regression between the two. For the statistical arbitrage use case this is used on the log returns of the two stocks to allow for stationarity testing

gen_stationary_distr takes two time series and the coefficient of a linear regression between the two (time series must be entered in same order as they were into the linear regression) and returns the linear combination of the time series that would potentially result in a stationary distribution if the two were cointegrated

test_stationarity takes two time series as parameters, constructs log return arrays, determines the linear relationship, constructs a potentially stationary distribution, and then uses an Augmented Dickey Fuller test at the 1% significane level to check if the distribution is indeed stationary. If it is it will return "Rejected null hypothesis" and the p-value of the test. If it does not pass the 1% threshold it will return "Failed to reject" and the p-value.

find_pairs takes a dictionary with tickers (ie 'aapl', 'adsk', etc) as the keys and a numpy time series array of each ticker's raw prices as the values. It then constructs every possible pairing of tickers and tests them for cointegration using test_stationarity It will then return an list of lists where each list contains the ticker pair, the null hypothesis result, and the p-value of the test for each pair.

portfolio_builder takes a dictionary with tickers(ie 'aapl', 'adsk', etc) as the keys and a numpy time series array of each ticker's raw prices as the values. It also takes the results array from the find_pairs method. It then looks at every pair that rejected the null hypothesis, puts the stationary distribution that results from them through profitability_rating to get a metric to rank based off of. It then constructs a list of lists with the pairs and their ratings and returns that list of lists sorted by the rating

profitability_rating takes a stationary distribution numpy array as an argument, computes the mean and standard deviation of the array and establishes bounds for a 95% confidence interval around the mean. It then constructs a list with each price in the time series in which the price surpasses this confidence interval. It then returns the mean of those prices multiplied by the number of those prices. It is not an absolute measure of money made but it gives a method of ranking pairs.

plot takes a time series and does a simple matplotlib.pyplot plot. This is primarily useful for visualizing the stationarity of a distribution.

Contributing

For changes, please open an issue first to discuss what you would like to change.

License

MIT