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Statistical and Algorithmic Investing Strategies for Everyone

Home Page: https://www.tradytics.com/

License: GNU General Public License v3.0

Python 99.39% Dockerfile 0.61%
machine-learning algorithmic-trading investment-portfolio portfolio-optimization trading-strategies trading-algorithms tradytics ai statistics eigenvalues

eiten's Introduction

Eiten - Algorithmic Investing Strategies for Everyone

Eiten is an open source toolkit by Tradytics that implements various statistical and algorithmic investing strategies such as Eigen Portfolios, Minimum Variance Portfolios, Maximum Sharpe Ratio Portfolios, and Genetic Algorithms based Portfolios. It allows you to build your own portfolios with your own set of stocks that can beat the market. The rigorous testing framework included in Eiten enables you to have confidence in your portfolios.

If you are looking to discuss these tools in depth and talk about more tools that we are working on, please feel free to join our Discord channel where we have a bunch of more tools too.

Files Description

Path Description
eiten Main folder.
└  figures Figures for this github repositories.
└  stocks Folder to keep your stock lists that you want to use to create your portfolios.
└  strategies A bunch of strategies implemented in python.
backtester.py Backtesting module that both backtests and forward tests all portfolios.
data_loader.py Module for loading data from yahoo finance.
portfolio_manager.py Main file that takes in a bunch of arguments and generates several portfolios for you.
simulator.py Simulator that uses historical returns and monte carlo to simulate future prices for the portfolios.
strategy_manager.py Manages the strategies implemented in the 'strategies' folder.

Required Packages

You will need to install the following package to train and test the models.

You can install all packages using the following command. Please note that the script was written using python3.

pip install -r requirements.txt

Build your portfolios

Let us see how we can use all the strategies given in the toolkit to build our portfolios. The first thing you need to do is modify the stocks.txt file in the stocks folder and add the stocks of your choice. It is recommended to keep the list small i.e anywhere between 5 to 50 stocks should be fine. We have already put a small stocks list containing a bunch of tech stocks like AAPL, MSFT, TSLA etc. Let us build our portfolios now. This is the main command that you need to run.

python portfolio_manager.py --is_test 1 --future_bars 90 --data_granularity_minutes 3600 --history_to_use all --apply_noise_filtering 1 --market_index QQQ --only_long 1 --eigen_portfolio_number 3 --stocks_file_path stocks/stocks.txt

This command will use last 5 years of daily data excluding the last 90 days and build several portfolios for you. Based on those portfolios, it will then test them on the out of sample data of 90 days and show you the performance of each portfolio. Finally, it will also compare the performance with your choice of market index which is QQQ here. Let's dive into each of the parameters in detail.

  • is_test: The value determined if the program is going to keep some separate data for future testing. When this is enabled, the value of future_bars should be larger than 5.
  • future_bars: These are the bars that the tool will exclude during portfolio building and will forward test the portfolios on the excluded set. This is also called out of sample data.
  • data_granularity_minutes: How much granular data do you want to use to build your portfolios. For long term portfolios, you should use daily data but for short term, you can use hourly or minute level data. The possible values here are 3600, 60, 30, 15, 5, 1. 3600 means daily.
  • history_to_use: Whether to use a specific number of historical bars or use everything that we receive from yahoo finance. For minute level data, we only receive up to one month of historical data. For daily, we receive 5 years worth of historical data. If you want to use all available data, the value should be all but if you want to use smaller history, you can set it to an integer value e.g 100 which will only use the last 100 bars to build the portfolios.
  • apply_noise_filtering: This uses random matrix theory to filter out the covariance matrix from randomness thus yielding better portfolios. A value of 1 will enable it and 0 will disable it.
  • market_index: Which index do you want to use to compare your portfolios. This should mostly be SPY but since we analyzed tech stocks, we used QQQ.
  • only_long: Whether to use long only portfolio or enable short selling as well. Long only portfolios have shown to have better performance using algorithmic techniques.
  • eigen_portfolio_number: Which eigen portfolio to use. Any value between 1-5 should work. The first eigen portfolio (1) represents the market portfolio and should act just like the underlying index such as SPY or QQQ. The second one is orthogonal and uncorrelated to the market and poses the greatest risk and reward. The following ones have reduced risk and reward. Read more on eigen-portfolios.
  • stocks_file_path: File that contains the list of stocks that you want to use to build your portfolio.

Some Portfolio Building Examples

Here are a few examples for building different types of portfolios.

  • Both long and short portfolios by analyzing last 90 days data and keeping the last 30 days as testing data. This will give us 60 days of portfolio construction data and 30 days of testing.
python portfolio_manager.py --is_test 1 --future_bars 30 --data_granularity_minutes 3600 --history_to_use 90 --apply_noise_filtering 1 --market_index QQQ --only_long 0 --eigen_portfolio_number 3 --stocks_file_path stocks/stocks.txt
  • Only long portfolio on 60 minute bars of the last 30 days. No future testing. Compare the results with SPY index instead of QQQ.
python portfolio_manager.py --is_test 0 --future_bars 0 --data_granularity_minutes 60 --history_to_use all --apply_noise_filtering 1 --market_index SPY --only_long 1 --eigen_portfolio_number 3 --stocks_file_path stocks/stocks.txt
  • Do not apply noise filtering on the covariance matrix. Use the first eigen portfolio (market portfolio) and compare with SQQQ,
python portfolio_manager.py --is_test 1 --future_bars 90 --data_granularity_minutes 3600 --history_to_use all --apply_noise_filtering 0 --market_index SQQQ --only_long 1 --eigen_portfolio_number 1 --stocks_file_path stocks/stocks.txt

Portfolio Strategies

Four different portfolio strategies are currently supported by the toolkit.

  1. Eigen Portfolios
    1. These portfolios are orthogonal and uncorrelated to the market in general thus yielding high reward and alpha. However, since they are uncorrelated to the market, they can also provide great risk. The first eigen portfolio is considered to be a market portfolio which is often ignored. The second one is uncorrelated to the others and provides the highest risk and reward. As we go down the numbering, the risk as well as the reward are reduced.
  2. Minimum Variance Portfolio (MVP)
    1. MVP tries to minimize the variance of the portfolio. These portfolios are lowest risk and reward.
  3. Maximum Sharpe Ratio Portfolio (MSR)
    1. MSR solves an optimization problem that tries to maximize the sharpe ratio of the portfolio. It uses past returns during the optimization process which means if past returns are not the same as future returns, the results can vary in future.
  4. Genetic Algorithm (GA) based Portfolio
    1. This is our own implementation of a GA based portfolio that again tries to maximize the sharpe ratio but in a slightly more robust way. This usually provides more robust portfolios than the others.

When you run the command above, our tool will generate portfolios from all these strategies and give them to you. Let us look at some resulting portfolios.

Resulting Portfolios

For the purpose these results, we will use the 9 stocks in the stocks/stocks.txt file. When we run the above command, we first get the portfolio weights for all four strategies. For testing purposes, the above command used last five years of daily data up till April 29th. The remaining data for this year was used for forward testing i.e the portfolio strategies had no access to it when building the portfolios.

What if my portfolio needs different stocks?: All you need to do is change the stocks in the stocks.txt file and run the tool again. Here is the final command again that we run in order to get our portfolios:

python portfolio_manager.py --is_test 1 --future_bars 90 --data_granularity_minutes 3600 --history_to_use all --apply_noise_filtering 1 --market_index QQQ --only_long 1 --eigen_portfolio_number 3 --stocks_file_path stocks/stocks.txt

Portfolio Weights

We can see that the eigen portfolio is giving a large weight to TSLA while the others are dividing their weights more uniformly. An interesting phenomena happening here is the hedging with SQQQ that all the strategies have learned automatically. Every tool is assigning some positive weight to SQQQ while also assigning positive weights to other stocks which indicates that the strategies are automatically trying to hedge the portfolios from risk. Obviously this is not perfect, but just the fact that it's happening is fascinating. Let us look at the backtest results on the last five years prior to April 29, 2020.

Backtest Results

The backtests look pretty encouraging. The black dotted line is the market index i.e QQQ. Other lines are the strategies. Our custom genetic algorithm implementation seems to have the best backtest results because it's an advanced version of other strategies. The eigen portfolio that weighed TSLA the most have the most volatility but its profits are also very high. Finally, as expected, the MVP has the minimum variance and ultimately the least profits. However, since the variance is extremely low, it is a good portfolio for those who want to stay safe. The most interesting part comes next, let us look at the forward or future test results for these portfolios.

Forward Test Results

These results are from April 29th, 2020 to September 4th, 2020. The eigen portfolio performed the best but it also had a lot of volatility. Moreover, most of those returns are due to TSLA rocketing in the last few months. After that, our GA algorithm worked quite effectively as it beat the market index. Again, as expected, the MVP had the lowest risk and reward and slowly went up in 4-5 months. This shows the effectiveness and power of these algorithmic portfolio optimization strategies where we've developed different portfolios for different kinds of risk and reward profiles.

Conclusion and Discussion

We are happy to share this toolkit with the trading community and hope that people will like and contribute to it. As is the case with everything in trading, these strategies are not perfect but they are based on rigorous theory and some great empirical results. Please take care when trading with these strategies and always manage your risk. The above results were not cherry picked but the market has been highly bullish in the last few months which has led to the strong results shown above. We would love for the community to try out different strategies and share them with us.

Special Thanks

Special thanks to Scott Rome's blog. The eigen portfolios and minimum variance portfolio concepts came from his blog posts. The code for filtering eigen values of the covariance matrix was also mostly obtained from one of his posts.

License

License: GPL v3

A product by Tradytics

Copyright (c) 2020-present, Tradytics.com

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eiten's Issues

Exception in thread Thread-2 error ?

Fresh install and run the README command ╰─ python portfolio_manager.py --is_test 1 --future_bars 90 --data_granularity_minutes 3600 --history_to_use all --apply_noise_filtering 1 --market_index QQQ --only_long 1 --eigen_portfolio_number 3 --stocks_file_path stocks/stocks.txt

Then got the following error, is this because yfinance is having issue?

Loading data for all stocks...
0%| | 0/6 [00:00<?, ?it/s]Exception in thread Thread-2:
Traceback (most recent call last):
File "/Library/Frameworks/Python.framework/Versions/3.8/lib/python3.8/threading.py", line 932, in _bootstrap_inner
self.run()
File "/Library/Frameworks/Python.framework/Versions/3.8/lib/python3.8/threading.py", line 870, in run
self._target(*self._args, **self._kwargs)
File "/Library/Frameworks/Python.framework/Versions/3.8/lib/python3.8/site-packages/multitasking/init.py", line 102, in _run_via_pool
return callee(*args, **kwargs)
File "/Library/Frameworks/Python.framework/Versions/3.8/lib/python3.8/site-packages/yfinance/multi.py", line 166, in _download_one_threaded
data = _download_one(ticker, start, end, auto_adjust, back_adjust,
File "/Library/Frameworks/Python.framework/Versions/3.8/lib/python3.8/site-packages/yfinance/multi.py", line 178, in _download_one
return Ticker(ticker).history(period=period, interval=interval,
File "/Library/Frameworks/Python.framework/Versions/3.8/lib/python3.8/site-packages/yfinance/base.py", line 155, in history
data = data.json()
File "/Library/Frameworks/Python.framework/Versions/3.8/lib/python3.8/site-packages/requests/models.py", line 898, in json
return complexjson.loads(self.text, **kwargs)
File "/Library/Frameworks/Python.framework/Versions/3.8/lib/python3.8/json/init.py", line 357, in loads
return _default_decoder.decode(s)
File "/Library/Frameworks/Python.framework/Versions/3.8/lib/python3.8/json/decoder.py", line 337, in decode
obj, end = self.raw_decode(s, idx=_w(s, 0).end())
File "/Library/Frameworks/Python.framework/Versions/3.8/lib/python3.8/json/decoder.py", line 355, in raw_decode
raise JSONDecodeError("Expecting value", s, err.value) from None
json.decoder.JSONDecodeError: Expecting value: line 1 column 1 (char 0)

Random Matrix Theory seem to make correlation vanish

The random_matrix_theory_based_cov seems to be vanishing with the covariance values. Empirical evidence shows this:

Experiment one:
How Eiten works in the current push, without matrix normalization:

This is a regular matrix without the noise cleaning method
image

After transformation the matrix becomes this:
image

We can see a shadow of red in the diagonal so I though I would plot out of scale. This is the result:
image

This leads me to question whether there is an implementation issue or if the method is really reliable.

Comparison of Portfolio Weights and issue with "only_long"

@tradytics

Firstly, thank you for putting this together. I've been working on portfolio optimization through backtesting and this is definitely a simple and great setup. As I was testing your code, I wanted to call out a few things,

  1. The only_long setting does not work. Irrespective of whether this is set to 0 or 1, the resulting weights are long_short lying between (-1, 1). This is the exact command i used as per your description:
    python portfolio_manager.py --is_test 1 --future_bars 90 --data_granularity_minutes 3600 --history_to_use all --apply_noise_filtering 1 --market_index SPY --only_long 0 --eigen_portfolio_number 3 --stocks_file_path stocks/stocks.txt
    I only changed only_long to 1 or 0 in my tests and it doesn't alter the weights. Let me know if I'm doing something wrong.

  2. I then used the weights that were returned by your algorithm and plotted it on the efficient frontier created with over 150,000 portfolios (from random weights) on the same ohlc dataset.
    Below are the weights from your algorithm,

-------- Weights for Eigen Portfolio --------
Symbol: AAPL, Weight: 0.3492
Symbol: AMD, Weight: -0.7297
Symbol: AMZN, Weight: 0.3650
Symbol: FB, Weight: 0.4094
Symbol: MSFT, Weight: 0.3314
Symbol: NFLX, Weight: 0.7475
Symbol: NVDA, Weight: 1.0672
Symbol: TSLA, Weight: -1.5400

-------- Weights for Maximum Sharpe Portfolio (MSR) --------
Symbol: AAPL, Weight: 0.6987
Symbol: AMD, Weight: -0.1833
Symbol: AMZN, Weight: -0.9613
Symbol: FB, Weight: 0.7741
Symbol: MSFT, Weight: 0.7640
Symbol: NFLX, Weight: -0.2281
Symbol: NVDA, Weight: -0.1171
Symbol: TSLA, Weight: 0.2530

-------- Weights for Genetic Algo (GA) --------
Symbol: AAPL, Weight: -1.2315
Symbol: AMD, Weight: 0.9703
Symbol: AMZN, Weight: 1.3787
Symbol: FB, Weight: -1.1198
Symbol: MSFT, Weight: 1.9202
Symbol: NFLX, Weight: 0.2728
Symbol: NVDA, Weight: 0.9967
Symbol: TSLA, Weight: 0.0455

This is what the efficient frontier looks like for the above weights with the backtest data:
image

For the portfolios returned by your max sharpe (Eiten max sharpe) and Eigen (Eiten Eigen PF) the sharpe ratios are 0.07 and 0.15 respectively. As you can see, the genetic algorithm weights returned a sharpe ratio of 1.78 and the starred max_sharpe is 1.63 (close, but definitely more room for optimization). The starred max_sharpe is just the best performing random weight portfolio. We can nearly draw a straight line from the risk free return to the GA point cutting through the starred max_sharpe points. I guess the GA has only cranked up the risk for higher returns.

Similary the EF for the future data is as shown below and the max_sharpe in this case is 3.78 (from random weights):
image

Let me know if i'm doing anything wrong running this as the performance of max sharpe and eigen portfolio from your algorithm does not correspond to the best performing portfolio even in the back testing case. There is still room to reduce risk and increase returns here.

The whole thing may not as good as it looks like

There is a serious issue for the portfolio weights. When run for long only, there is not code do divide sum(weights). Total weights is almost round 2.5 to 4. So the result scaled 2.5 to 4. Because the project use the bull market data. So we got a pretty beautiful cumsum curve.

Stocks choice?

There is probably an error in the choice of stocks because the choice is made on stocks of which we know the good behavior
for the period 2015/01 2020/01 the proposed portfolio (AAPL, AMD, AMZN, FB, MSFT, NFLX, NVDA, TSLA) with equal weights and buy and hold has a performance of approximately 1000% !!.
Eiten GA returns 450%. Not so good.
If you randomly choose stocks from 2015, the result is not good.

Error when running portfolio_manager.py

With the most recent code, I run the following command:

python3 portfolio_manager.py --is_test 1 --future_bars 90 --data_granularity_minutes 3600 --history_to_use all --apply_noise_filtering 1 --market_index QQQ --only_long 1 --eigen_portfolio_number 3 --stocks_file_path stocks/stocks.txt

Previously, this worked. Now, I get an error:

Traceback (most recent call last):
  File "portfolio_manager.py", line 37, in <module>
    main()
  File "portfolio_manager.py", line 33, in main
    eiten.run_strategies()
  File "/Users/jmartinezlago/eiten/eiten.py", line 107, in run_strategies
    historical_price_info, future_prices, symbol_names, predicted_return_vectors, returns_matrix, returns_matrix_percentages = self.load_data()
  File "/Users/jmartinezlago/eiten/eiten.py", line 95, in load_data
    self.data_dictionary[symbol]["historical_prices"])
KeyError: 'historical_prices'

(Question) Disable negative weights/shorting

Hi,
I'm building portfolios for my home country's stock market.
However there is limited options for shorting stocks.
Is it possible to run Eiten without allowing negative weight (shorting)?

IndexError: list index out of range when running with default settings

Running this command from the examples:

python portfolio_manager.py --is_test 0 --future_bars 30 --data_granularity_minutes 60 --history_to_use all --apply_noise_filtering 1 --market_index QQQ --only_long 1 --eigen_portfolio_number 3 --stocks_file_path stocks/stocks.txt

returns:
Traceback (most recent call last):
File "portfolio_manager.py", line 37, in
main()
File "portfolio_manager.py", line 33, in main
eiten.run_strategies()
File "Work/eiten/eiten.py", line 107, in run_strategies
historical_price_info, future_prices, symbol_names, predicted_return_vectors, returns_matrix, returns_matrix_percentages = self.load_data()
File "Work/eiten/eiten.py", line 88, in load_data
self.data_dictionary = self.dataEngine.collect_data_for_all_tickers()
File "Work/eiten/data_loader.py", line 153, in collect_data_for_all_tickers
historical_price, future_price, symbol_names)
File "Work/eiten/data_loader.py", line 171, in remove_bad_data
most_common_length = length_dictionary[0]
IndexError: list index out of range

Any thoughts on what I'm doing wrong?

(Question) Portfolios without shorting?

Hi,
I'm building portfolios for my home country's stock market.
However there is limited options for shorting stocks.
Is it possible to run Eiten without allowing negative weight (shorting)?

Provide more advice on how to interpret outputs of portfolio_manager

First of all thank you! This tool was so easy to get up and running, despite the obvious underlying complexity.

After running portfolio_manager.py on a few different stock lists I am left with the following simple questions:

  • How should I interpret "portfolio weights" to actually construct a portfolio? Does the tool assume a single weighted simultaneous purchase of all the symbols in the list and hold them indefinitely? Does it buy over time? It would be good if we could put in an amount for the initial principal and have the tool show the portfolio weights in terms of Day 0 dollar value.
  • The tool has 4 main output charts, what is the difference between "Future Test Results" and "Simulated Future Returns"? The README only explains the former, I am having trouble interpreting the latter. They seem to be wildly different!

How do I backtest a portfolio's asset allocation?

Thanks for making this! Looks really cool and I am excited to try it out.

I would like to use this to backtest a portfolio's asset allocation and compare it to an index.

Example:

Ticker,% of Allocation
AAPL,0.5
TSLA,0.25
MSFT,0.20
AMZN,0.05

Given this fixed asset allocation of the tickers above, how do I backtest this portfolio and compare it against an index?

The key thing to note here is that the allocation is fixed in terms of % of portfolio.

--history_to_use doesn't work with integer values

When i use the integer(for example 100) as value for for --history_to_use, error happens.

File "C:\Users\hello\Repo\eiten\argchecker.py", line 8, in __init__
    self.check_arguments(args)
  File "C:\Users\hello\Repo\eiten\argchecker.py", line 20, in check_arguments
    assert not(args.history_to_use != "all" and int(args.history_to_use_int) <
AttributeError: 'Namespace' object has no attribute 'history_to_use_int'

args.history_to_use_int should be the reason, there isn't history_to_use_int argument parameter

Genetic Algorithm is actually Random

I went through the Genetic Algorithm Strategy code and it seems to me to be actually random. The purpose of selecting the top K is that we want to preserve their qualities and use them in crossover. However, that preservation does not occur since their are straight crossed. Further, there is no probability involved into mutation.

Point being: The qualities of top k are most likely lost because the code does not preserve them, and does not prioritize them into crossover (we want to reproduce its qualities).

Plots not showing; Saving yields a blank png file

This is all on Google Colab.

I tried showing plot but I get this:
<Figure size 1200x600 with 1 Axes>

So I tried doing:

%matplotlib inline
!python portfolio_manager.py --is_test 1 --future_bars 90 --data_granularity_minutes 3600 --history_to_use all --apply_noise_filtering 1 --market_index QQQ --only_long 1 --eigen_portfolio_number 3 --stocks_file_path stocks/stocks.txt

But still no output.

Any ideas why?

Only a few stock are being taken into account

Command to run:

python3 portfolio_manager.py --is_test 1 --future_bars 90 --data_granularity_minutes 3600 --history_to_use all --apply_noise_filtering 1 --market_index QQQ --only_long 1 --eigen_portfolio_number 3 --stocks_file_path stocks/stocks.txt

When loading data for all stocks:

Exception No objects to concatenate

Then, I see only info about 4 stocks, even though there's 15 in my stock file.

Errors Coming after Previous Successful Use

When I run this from the examples:

python portfolio_manager.py --is_test 1 --future_bars 90 --data_granularity_minutes 3600 --history_to_use all --apply_noise_filtering 1 --market_index QQQ --only_long 1 --eigen_portfolio_number 3 --stocks_file_path stocks/stocks.txt

I get:
Traceback (most recent call last):
File "portfolio_manager.py", line 37, in
main()
File "portfolio_manager.py", line 33, in main
eiten.run_strategies()
File "/Users/matt/Desktop/eiten-master/eiten.py", line 118, in run_strategies
returns_matrix)
File "/Users/matt/Desktop/eiten-master/strategy_manager.py", line 59, in random_matrix_theory_based_cov
filtered_covariance_matrix = self.strategyHelperFunctions.random_matrix_theory_based_cov(returns_matrix)
File "/Users/matt/Desktop/eiten-master/strategies/strategy_helper_functions.py", line 18, in random_matrix_theory_based_cov
variances = np.diag(np.cov(returns_matrix))
File "<array_function internals>", line 6, in diag
File "/Users/matt/opt/anaconda3/lib/python3.7/site-packages/numpy/lib/twodim_base.py", line 283, in diag
raise ValueError("Input must be 1- or 2-d.")
ValueError: Input must be 1- or 2-d.

I used this just yesterday to do an analysis with no problem. Also, I looked at the other issue in the list that said maybe there's some issue with a stock picked in stocks.txt, so picked two stocks (AAPL and BA) to check if that could be it and it still causes an error.

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