Reinforcement Learning for Stock Prediction

这是 Siraj Raval 在 Youtube 上发表的 "股票预测的强化学习" 的代码。「This is the code for "Reinforcement Learning for Stock Prediction" By Siraj Raval on Youtube」

  • Owner: llSourcell/Reinforcement_Learning_for_Stock_Prediction
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Overview

This is the code for this video on Youtube by Siraj Raval. The author of this code is edwardhdlu . It's implementation of Q-learning applied to (short-term) stock trading. The model uses n-day windows of closing prices to determine if the best action to take at a given time is to buy, sell or sit.

As a result of the short-term state representation, the model is not very good at making decisions over long-term trends, but is quite good at predicting peaks and troughs.

Results

Some examples of results on test sets:

^GSPC 2015
S&P 500, 2015. Profit of $431.04.

BABA_2015
Alibaba Group Holding Ltd, 2015. Loss of $351.59.

AAPL 2016
Apple, Inc, 2016. Profit of $162.73.

GOOG_8_2017
Google, Inc, August 2017. Profit of $19.37.

Running the Code

To train the model, download a training and test csv files from Yahoo! Finance into data/

mkdir model
python train ^GSPC 10 1000

Then when training finishes (minimum 200 episodes for results):

python evaluate.py ^GSPC_2011 model_ep1000

References

Deep Q-Learning with Keras and Gym - Q-learning overview and Agent skeleton code

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Name With OwnerllSourcell/Reinforcement_Learning_for_Stock_Prediction
Primary LanguagePython
Program languagePython (Language Count: 1)
PlatformLinux, Mac, Windows
License:
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Created At2018-07-17 00:35:39
Pushed At2022-06-28 01:18:57
Last Commit At2018-07-19 15:42:19
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Fork Count361
Commits Count13
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Issues Count27
Issue Open Count20
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