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Pair trading backtest.py
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Pair trading backtest.py
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# -*- coding: utf-8 -*-
"""
Created on Tue Feb 6 11:57:46 2018
@author: Administrator
"""
# In[1]:
#grazie a my mentor Prof Giampiero M Gallo
#ex-professor in statistics currently a governor in Italy
#neither Lega Nord nor Movimento 5 Stelle but Partito Democratico
#and his mentor Robert Engle, the nobel laureate!
#for their tremendous contributions to VECM
# In[2]:
#pair trading is also called mean reversion trading
#we find two cointegrated assets, normally a stock and an ETF index
#or two stocks in the same industry or any pair that passes the test
#we run an cointegration test on the historical data
#we set the trigger condition for both stocks
#theoretically these two stocks cannot drift too far from each other
#its like a drunk man with a dog
#the invisible dog leash would keep both assets in check
#when one stock is getting too bullish
#we short the bullish one and long the bearish one, vice versa
#sooner or later, the dog would converge to the drunk man
#nevertheless, the backtest is based on historical datasets
#in real stock market, market conditions are dynamic
#two assets may seem cointegrated for the past two years
#they can completely diverge after one company launch a new product or whatsoever
#i am talking about nvidia and amd, two gpu companies
#after bitcoin mining boom and machine learning hype
#stock price of nvidia went skyrocketing
#on the contrary amd didnt change much
#the cointegrated relationship just broke up
#so be extremely cautious with cointegration
#there is no such thing as riskless statistical arbitrage
#always check the cointegration status before trading execution
import matplotlib.pyplot as plt
import numpy as np
import pandas as pd
import yfinance as yf
import statsmodels.api as sm
# In[3]:
#use Engle-Granger two-step method to test cointegration
#the underlying method is straight forward and easy to implement
#a more important thing is the method is invented by the mentor of my mentor!!!
#the latest statsmodels package should ve included johansen test which is more common
#check sm.tsa.var.vecm.coint_johansen
#the malaise of two-step is the order of the cointegration
#unlike johansen test, two-step method can only detect the first order
#check the following material for further details
# https://warwick.ac.uk/fac/soc/economics/staff/gboero/personal/hand2_cointeg.pdf
def EG_method(X,Y,show_summary=False):
#step 1
#estimate long run equilibrium
model1=sm.OLS(Y,sm.add_constant(X)).fit()
epsilon=model1.resid
if show_summary:
print('\nStep 1\n')
print(model1.summary())
#check p value of augmented dickey fuller test
#if p value is no larger than 5%, stationary test is passed
if sm.tsa.stattools.adfuller(epsilon)[1]>0.05:
return False,model1
#take first order difference of X and Y plus the lagged residual from step 1
X_dif=sm.add_constant(pd.concat([X.diff(),epsilon.shift(1)],axis=1).dropna())
Y_dif=Y.diff().dropna()
#step 2
#estimate error correction model
model2=sm.OLS(Y_dif,X_dif).fit()
if show_summary:
print('\nStep 2\n')
print(model2.summary())
#adjustment coefficient must be negative
if list(model2.params)[-1]>0:
return False,model1
else:
return True,model1
# In[4]:
#first we verify the status of cointegration by checking historical datasets
#bandwidth determines the number of data points for consideration
#bandwidth is 250 by default, around one year's data points
#if the status is valid, we check the signals
#when z stat gets above the upper bound
#we long the bearish one and short the bullish one, vice versa
def signal_generation(asset1,asset2,method,bandwidth=250):
signals=pd.DataFrame()
signals['asset1']=asset1['Close']
signals['asset2']=asset2['Close']
#signals only imply holding
signals['signals1']=0
signals['signals2']=0
#initialize
prev_status=False
signals['z']=np.nan
signals['z upper limit']=np.nan
signals['z lower limit']=np.nan
signals['fitted']=np.nan
signals['residual']=np.nan
#signal processing
for i in range(bandwidth,len(signals)):
#cointegration test
coint_status,model=method(signals['asset1'].iloc[i-bandwidth:i],
signals['asset2'].iloc[i-bandwidth:i])
#cointegration breaks
#clear existing positions
if prev_status and not coint_status:
if signals.at[signals.index[i-1],'signals1']!=0:
signals.at[signals.index[i],'signals1']=0
signals.at[signals.index[i],'signals2']=0
signals['z'].iloc[i:]=np.nan
signals['z upper limit'].iloc[i:]=np.nan
signals['z lower limit'].iloc[i:]=np.nan
signals['fitted'].iloc[i:]=np.nan
signals['residual'].iloc[i:]=np.nan
#cointegration starts
#set the trigger conditions
#this is no forward bias
#just to minimize the calculation done in pandas
if not prev_status and coint_status:
#predict the price to compute the residual
signals['fitted'].iloc[i:]=model.predict(sm.add_constant(signals['asset1'].iloc[i:]))
signals['residual'].iloc[i:]=signals['asset2'].iloc[i:]-signals['fitted'].iloc[i:]
#normalize the residual to get z stat
#z should be a white noise following N(0,1)
signals['z'].iloc[i:]=(signals['residual'].iloc[i:]-np.mean(model.resid))/np.std(model.resid)
#create thresholds
#conventionally one sigma is the threshold
#two sigma reaches 95% which is relatively difficult to trigger
signals['z upper limit'].iloc[i:]=signals['z'].iloc[i]+np.std(model.resid)
signals['z lower limit'].iloc[i:]=signals['z'].iloc[i]-np.std(model.resid)
#as z stat cannot exceed both upper and lower bounds at the same time
#the lines below hold
if coint_status and signals['z'].iloc[i]>signals['z upper limit'].iloc[i]:
signals.at[signals.index[i],'signals1']=1
if coint_status and signals['z'].iloc[i]<signals['z lower limit'].iloc[i]:
signals.at[signals.index[i],'signals1']=-1
prev_status=coint_status
#signals only imply holding
#we take the first order difference to obtain the execution signal
signals['positions1']=signals['signals1'].diff()
#only need to generate trading signal of one asset
#the other one should be the opposite direction
signals['signals2']=-signals['signals1']
signals['positions2']=signals['signals2'].diff()
return signals
# In[5]:
#position visualization
def plot(data,ticker1,ticker2):
fig=plt.figure(figsize=(10,5))
bx=fig.add_subplot(111)
bx2=bx.twinx()
#viz two different assets
asset1_price,=bx.plot(data.index,data['asset1'],
c='#113aac',alpha=0.7)
asset2_price,=bx2.plot(data.index,data['asset2'],
c='#907163',alpha=0.7)
#viz positions
asset1_long,=bx.plot(data.loc[data['positions1']==1].index,
data['asset1'][data['positions1']==1],
lw=0,marker='^',markersize=8,
c='g',alpha=0.7)
asset1_short,=bx.plot(data.loc[data['positions1']==-1].index,
data['asset1'][data['positions1']==-1],
lw=0,marker='v',markersize=8,
c='r',alpha=0.7)
asset2_long,=bx2.plot(data.loc[data['positions2']==1].index,
data['asset2'][data['positions2']==1],
lw=0,marker='^',markersize=8,
c='g',alpha=0.7)
asset2_short,=bx2.plot(data.loc[data['positions2']==-1].index,
data['asset2'][data['positions2']==-1],
lw=0,marker='v',markersize=8,
c='r',alpha=0.7)
#set labels
bx.set_ylabel(ticker1,)
bx2.set_ylabel(ticker2,rotation=270)
bx.yaxis.labelpad=15
bx2.yaxis.labelpad=15
bx.set_xlabel('Date')
bx.xaxis.labelpad=15
plt.legend([asset1_price,asset2_price,asset1_long,asset1_short],
[ticker1,ticker2,
'LONG','SHORT'],
loc='lower left')
plt.title('Pair Trading')
plt.xlabel('Date')
plt.grid(True)
plt.show()
# In[6]:
#visualize overall portfolio performance
def portfolio(data):
#initial capital to calculate the actual pnl
capital0=20000
#shares to buy of each position
#this is no forward bias
#just ensure we have enough €€€ to purchase shares when the price peaks
positions1=capital0//max(data['asset1'])
positions2=capital0//max(data['asset2'])
#cumsum1 column is created to check the holding of the position
data['cumsum1']=data['positions1'].cumsum()
#since there are two assets, we calculate each asset separately
#in the end we aggregate them into one portfolio
portfolio=pd.DataFrame()
portfolio['asset1']=data['asset1']
portfolio['holdings1']=data['cumsum1']*data['asset1']*positions1
portfolio['cash1']=capital0-(data['positions1']*data['asset1']*positions1).cumsum()
portfolio['total asset1']=portfolio['holdings1']+portfolio['cash1']
portfolio['return1']=portfolio['total asset1'].pct_change()
portfolio['positions1']=data['positions1']
data['cumsum2']=data['positions2'].cumsum()
portfolio['asset2']=data['asset2']
portfolio['holdings2']=data['cumsum2']*data['asset2']*positions2
portfolio['cash2']=capital0-(data['positions2']*data['asset2']*positions2).cumsum()
portfolio['total asset2']=portfolio['holdings2']+portfolio['cash2']
portfolio['return2']=portfolio['total asset2'].pct_change()
portfolio['positions2']=data['positions2']
portfolio['z']=data['z']
portfolio['total asset']=portfolio['total asset1']+portfolio['total asset2']
portfolio['z upper limit']=data['z upper limit']
portfolio['z lower limit']=data['z lower limit']
#plotting the asset value change of the portfolio
fig=plt.figure(figsize=(10,5))
ax=fig.add_subplot(111)
ax2=ax.twinx()
total_asset_performance,=ax.plot(portfolio['total asset'],c='#46344e')
z_stats,=ax2.plot(portfolio['z'],c='#4f4a41',alpha=0.2)
threshold=ax2.fill_between(portfolio.index,portfolio['z upper limit'],
portfolio['z lower limit'],
alpha=0.2,color='#ffb48f')
#due to the opposite direction of trade for 2 assets
#we will not plot positions on asset performance
ax.set_ylabel('Asset Value')
ax2.set_ylabel('Z Statistics',rotation=270)
ax.yaxis.labelpad=15
ax2.yaxis.labelpad=15
ax.set_xlabel('Date')
ax.xaxis.labelpad=15
plt.legend([z_stats,threshold,total_asset_performance],
['Z Statistics', 'Z Statistics +-1 Sigma',
'Total Asset Performance'],loc='best')
plt.grid(True)
plt.title('Total Asset')
plt.show()
return portfolio
# In[7]:
def main():
#the sample i am using are NVDA and AMD from 2013 to 2014
stdate='2013-01-01'
eddate='2014-12-31'
ticker1='NVDA'
ticker2='AMD'
#extract data
asset1=yf.download(ticker1,start=stdate,end=eddate)
asset2=yf.download(ticker2,start=stdate,end=eddate)
#create signals
signals=signal_generation(asset1,asset2,EG_method)
#only viz the part where trading signals occur
ind=signals['z'].dropna().index[0]
#viz positions
plot(signals[ind:],ticker1,ticker2)
#viz portfolio performance
portfolio_details=portfolio(signals[ind:])
#the performance metrics of investment could be found in another strategy called Heikin-Ashi
# https://github.com/je-suis-tm/quant-trading/blob/master/heikin%20ashi%20backtest.py
# In[8]:
if __name__ == '__main__':
main()