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optimization.py
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optimization.py
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import datetime
import numpy as np
import pandas as pd
import scipy.optimize as sco
import pandas_datareader as pdr
import matplotlib.pyplot as plt
from pypfopt import risk_models
from pypfopt import expected_returns
from pandas.plotting import register_matplotlib_converters
from pypfopt.efficient_frontier import EfficientFrontier
from pypfopt.discrete_allocation import DiscreteAllocation, get_latest_prices
register_matplotlib_converters()
pd.set_option('display.max_columns', None)
pd.set_option('display.max_rows', None)
stocks = ['TGT', 'AMZN', 'NFLX', 'PG', 'NSRGY', 'MDLZ', 'MRK', 'MSFT', 'AAPL']
n = len(stocks) #number of stocks
start = datetime.datetime.now() - datetime.timedelta(days=365)
end = datetime.datetime.now() - datetime.timedelta(days=60)
df = pdr.get_data_yahoo(stocks, start=start, end=end)['Close']
print (df.tail())
returns = df.pct_change()
returns.plot(grid = True).axhline(y = 0, color = "black", lw = 2)
plt.legend(loc='upper right', fontsize=12)
plt.ylabel('Daily Returns')
def portfolio_annualised_performance(weights, mean_returns, cov_matrix):
returns = np.sum(mean_returns*weights ) *252
std = np.sqrt(np.dot(weights.T, np.dot(cov_matrix, weights))) * np.sqrt(252)
return std, returns
def random_portfolios(num_portfolios, mean_returns, cov_matrix, risk_free_rate):
results = np.zeros((3,num_portfolios))
weights_record = []
for i in range(num_portfolios):
weights = np.random.random(n)
weights /= np.sum(weights)
weights_record.append(weights)
portfolio_std_dev, portfolio_return = portfolio_annualised_performance(weights, mean_returns, cov_matrix)
results[0,i] = portfolio_std_dev
results[1,i] = portfolio_return
results[2,i] = (portfolio_return - risk_free_rate) / portfolio_std_dev
return results, weights_record
returns = df.pct_change()
mean_returns = returns.mean()
cov_matrix = returns.cov()
num_portfolios = 50000
risk_free_rate = 0.021
def neg_sharpe_ratio(weights, mean_returns, cov_matrix, risk_free_rate):
p_var, p_ret = portfolio_annualised_performance(weights, mean_returns, cov_matrix)
return -(p_ret - risk_free_rate) / p_var
def max_sharpe_ratio(mean_returns, cov_matrix, risk_free_rate):
num_assets = len(mean_returns)
args = (mean_returns, cov_matrix, risk_free_rate)
constraints = ({'type': 'eq', 'fun': lambda x: np.sum(x) - 1})
bound = (0.0,1.0)
bounds = tuple(bound for asset in range(num_assets))
result = sco.minimize(neg_sharpe_ratio, num_assets*[1./num_assets,], args=args,
method='SLSQP', bounds=bounds, constraints=constraints)
return result
def portfolio_volatility(weights, mean_returns, cov_matrix):
return portfolio_annualised_performance(weights, mean_returns, cov_matrix)[0]
def min_variance(mean_returns, cov_matrix):
num_assets = len(mean_returns)
args = (mean_returns, cov_matrix)
constraints = ({'type': 'eq', 'fun': lambda x: np.sum(x) - 1})
bound = (0.0,1.0)
bounds = tuple(bound for asset in range(num_assets))
result = sco.minimize(portfolio_volatility, num_assets*[1./num_assets,], args=args,
method='SLSQP', bounds=bounds, constraints=constraints)
return result
def efficient_return(mean_returns, cov_matrix, target):
num_assets = len(mean_returns)
args = (mean_returns, cov_matrix)
def portfolio_return(weights):
return portfolio_annualised_performance(weights, mean_returns, cov_matrix)[1]
constraints = ({'type': 'eq', 'fun': lambda x: portfolio_return(x) - target},
{'type': 'eq', 'fun': lambda x: np.sum(x) - 1})
bounds = tuple((0,1) for asset in range(num_assets))
result = sco.minimize(portfolio_volatility, num_assets*[1./num_assets,], args=args, method='SLSQP', bounds=bounds, constraints=constraints)
return result
def efficient_frontier(mean_returns, cov_matrix, returns_range):
efficients = []
for ret in returns_range:
efficients.append(efficient_return(mean_returns, cov_matrix, ret))
return efficients
def display_calculated_ef_with_random(mean_returns, cov_matrix, num_portfolios, risk_free_rate):
results, _ = random_portfolios(num_portfolios,mean_returns, cov_matrix, risk_free_rate)
max_sharpe = max_sharpe_ratio(mean_returns, cov_matrix, risk_free_rate)
sdp, rp = portfolio_annualised_performance(max_sharpe['x'], mean_returns, cov_matrix)
max_sharpe_allocation = pd.DataFrame(max_sharpe.x,index=df.columns,columns=['allocation'])
max_sharpe_allocation.allocation = [round(i*100,2)for i in max_sharpe_allocation.allocation]
max_sharpe_allocation = max_sharpe_allocation.T
max_sharpe_allocation
min_vol = min_variance(mean_returns, cov_matrix)
sdp_min, rp_min = portfolio_annualised_performance(min_vol['x'], mean_returns, cov_matrix)
min_vol_allocation = pd.DataFrame(min_vol.x,index=df.columns,columns=['allocation'])
min_vol_allocation.allocation = [round(i*100,2)for i in min_vol_allocation.allocation]
min_vol_allocation = min_vol_allocation.T
'''
print ("-"*80)
print ("Maximum Sharpe Ratio Portfolio Allocation\n")
print ("Annualised Return:", round(rp,2))
print ("Annualised Volatility:", round(sdp,2))
print ("\n")
print (max_sharpe_allocation)
print ("-"*80)
print ("Minimum Volatility Portfolio Allocation\n")
print ("Annualised Return:", round(rp_min,2))
print ("Annualised Volatility:", round(sdp_min,2))
print ("\n")
print (min_vol_allocation)
'''
plt.figure(figsize=(10, 7))
plt.scatter(results[0,:],results[1,:],c=results[2,:],cmap='YlGnBu', marker='o', s=10, alpha=0.3)
plt.colorbar()
plt.scatter(sdp,rp,marker='*',color='r',s=500, label='Maximum Sharpe ratio')
plt.scatter(sdp_min,rp_min,marker='*',color='g',s=500, label='Minimum volatility')
target = np.linspace(rp_min, 0.32, 50)
efficient_portfolios = efficient_frontier(mean_returns, cov_matrix, target)
plt.plot([p['fun'] for p in efficient_portfolios], target, linestyle='-.', color='black', label='efficient frontier')
plt.title('Calculated Portfolio Optimization based on Efficient Frontier')
plt.xlabel('annualised volatility')
plt.ylabel('annualised returns')
plt.legend(labelspacing=0.8)
plt.show();
display_calculated_ef_with_random(mean_returns, cov_matrix, num_portfolios, risk_free_rate)
def display_ef_with_selected(mean_returns, cov_matrix, risk_free_rate):
max_sharpe = max_sharpe_ratio(mean_returns, cov_matrix, risk_free_rate)
sdp, rp = portfolio_annualised_performance(max_sharpe['x'], mean_returns, cov_matrix)
max_sharpe_allocation = pd.DataFrame(max_sharpe.x,index=df.columns,columns=['allocation'])
max_sharpe_allocation.allocation = [round(i*100,2)for i in max_sharpe_allocation.allocation]
max_sharpe_allocation = max_sharpe_allocation.T
max_sharpe_allocation
min_vol = min_variance(mean_returns, cov_matrix)
sdp_min, rp_min = portfolio_annualised_performance(min_vol['x'], mean_returns, cov_matrix)
min_vol_allocation = pd.DataFrame(min_vol.x,index=df.columns,columns=['allocation'])
min_vol_allocation.allocation = [round(i*100,2)for i in min_vol_allocation.allocation]
min_vol_allocation = min_vol_allocation.T
an_vol = np.std(returns) * np.sqrt(252)
an_rt = mean_returns * 252
print ("-"*80)
print ("Maximum Sharpe Ratio Portfolio Allocation\n")
print ("Annualised Return:", round(rp,2))
print ("Annualised Volatility:", round(sdp,2))
print ("\n")
print (max_sharpe_allocation)
print ("-"*80)
print ("Minimum Volatility Portfolio Allocation\n")
print ("Annualised Return:", round(rp_min,2))
print ("Annualised Volatility:", round(sdp_min,2))
print ("\n")
print (min_vol_allocation)
print ("-"*80)
print ("Individual Stock Returns and Volatility\n")
for i, txt in enumerate(df.columns):
print (txt,":","annualised return",round(an_rt[i],2),", annualised volatility:",round(an_vol[i],2))
print ("-"*80)
plt.show()
fig, ax = plt.subplots(figsize=(10, 7))
ax.scatter(an_vol,an_rt,marker='o',s=200)
for i, txt in enumerate(df.columns):
ax.annotate(txt, (an_vol[i],an_rt[i]), xytext=(10,0), textcoords='offset points')
ax.scatter(sdp,rp,marker='*',color='r',s=500, label='Maximum Sharpe ratio')
ax.scatter(sdp_min,rp_min,marker='*',color='g',s=500, label='Minimum volatility')
target = np.linspace(rp_min, 0.34, 50)
efficient_portfolios = efficient_frontier(mean_returns, cov_matrix, target)
ax.plot([p['fun'] for p in efficient_portfolios], target, linestyle='-.', color='black', label='efficient frontier')
ax.set_title('Portfolio Optimization with Individual Stocks')
ax.set_xlabel('annualised volatility')
ax.set_ylabel('annualised returns')
ax.legend(labelspacing=0.8)
plt.show();
display_ef_with_selected(mean_returns, cov_matrix, risk_free_rate)
stocks = df
n = 100000 # total port. value
# Calculate expected returns and sample covariance
mu = expected_returns.mean_historical_return(df)
S = risk_models.sample_cov(df)
# Optimise for maximal Sharpe ratio
ef = EfficientFrontier(mu, S)
raw_weights = ef.max_sharpe()
cleaned_weights = ef.clean_weights()
ef.portfolio_performance(verbose=True)
latest_prices = get_latest_prices(df)
da = DiscreteAllocation(cleaned_weights, latest_prices, total_portfolio_value=n)
allocation, leftover = da.lp_portfolio()
print("Discrete allocation:", allocation)
print("Funds remaining: ${:.2f}".format(leftover))