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hawkes.py
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hawkes.py
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import pandas as pd
import numpy as np
import pandas_ta as ta
import matplotlib.pyplot as plt
import scipy
def plot_two_axes(series1, *ex_series):
plt.style.use('dark_background')
ax = series1.plot(color='green')
ax2 = ax.twinx()
for i, series in enumerate(ex_series):
series.plot(ax=ax2, alpha=0.5)
#plt.show()
def hawkes_process(data: pd.Series, kappa: float):
assert(kappa > 0.0)
alpha = np.exp(-kappa)
arr = data.to_numpy()
output = np.zeros(len(data))
output[:] = np.nan
for i in range(1, len(data)):
if np.isnan(output[i - 1]):
output[i] = arr[i]
else:
output[i] = output[i - 1] * alpha + arr[i]
return pd.Series(output, index=data.index) * kappa
def vol_signal(close: pd.Series, vol_hawkes: pd.Series, lookback:int):
signal = np.zeros(len(close))
q05 = vol_hawkes.rolling(lookback).quantile(0.05)
q95 = vol_hawkes.rolling(lookback).quantile(0.95)
last_below = -1
curr_sig = 0
for i in range(len(signal)):
if vol_hawkes.iloc[i] < q05.iloc[i]:
last_below = i
curr_sig = 0
if vol_hawkes.iloc[i] > q95.iloc[i] \
and vol_hawkes.iloc[i - 1] <= q95.iloc[i - 1] \
and last_below > 0 :
change = close.iloc[i] - close.iloc[last_below]
if change > 0.0:
curr_sig = 1
else:
curr_sig = -1
signal[i] = curr_sig
return signal
def get_trades_from_signal(data: pd.DataFrame, signal: np.array):
# Gets trade entry and exit times from a signal
# that has values of -1, 0, 1. Denoting short,flat,and long.
# No position sizing.
long_trades = []
short_trades = []
close_arr = data['close'].to_numpy()
last_sig = 0.0
open_trade = None
idx = data.index
for i in range(len(data)):
if signal[i] == 1.0 and last_sig != 1.0: # Long entry
if open_trade is not None:
open_trade[2] = idx[i]
open_trade[3] = close_arr[i]
short_trades.append(open_trade)
open_trade = [idx[i], close_arr[i], -1, np.nan]
if signal[i] == -1.0 and last_sig != -1.0: # Short entry
if open_trade is not None:
open_trade[2] = idx[i]
open_trade[3] = close_arr[i]
long_trades.append(open_trade)
open_trade = [idx[i], close_arr[i], -1, np.nan]
if signal[i] == 0.0 and last_sig == -1.0: # Short exit
open_trade[2] = idx[i]
open_trade[3] = close_arr[i]
short_trades.append(open_trade)
open_trade = None
if signal[i] == 0.0 and last_sig == 1.0: # Long exit
open_trade[2] = idx[i]
open_trade[3] = close_arr[i]
long_trades.append(open_trade)
open_trade = None
last_sig = signal[i]
long_trades = pd.DataFrame(long_trades, columns=['entry_time', 'entry_price', 'exit_time', 'exit_price'])
short_trades = pd.DataFrame(short_trades, columns=['entry_time', 'entry_price', 'exit_time', 'exit_price'])
long_trades['percent'] = (long_trades['exit_price'] - long_trades['entry_price']) / long_trades['entry_price']
short_trades['percent'] = -1 * (short_trades['exit_price'] - short_trades['entry_price']) / short_trades['entry_price']
long_trades = long_trades.set_index('entry_time')
short_trades = short_trades.set_index('entry_time')
return long_trades, short_trades
data = pd.read_csv('BTCUSDT3600.csv')
data['date'] = data['date'].astype('datetime64[s]')
data = data.set_index('date')
# Normalize volume
norm_lookback = 336
data['atr'] = ta.atr(np.log(data['high']), np.log(data['low']), np.log(data['close']), norm_lookback)
data['norm_range'] = (np.log(data['high']) - np.log(data['low'])) / data['atr']
#plot_two_axes(np.log(data['close']), data['norm_range'])
data['v_hawk'] = hawkes_process(data['norm_range'], 0.1)
data['sig'] = vol_signal(data['close'], data['v_hawk'], 168)
data['next_return'] = np.log(data['close']).diff().shift(-1)
data['signal_return'] = data['sig'] * data['next_return']
win_returns = data[data['signal_return'] > 0]['signal_return'].sum()
lose_returns = data[data['signal_return'] < 0]['signal_return'].abs().sum()
signal_pf = win_returns / lose_returns
plt.style.use('dark_background')
data['signal_return'].cumsum().plot()
long_trades, short_trades = get_trades_from_signal(data, data['sig'].to_numpy())
long_win_rate = len(long_trades[long_trades['percent'] > 0]) / len(long_trades)
short_win_rate = len(short_trades[short_trades['percent'] > 0]) / len(short_trades)
long_average = long_trades['percent'].mean()
short_average = short_trades['percent'].mean()
time_in_market = len(data[data['sig'] != 0.0]) / len(data)
print("Profit Factor", signal_pf)
print("Long Win Rate", long_win_rate)
print("Long Average", long_average)
print("Short Win Rate", short_win_rate)
print("Short Average", short_average)
print("Time In Market", time_in_market)
'''
# Code for the heatmap
kappa_vals = [0.5, 0.25, 0.1, 0.05, 0.01]
lookback_vals = [24, 48, 96, 168, 336]
pf_df = pd.DataFrame(index=lookback_vals, columns=kappa_vals)
for lb in lookback_vals:
for k in kappa_vals:
data['v_hawk'] = hawkes_process(data['norm_range'], k)
data['sig'] = vol_signal(data['close'], data['v_hawk'], lb)
data['next_return'] = np.log(data['close']).diff().shift(-1)
data['signal_return'] = data['sig'] * data['next_return']
win_returns = data[data['signal_return'] > 0]['signal_return'].sum()
lose_returns = data[data['signal_return'] < 0]['signal_return'].abs().sum()
signal_pf = win_returns / lose_returns
pf_df.loc[lb, k] = float(signal_pf)
plt.style.use('dark_background')
import seaborn as sns
pf_df = pf_df.astype(float)
sns.heatmap(pf_df, annot=True, fmt='f')
plt.xlabel('Hawkes Kappa')
plt.ylabel('Threshold Lookback')
'''