stable/freqtrade/optimize/hyperopt_loss_sharpe_daily.py

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added daily sharpe ratio hyperopt loss method, ty @djacky (#2826) * more consistent backtesting tables and labels * added rounding to Tot Profit % on Sell Reasosn table to be consistent with other percentiles on table. * added daily sharpe ratio hyperopt loss method, ty @djacky * removed commented code * removed unused profit_abs * added proper slippage to each trade * replaced use of old value total_profit * Align quotes in same area * added daily sharpe ratio test and modified hyperopt_loss_sharpe_daily * fixed some more line alignments * updated docs to include SharpeHyperOptLossDaily * Update dockerfile to 3.8.1 * Run tests against 3.8 * added daily sharpe ratio hyperopt loss method, ty @djacky * removed commented code * removed unused profit_abs * added proper slippage to each trade * replaced use of old value total_profit * added daily sharpe ratio test and modified hyperopt_loss_sharpe_daily * updated docs to include SharpeHyperOptLossDaily * docs fixes * missed one fix * fixed standard deviation line * fixed to bracket notation * fixed to bracket notation * fixed syntax error * better readability, kept np.sqrt(365) which results in annualized sharpe ratio * fixed method arguments indentation * updated commented out debug print line * renamed after slippage profit_percent so it wont affect _calculate_results_metrics() * Reworked to fill leading and trailing days * No need for np; make flake happy * Fix risk free rate Co-authored-by: Matthias <xmatthias@outlook.com> Co-authored-by: hroff-1902 <47309513+hroff-1902@users.noreply.github.com>
2020-02-06 05:49:08 +00:00
"""
SharpeHyperOptLossDaily
This module defines the alternative HyperOptLoss class which can be used for
Hyperoptimization.
"""
import math
from datetime import datetime
from pandas import DataFrame, date_range
from freqtrade.optimize.hyperopt import IHyperOptLoss
class SharpeHyperOptLossDaily(IHyperOptLoss):
"""
Defines the loss function for hyperopt.
This implementation uses the Sharpe Ratio calculation.
"""
@staticmethod
def hyperopt_loss_function(results: DataFrame, trade_count: int,
min_date: datetime, max_date: datetime,
*args, **kwargs) -> float:
"""
Objective function, returns smaller number for more optimal results.
Uses Sharpe Ratio calculation.
"""
resample_freq = '1D'
slippage_per_trade_ratio = 0.0005
days_in_year = 365
annual_risk_free_rate = 0.0
risk_free_rate = annual_risk_free_rate / days_in_year
# apply slippage per trade to profit_percent
results.loc[:, 'profit_percent_after_slippage'] = \
results['profit_percent'] - slippage_per_trade_ratio
# create the index within the min_date and end max_date
t_index = date_range(start=min_date, end=max_date, freq=resample_freq)
sum_daily = (
results.resample(resample_freq, on='close_time').agg(
{"profit_percent_after_slippage": sum}).reindex(t_index).fillna(0)
)
total_profit = sum_daily["profit_percent_after_slippage"] - risk_free_rate
expected_returns_mean = total_profit.mean()
up_stdev = total_profit.std()
if (up_stdev != 0.):
sharp_ratio = expected_returns_mean / up_stdev * math.sqrt(days_in_year)
else:
# Define high (negative) sharpe ratio to be clear that this is NOT optimal.
sharp_ratio = -20.
# print(t_index, sum_daily, total_profit)
# print(risk_free_rate, expected_returns_mean, up_stdev, sharp_ratio)
return -sharp_ratio