added daily sharpe ratio hyperopt loss method, ty @djacky
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@ -256,7 +256,7 @@ AVAILABLE_CLI_OPTIONS = {
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help='Specify the class name of the hyperopt loss function class (IHyperOptLoss). '
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help='Specify the class name of the hyperopt loss function class (IHyperOptLoss). '
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'Different functions can generate completely different results, '
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'Different functions can generate completely different results, '
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'since the target for optimization is different. Built-in Hyperopt-loss-functions are: '
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'since the target for optimization is different. Built-in Hyperopt-loss-functions are: '
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'DefaultHyperOptLoss, OnlyProfitHyperOptLoss, SharpeHyperOptLoss.'
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'DefaultHyperOptLoss, OnlyProfitHyperOptLoss, SharpeHyperOptLoss, SharpeHyperOptLossDaily.'
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'(default: `%(default)s`).',
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'(default: `%(default)s`).',
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metavar='NAME',
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metavar='NAME',
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default=constants.DEFAULT_HYPEROPT_LOSS,
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default=constants.DEFAULT_HYPEROPT_LOSS,
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69
freqtrade/optimize/hyperopt_loss_sharpe_daily.py
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69
freqtrade/optimize/hyperopt_loss_sharpe_daily.py
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@ -0,0 +1,69 @@
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"""
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SharpeHyperOptLoss
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This module defines the alternative HyperOptLoss class which can be used for
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Hyperoptimization.
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"""
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from datetime import datetime
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from pandas import DataFrame
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import numpy as np
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from freqtrade.optimize.hyperopt import IHyperOptLoss
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class SharpeHyperOptLossDaily(IHyperOptLoss):
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"""
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Defines the loss function for hyperopt.
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This implementation uses the Sharpe Ratio calculation.
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"""
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@staticmethod
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def hyperopt_loss_function(
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results: DataFrame,
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trade_count: int,
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min_date: datetime,
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max_date: datetime,
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*args,
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**kwargs
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) -> float:
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"""
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Objective function, returns smaller number for more optimal results.
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Uses Sharpe Ratio calculation.
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"""
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total_profit = results.profit_percent
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# days_period = (max_date - min_date).days
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# adding slippage of 0.1% per trade
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total_profit = total_profit - 0.0005
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# expected_yearly_return = total_profit.sum() / days_period
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# if np.std(total_profit) != 0.0:
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# sharp_ratio = expected_yearly_return / np.std(total_profit) * np.sqrt(365)
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# else:
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# # Define high (negative) sharpe ratio to be clear that this is NOT optimal.
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# sharp_ratio = -20.0
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# # print(expected_yearly_return, np.std(total_profit), sharp_ratio)
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# return -sharp_ratio
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sum_daily = (
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results.resample("D", on="close_time").agg(
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{"profit_percent": sum, "profit_abs": sum}
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)
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* 100.0
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)
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if np.std(total_profit) != 0.0:
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sharp_ratio = (
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sum_daily["profit_percent"].mean()
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/ sum_daily["profit_percent"].std()
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* np.sqrt(365)
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)
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else:
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# Define high (negative) sharpe ratio to be clear that this is NOT optimal.
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sharp_ratio = -20.0
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return -sharp_ratio
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