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Document using protections
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@ -326,7 +326,7 @@ There are four parameter types each suited for different purposes.
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!!! Warning
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Hyperoptable parameters cannot be used in `populate_indicators` - as hyperopt does not recalculate indicators for each epoch, so the starting value would be used in this case.
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### Optimizing an indicator parameter
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## Optimizing an indicator parameter
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Assuming you have a simple strategy in mind - a EMA cross strategy (2 Moving averages crossing) - and you'd like to find the ideal parameters for this strategy.
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@ -413,6 +413,94 @@ While this strategy is most likely too simple to provide consistent profit, it s
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While this may slow down the hyperopt startup speed, the overall performance will increase as the Hyperopt execution itself may pick the same value for multiple epochs (changing other values).
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You should however try to use space ranges as small as possible. Every new column will require more memory, and every possibility hyperopt can try will increase the search space.
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## Optimizing protections
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Freqtrade can also optimize protections. How you optimize protections is up to you, and the following should be considered as example only.
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The strategy will simply need to define the "protections" entry as property returning a list of protection configurations.
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``` python
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from pandas import DataFrame
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from functools import reduce
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import talib.abstract as ta
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from freqtrade.strategy import IStrategy
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from freqtrade.strategy import CategoricalParameter, DecimalParameter, IntParameter
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import freqtrade.vendor.qtpylib.indicators as qtpylib
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class MyAwesomeStrategy(IStrategy):
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stoploss = -0.05
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timeframe = '15m'
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# Define the parameter spaces
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coolback_lookback = IntParameter(2, 48, default=5, space="protection", optimize=True)
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stop_duration = IntParameter(12, 200, default=5, space="protection", optimize=True)
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use_stop_protection = CategoricalParameter([True, False], default=True, space="protection", optimize=True)
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@property
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def protections(self):
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prot = []
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prot.append({
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"method": "CooldownPeriod",
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"stop_duration_candles": self.coolback_lookback.value
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})
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if self.use_stop_protection.value:
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prot.append({
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"method": "StoplossGuard",
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"lookback_period_candles": 24 * 3,
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"trade_limit": 4,
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"stop_duration_candles": self.stop_duration.value,
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"only_per_pair": False
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})
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return protection
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def populate_indicators(self, dataframe: DataFrame, metadata: dict) -> DataFrame:
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# ...
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```
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You can then run hyperopt as follows:
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`freqtrade hyperopt --hyperopt-loss SharpeHyperOptLossDaily --strategy MyAwesomeStrategy --spaces protection`
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!!! Note
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The protection space is not part of the default space, and is only available with the Parameters Hyperopt interface, not with the legacy hyperopt interface (which required separate hyperopt files).
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Freqtrade will also automatically change the "--enable-protections" flag if the protection space is selected.
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### Migrating from previous property setups
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A migration from a previous setup is pretty simple, and can be accomplished by converting the protections entry to a property.
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In simple terms, the following configuration will be converted to the below.
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``` python
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class MyAwesomeStrategy(IStrategy):
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protections = [
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{
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"method": "CooldownPeriod",
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"stop_duration_candles": 4
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}
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]
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```
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Result
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``` python
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class MyAwesomeStrategy(IStrategy):
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@property
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def protections(self):
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return [
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{
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"method": "CooldownPeriod",
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"stop_duration_candles": 4
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}
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]
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```
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You will then obviously also change potential interesting entries to parameters to allow hyper-optimization.
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## Loss-functions
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Each hyperparameter tuning requires a target. This is usually defined as a loss function (sometimes also called objective function), which should decrease for more desirable results, and increase for bad results.
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