rl_generate_policy_mt {lazytrade} | R Documentation |
Function performs RL and generates model policy for each Market Type
Description
This function will perform Reinforcement Learning using Trading Data. It will suggest whether or not it is better to keep using trading systems or not. Function is just using results of the past performance to generate the recommendation (not a holy grail).
Usage
rl_generate_policy_mt(x, states, actions, control)
Arguments
x |
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states |
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actions |
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control |
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Details
Initial policy is generated using a dummy zero values. This way function starts working directly from the first observation. However policy 'ON' value will only be generated once the Q value is greater than zero
Value
Function returns data frame with reinforcement learning model policy
Examples
library(dplyr)
library(magrittr)
library(ReinforcementLearning)
library(lazytrade)
data(trading_systemDF)
states <- c("BUN", "BUV", "BEN", "BEV", "RAN", "RAV")
actions <- c("ON", "OFF")
control <- list(alpha = 0.7, gamma = 0.3, epsilon = 0.1)
rl_generate_policy_mt(x = trading_systemDF,
states = states,
actions = actions,
control = control)