NN_in_Trading/Experts/CFPI/StudyCritic.mq5

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2026-03-12 15:02:23 +02:00
<EFBFBD><EFBFBD>//+------------------------------------------------------------------+
//| Study.mq5 |
//| Copyright DNG<EFBFBD> |
//| https://www.mql5.com/ru/users/dng |
//+------------------------------------------------------------------+
#property copyright "Copyright DNG<00>"
#property link "https://www.mql5.com/ru/users/dng"
#property version "1.00"
//+------------------------------------------------------------------+
//| |
//+------------------------------------------------------------------+
#define Study
#include "Trajectory.mqh"
//+------------------------------------------------------------------+
//| Input parameters |
//+------------------------------------------------------------------+
input int Iterations = 1e6;
//+------------------------------------------------------------------+
//| |
//+------------------------------------------------------------------+
STrajectory Buffer[];
CNet StateEncoder;
CNet Critic1;
CNet Critic2;
//---
float dError;
datetime dtStudied;
//---
CBufferFloat State;
CBufferFloat Account;
CBufferFloat Actions;
CBufferFloat Gradient;
CBufferFloat *Result;
//---
COpenCLMy *OpenCL;
//+------------------------------------------------------------------+
//| Expert initialization function |
//+------------------------------------------------------------------+
int OnInit()
{
//---
ResetLastError();
if(!LoadTotalBase())
{
PrintFormat("Error of load study data: %d", GetLastError());
return INIT_FAILED;
}
//--- load models
float temp;
if(!StateEncoder.Load(FileName + "Enc.nnw", temp, temp, temp, dtStudied, true) ||
!Critic1.Load(FileName + "Crt1.nnw", temp, temp, temp, dtStudied, true) ||
!Critic2.Load(FileName + "Crt2.nnw", temp, temp, temp, dtStudied, true))
{
Print("Init new models");
CArrayObj *actor = new CArrayObj();
CArrayObj *critic = new CArrayObj();
CArrayObj *encoder = new CArrayObj();
if(!CreateDescriptions(actor, critic, encoder))
{
delete actor;
delete critic;
delete encoder;
return INIT_FAILED;
}
if(!Critic1.Create(critic) || !Critic2.Create(critic) ||
!StateEncoder.Create(encoder))
{
delete actor;
delete critic;
delete encoder;
return INIT_FAILED;
}
delete actor;
delete critic;
delete encoder;
//---
}
//---
OpenCL = Critic1.GetOpenCL();
Critic2.SetOpenCL(OpenCL);
StateEncoder.SetOpenCL(OpenCL);
//---
StateEncoder.getResults(Result);
if(Result.Total() != LatentCount)
{
PrintFormat("The scope of the State Encoder does not match the latent size count (%d <> %d)", LatentCount, Result.Total());
return INIT_FAILED;
}
//---
StateEncoder.GetLayerOutput(0, Result);
if(Result.Total() != (HistoryBars * BarDescr))
{
PrintFormat("Input size of State Encoder doesn't match state description (%d <> %d)", Result.Total(), (HistoryBars * BarDescr));
return INIT_FAILED;
}
//---
Critic1.GetLayerOutput(0, Result);
if(Result.Total() != LatentCount)
{
PrintFormat("Input size of Critic1 doesn't match State Encoder output (%d <> %d)", Result.Total(), LatentCount);
return INIT_FAILED;
}
//---
Critic2.GetLayerOutput(0, Result);
if(Result.Total() != LatentCount)
{
PrintFormat("Input size of Critic2 doesn't match State Encoder output (%d <> %d)", Result.Total(), LatentCount);
return INIT_FAILED;
}
//---
Gradient.BufferInit(AccountDescr, 0);
//---
if(!EventChartCustom(ChartID(), 1, 0, 0, "Init"))
{
PrintFormat("Error of create study event: %d", GetLastError());
return INIT_FAILED;
}
//---
return(INIT_SUCCEEDED);
}
//+------------------------------------------------------------------+
//| Expert deinitialization function |
//+------------------------------------------------------------------+
void OnDeinit(const int reason)
{
//---
if(!(reason == REASON_INITFAILED || reason == REASON_RECOMPILE))
{
StateEncoder.Save(FileName + "Enc.nnw", 0, 0, 0, TimeCurrent(), true);
Critic1.Save(FileName + "Crt1.nnw", Critic1.getRecentAverageError(), 0, 0, TimeCurrent(), true);
Critic2.Save(FileName + "Crt2.nnw", Critic2.getRecentAverageError(), 0, 0, TimeCurrent(), true);
}
delete Result;
delete OpenCL;
}
//+------------------------------------------------------------------+
//| ChartEvent function |
//+------------------------------------------------------------------+
void OnChartEvent(const int id,
const long &lparam,
const double &dparam,
const string &sparam)
{
//---
if(id == 1001)
Train();
}
//+------------------------------------------------------------------+
//| Train function |
//+------------------------------------------------------------------+
void Train(void)
{
//---
vector<float> probability = GetProbTrajectories(Buffer, 0.9);
//---
vector<float> rewards, rewards1, rewards2, target_reward;
uint ticks = GetTickCount();
//---
for(int iter = 0; (iter < Iterations && !IsStopped()); iter ++)
{
int tr = SampleTrajectory(probability);
int i = (int)((MathRand() * MathRand() / MathPow(32767, 2)) * (Buffer[tr].Total - 3));
if(i < 0)
{
iter--;
continue;
}
//--- Q-function study
State.AssignArray(Buffer[tr].States[i].state);
float PrevBalance = Buffer[tr].States[MathMax(i - 1, 0)].account[0];
float PrevEquity = Buffer[tr].States[MathMax(i - 1, 0)].account[1];
Account.Clear();
Account.Add((Buffer[tr].States[i].account[0] - PrevBalance) / PrevBalance);
Account.Add(Buffer[tr].States[i].account[1] / PrevBalance);
Account.Add((Buffer[tr].States[i].account[1] - PrevEquity) / PrevEquity);
Account.Add(Buffer[tr].States[i].account[2]);
Account.Add(Buffer[tr].States[i].account[3]);
Account.Add(Buffer[tr].States[i].account[4] / PrevBalance);
Account.Add(Buffer[tr].States[i].account[5] / PrevBalance);
Account.Add(Buffer[tr].States[i].account[6] / PrevBalance);
double time = (double)Buffer[tr].States[i].account[7];
double x = time / (double)(D'2024.01.01' - D'2023.01.01');
Account.Add((float)MathSin(x != 0 ? 2.0 * M_PI * x : 0));
x = time / (double)PeriodSeconds(PERIOD_MN1);
Account.Add((float)MathCos(x != 0 ? 2.0 * M_PI * x : 0));
x = time / (double)PeriodSeconds(PERIOD_W1);
Account.Add((float)MathSin(x != 0 ? 2.0 * M_PI * x : 0));
x = time / (double)PeriodSeconds(PERIOD_D1);
Account.Add((float)MathSin(x != 0 ? 2.0 * M_PI * x : 0));
if(Account.GetIndex() >= 0)
Account.BufferWrite();
//---
if(!StateEncoder.feedForward(GetPointer(State), 1, false, GetPointer(Account)))
{
PrintFormat("%s -> %d", __FUNCTION__, __LINE__);
break;
}
//---
Actions.AssignArray(Buffer[tr].States[i].action);
if(Actions.GetIndex() >= 0)
Actions.BufferWrite();
//---
if(!Critic1.feedForward(GetPointer(StateEncoder), -1, GetPointer(Actions)) ||
!Critic2.feedForward(GetPointer(StateEncoder), -1, GetPointer(Actions)))
{
PrintFormat("%s -> %d", __FUNCTION__, __LINE__);
break;
}
//---
Critic1.getResults(rewards1);
Critic2.getResults(rewards2);
//---
rewards.Assign(Buffer[tr].States[i + 1].rewards);
target_reward.Assign(Buffer[tr].States[i + 2].rewards);
rewards = rewards - target_reward * DiscFactor;
Result.AssignArray(CAGrad(rewards - rewards1) + rewards1);
if(!Critic1.backProp(Result, GetPointer(Actions), GetPointer(Gradient)) ||
!StateEncoder.backPropGradient(GetPointer(Account), GetPointer(Gradient)))
{
PrintFormat("%s -> %d", __FUNCTION__, __LINE__);
break;
}
Result.AssignArray(CAGrad(rewards - rewards2) + rewards2);
if(!Critic2.backProp(Result, GetPointer(Actions), GetPointer(Gradient)) ||
!StateEncoder.backPropGradient(GetPointer(Account), GetPointer(Gradient)))
{
PrintFormat("%s -> %d", __FUNCTION__, __LINE__);
break;
}
//---
if(GetTickCount() - ticks > 500)
{
string str = StringFormat("%-15s %5.2f%% -> Error %15.8f\n", "Critic1", iter * 100.0 / (double)(Iterations), Critic1.getRecentAverageError());
str += StringFormat("%-15s %5.2f%% -> Error %15.8f\n", "Critic2", iter * 100.0 / (double)(Iterations), Critic2.getRecentAverageError());
Comment(str);
ticks = GetTickCount();
}
}
Comment("");
//---
PrintFormat("%s -> %d -> %-15s %10.7f", __FUNCTION__, __LINE__, "Critic1", Critic1.getRecentAverageError());
PrintFormat("%s -> %d -> %-15s %10.7f", __FUNCTION__, __LINE__, "Critic2", Critic2.getRecentAverageError());
ExpertRemove();
//---
}
//+------------------------------------------------------------------+