//+------------------------------------------------------------------+ //| Study.mq5 | //| Copyright DNG® | //| https://www.mql5.com/ru/users/dng | //+------------------------------------------------------------------+ #property copyright "Copyright DNG®" #property link "https://www.mql5.com/ru/users/dng" #property version "1.00" //+------------------------------------------------------------------+ //| | //+------------------------------------------------------------------+ #define Study #include "Trajectory.mqh" //+------------------------------------------------------------------+ //| Input parameters | //+------------------------------------------------------------------+ input int Iterations = 100000; input float Tau = 0.01f; //+------------------------------------------------------------------+ //| | //+------------------------------------------------------------------+ STrajectory Buffer[]; CNet Actor; CNet Critic1; CNet Critic2; CNet TargetCritic1; CNet TargetCritic2; CNet Autoencoder; //--- float dError; datetime dtStudied; //--- CBufferFloat State; CBufferFloat Account; CBufferFloat Actions; CBufferFloat Gradient; CBufferFloat *Result; vector AutoencoderResult; vector check; vector CriticResult; float MinCriticError; float MaxCriticError; float AvgCriticError; //--- 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(!Actor.Load(FileName + "Act.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) || !Autoencoder.Load(FileName + "AEnc.nnw", temp, temp, temp, dtStudied, true) || !TargetCritic1.Load(FileName + "Crt1.nnw", temp, temp, temp, dtStudied, true) || !TargetCritic2.Load(FileName + "Crt2.nnw", temp, temp, temp, dtStudied, true)) { CArrayObj *actor = new CArrayObj(); CArrayObj *critic = new CArrayObj(); CArrayObj *autoencoder = new CArrayObj(); if(!CreateDescriptions(actor, critic, autoencoder)) { delete actor; delete critic; delete autoencoder; return INIT_FAILED; } if(!Actor.Create(actor) || !Critic1.Create(critic) || !Critic2.Create(critic) || !Autoencoder.Create(autoencoder)) { delete actor; delete critic; delete autoencoder; return INIT_FAILED; } if(!TargetCritic1.Create(critic) || !TargetCritic2.Create(critic)) { delete actor; delete critic; delete autoencoder; return INIT_FAILED; } delete actor; delete critic; delete autoencoder; //--- TargetCritic1.WeightsUpdate(GetPointer(Critic1), 1.0f); TargetCritic2.WeightsUpdate(GetPointer(Critic2), 1.0f); } //--- OpenCL = Actor.GetOpenCL(); Critic1.SetOpenCL(OpenCL); Critic2.SetOpenCL(OpenCL); TargetCritic1.SetOpenCL(OpenCL); TargetCritic2.SetOpenCL(OpenCL); Autoencoder.SetOpenCL(OpenCL); //--- Actor.getResults(Result); if(Result.Total() != NActions) { PrintFormat("The scope of the actor does not match the actions count (%d <> %d)", NActions, Result.Total()); return INIT_FAILED; } //--- Actor.GetLayerOutput(0, Result); if(Result.Total() != (HistoryBars * BarDescr)) { PrintFormat("Input size of Actor doesn't match state description (%d <> %d)", Result.Total(), (HistoryBars * BarDescr)); return INIT_FAILED; } //--- Actor.GetLayerOutput(LatentLayer, Result); int latent_state = Result.Total(); Critic1.GetLayerOutput(0, Result); if(Result.Total() != latent_state) { PrintFormat("Input size of Critic doesn't match latent state Actor (%d <> %d)", Result.Total(), latent_state); return INIT_FAILED; } //--- Critic1.GetLayerOutput(1, Result); latent_state = Result.Total(); Autoencoder.GetLayerOutput(0, Result); if(Result.Total() != latent_state) { PrintFormat("Input size of Autoencoder doesn't match latent state Critic (%d <> %d)", Result.Total(), latent_state); 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) { //--- TargetCritic1.WeightsUpdate(GetPointer(Critic1), Tau); TargetCritic2.WeightsUpdate(GetPointer(Critic2), Tau); Actor.Save(FileName + "Act.nnw", 0, 0, 0, TimeCurrent(), true); TargetCritic1.Save(FileName + "Crt1.nnw", Critic1.getRecentAverageError(), 0, 0, TimeCurrent(), true); TargetCritic1.Save(FileName + "Crt2.nnw", Critic2.getRecentAverageError(), 0, 0, TimeCurrent(), true); Autoencoder.Save(FileName + "AEnc.nnw", Autoencoder.getRecentAverageError(), 0, 0, TimeCurrent(), true); delete Result; } //+------------------------------------------------------------------+ //| 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) { int total_tr = ArraySize(Buffer); uint ticks = GetTickCount(); //--- for(int iter = 0; (iter < Iterations && !IsStopped()); iter ++) { int tr = (int)((MathRand() / 32767.0) * (total_tr - 1)); int i = (int)((MathRand() * MathRand() / MathPow(32767, 2)) * (Buffer[tr].Total - 2)); //--- Target State.AssignArray(Buffer[tr].States[i + 1].state); float PrevBalance = Buffer[tr].States[i].account[0]; float PrevEquity = Buffer[tr].States[i].account[1]; Account.Clear(); Account.Add((Buffer[tr].States[i + 1].account[0] - PrevBalance) / PrevBalance); Account.Add(Buffer[tr].States[i + 1].account[1] / PrevBalance); Account.Add((Buffer[tr].States[i + 1].account[1] - PrevEquity) / PrevEquity); Account.Add(Buffer[tr].States[i + 1].account[2]); Account.Add(Buffer[tr].States[i + 1].account[3]); Account.Add(Buffer[tr].States[i + 1].account[4] / PrevBalance); Account.Add(Buffer[tr].States[i + 1].account[5] / PrevBalance); Account.Add(Buffer[tr].States[i + 1].account[6] / PrevBalance); double x = (double)Buffer[tr].States[i + 1].account[7] / (double)(D'2024.01.01' - D'2023.01.01'); Account.Add((float)MathSin(x != 0 ? 2.0 * M_PI * x : 0)); x = (double)Buffer[tr].States[i + 1].account[7] / (double)PeriodSeconds(PERIOD_MN1); Account.Add((float)MathCos(x != 0 ? 2.0 * M_PI * x : 0)); x = (double)Buffer[tr].States[i + 1].account[7] / (double)PeriodSeconds(PERIOD_W1); Account.Add((float)MathSin(x != 0 ? 2.0 * M_PI * x : 0)); x = (double)Buffer[tr].States[i + 1].account[7] / (double)PeriodSeconds(PERIOD_D1); Account.Add((float)MathSin(x != 0 ? 2.0 * M_PI * x : 0)); //--- if(Account.GetIndex() >= 0) Account.BufferWrite(); if(!Actor.feedForward(GetPointer(State), 1, false, GetPointer(Account))) { PrintFormat("%s -> %d", __FUNCTION__, __LINE__); ExpertRemove(); break; } //--- if(!TargetCritic1.feedForward(GetPointer(Actor), LatentLayer, GetPointer(Actor)) || !TargetCritic2.feedForward(GetPointer(Actor), LatentLayer, GetPointer(Actor))) { PrintFormat("%s -> %d", __FUNCTION__, __LINE__); break; } TargetCritic1.getResults(Result); float reward = Result[0]; TargetCritic2.getResults(Result); reward = Buffer[tr].Revards[i] + DiscFactor * (MathMin(reward, Result[0]) - Buffer[tr].Revards[i + 1]); //--- Q-function study State.AssignArray(Buffer[tr].States[i].state); PrevBalance = Buffer[tr].States[MathMax(i - 1, 0)].account[0]; PrevEquity = Buffer[tr].States[MathMax(i - 1, 0)].account[1]; Account.Update(0, (Buffer[tr].States[i].account[0] - PrevBalance) / PrevBalance); Account.Update(1, Buffer[tr].States[i].account[1] / PrevBalance); Account.Update(2, (Buffer[tr].States[i].account[1] - PrevEquity) / PrevEquity); Account.Update(3, Buffer[tr].States[i].account[2]); Account.Update(4, Buffer[tr].States[i].account[3]); Account.Update(5, Buffer[tr].States[i].account[4] / PrevBalance); Account.Update(6, Buffer[tr].States[i].account[5] / PrevBalance); Account.Update(7, Buffer[tr].States[i].account[6] / PrevBalance); x = (double)Buffer[tr].States[i].account[7] / (double)(D'2024.01.01' - D'2023.01.01'); Account.Add((float)MathSin(x != 0 ? 2.0 * M_PI * x : 0)); x = (double)Buffer[tr].States[i].account[7] / (double)PeriodSeconds(PERIOD_MN1); Account.Add((float)MathCos(x != 0 ? 2.0 * M_PI * x : 0)); x = (double)Buffer[tr].States[i].account[7] / (double)PeriodSeconds(PERIOD_W1); Account.Add((float)MathSin(x != 0 ? 2.0 * M_PI * x : 0)); x = (double)Buffer[tr].States[i].account[7] / (double)PeriodSeconds(PERIOD_D1); Account.Add((float)MathSin(x != 0 ? 2.0 * M_PI * x : 0)); Account.BufferWrite(); //--- if(!Actor.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(Actor), LatentLayer, GetPointer(Actions)) || !Critic2.feedForward(GetPointer(Actor), LatentLayer, GetPointer(Actions))) { PrintFormat("%s -> %d", __FUNCTION__, __LINE__); break; } Critic1.getResults(Result); float error = reward - Result[0]; if(iter == 0) { MaxCriticError = error; MinCriticError = error; AvgCriticError = error; } else { MaxCriticError = MathMax(error, MaxCriticError); MinCriticError = MathMin(error, MinCriticError); AvgCriticError = 0.99f * AvgCriticError + 0.01f * error; } Critic2.getResults(Result); error = reward - Result[0]; MaxCriticError = MathMax(error, MaxCriticError); MinCriticError = MathMin(error, MinCriticError); AvgCriticError = 0.99f * AvgCriticError + 0.01f * error; //--- Result.Update(0, reward); if(!Critic1.backProp(Result, GetPointer(Actions), GetPointer(Gradient)) || !Critic2.backProp(Result, GetPointer(Actions), GetPointer(Gradient))) { PrintFormat("%s -> %d", __FUNCTION__, __LINE__); break; } //--- Policy study CNet *critic = NULL; if(Critic1.getRecentAverageError() <= Critic2.getRecentAverageError()) critic = GetPointer(Critic1); else critic = GetPointer(Critic2); //--- if(!critic.feedForward(GetPointer(Actor), LatentLayer, GetPointer(Actor)) || !Autoencoder.feedForward(critic, 1, NULL, -1)) { PrintFormat("%s -> %d", __FUNCTION__, __LINE__); break; } Autoencoder.getResults(AutoencoderResult); critic.GetLayerOutput(1, Result); Result.GetData(CriticResult); critic.getResults(Result); //--- float alpha = (MaxCriticError == MinCriticError ? 0 : 10.0f * (AvgCriticError - MinCriticError) / (MaxCriticError - MinCriticError)); alpha = 1.0f / (1.0f + MathExp(-alpha)); alpha = 1 - alpha; reward = Result[0]; reward = (reward > 0 ? reward + PoliticAdjust : PoliticAdjust); reward += AutoencoderResult.Loss(CriticResult, LOSS_MSE) * alpha; //--- Result.Update(0, reward); critic.TrainMode(false); if(!critic.backProp(Result, GetPointer(Actor)) || !Actor.backPropGradient(GetPointer(Account), GetPointer(Gradient), LatentLayer) || !Actor.backPropGradient(GetPointer(Account), GetPointer(Gradient))) { PrintFormat("%s -> %d", __FUNCTION__, __LINE__); critic.TrainMode(true); break; } critic.TrainMode(true); //--- Autoencoder study Result.AssignArray(CriticResult); if(!Autoencoder.backProp(Result, critic, 1)) { PrintFormat("%s -> %d", __FUNCTION__, __LINE__); break; } //--- Update Target Nets TargetCritic1.WeightsUpdate(GetPointer(Critic1), Tau); TargetCritic2.WeightsUpdate(GetPointer(Critic2), Tau); //--- 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(); //--- } //+------------------------------------------------------------------+