//+------------------------------------------------------------------+ //| StudyModel.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" //+------------------------------------------------------------------+ //| | //+------------------------------------------------------------------+ #include "Trajectory.mqh" //+------------------------------------------------------------------+ //| Input parameters | //+------------------------------------------------------------------+ input int Iterations = 1000000; bool TrainMode = true; //+------------------------------------------------------------------+ //| | //+------------------------------------------------------------------+ STrajectory Buffer[]; CNet Scheduler; //--- float dError; datetime dtStudied; //--- CBufferFloat State; CBufferFloat *Result; vector SchedulerResult; //+------------------------------------------------------------------+ //| Expert initialization function | //+------------------------------------------------------------------+ int OnInit() { //--- ResetLastError(); if(!LoadTotalBase()) { PrintFormat("Error of load study data: %d", GetLastError()); return INIT_FAILED; } //--- load models float temp; if(!Scheduler.Load(FileName + "Sch.nnw", temp, temp, temp, dtStudied, true)) { CArrayObj *actor = new CArrayObj(); CArrayObj *scheduler = new CArrayObj(); if(!CreateDescriptions(actor, scheduler)) { delete actor; delete scheduler; return INIT_FAILED; } if(!Scheduler.Create(scheduler)) { delete actor; delete scheduler; return INIT_FAILED; } delete actor; delete scheduler; //--- } //--- Scheduler.getResults(Result); if(Result.Total() != AccountDescr) { PrintFormat("The scope of the scheduler does not match the account description (%d <> %d)", AccountDescr, Result.Total()); return INIT_FAILED; } //--- 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) { //--- Scheduler.Save(FileName + "Sch.nnw", Scheduler.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(); } //+------------------------------------------------------------------+ //| | //+------------------------------------------------------------------+ bool LoadTotalBase(void) { int handle = FileOpen(FileName + ".bd", FILE_READ | FILE_BIN | FILE_COMMON | FILE_SHARE_READ); if(handle < 0) return false; int total = FileReadInteger(handle); if(total <= 0) { FileClose(handle); return false; } if(ArrayResize(Buffer, total) < total) { FileClose(handle); return false; } for(int i = 0; i < total; i++) if(!Buffer[i].Load(handle)) { FileClose(handle); return false; } FileClose(handle); //--- return true; } //+------------------------------------------------------------------+ //| Train function | //+------------------------------------------------------------------+ void Train(void) { int total_tr = ArraySize(Buffer); uint ticks = GetTickCount(); vector account, reward; int bar, action; //--- for(int iter = 0; (iter < Iterations && !IsStopped()); iter ++) { int tr = (int)(((double)MathRand() / 32767.0) * (total_tr - 1)); int i = (int)((MathRand() * MathRand() / MathPow(32767, 2)) * (Buffer[tr].Total - 2)); 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]; State.Add((Buffer[tr].States[i].account[0] - PrevBalance) / PrevBalance); State.Add(Buffer[tr].States[i].account[1] / PrevBalance); State.Add((Buffer[tr].States[i].account[1] - PrevEquity) / PrevEquity); State.Add(Buffer[tr].States[i].account[2] / PrevBalance); State.Add(Buffer[tr].States[i].account[4] / PrevBalance); State.Add(Buffer[tr].States[i].account[5]); State.Add(Buffer[tr].States[i].account[6]); State.Add(Buffer[tr].States[i].account[7] / PrevBalance); State.Add(Buffer[tr].States[i].account[8] / PrevBalance); //--- bar = (HistoryBars - 1) * BarDescr; double cl_op = Buffer[tr].States[i + 1].state[bar]; double prof_1l = SymbolInfoDouble(_Symbol, SYMBOL_TRADE_TICK_VALUE_PROFIT) * cl_op / SymbolInfoDouble(_Symbol, SYMBOL_POINT); PrevBalance = Buffer[tr].States[i].account[0]; PrevEquity = Buffer[tr].States[i].account[1]; if(IsStopped()) { PrintFormat("%s -> %d", __FUNCTION__, __LINE__); ExpertRemove(); break; } //--- if(!Scheduler.feedForward(GetPointer(State), 1, false,(CBufferFloat*)NULL)) { PrintFormat("%s -> %d", __FUNCTION__, __LINE__); ExpertRemove(); break; } if(prof_1l > 5) action = (prof_1l < 20 || Buffer[tr].States[i].account[6] > 0 ? 2 : 0); else { if(prof_1l < -5) action = (prof_1l > -20 || Buffer[tr].States[i].account[5] > 0 ? 2 : 1); else action = 3; } account = GetNewState(Buffer[tr].States[i].account, action, prof_1l); Result.Clear(); Result.Add((account[0] - PrevBalance) / PrevBalance); Result.Add(account[1] / PrevBalance); Result.Add((account[1] - PrevEquity) / PrevEquity); Result.Add(account[2] / PrevBalance); Result.Add(account[4] / PrevBalance); Result.Add(account[5]); Result.Add(account[6]); Result.Add(account[7] / PrevBalance); Result.Add(account[8] / PrevBalance); if(!Scheduler.backProp(Result,(CBufferFloat*)NULL)) { PrintFormat("%s -> %d", __FUNCTION__, __LINE__); ExpertRemove(); break; } if(GetTickCount() - ticks > 500) { string str = StringFormat("%-15s %5.2f%% -> Error %15.8f\n", "Scheduler", iter * 100.0 / (double)(Iterations), Scheduler.getRecentAverageError()); Comment(str); ticks = GetTickCount(); } } Comment(""); //--- PrintFormat("%s -> %d -> %-15s %10.7f", __FUNCTION__, __LINE__, "Scheduler", Scheduler.getRecentAverageError()); ExpertRemove(); //--- } //+------------------------------------------------------------------+ //| | //+------------------------------------------------------------------+ vector GetNewState(float &prev_account[], int action, double prof_1l) { vector result; //--- result.Assign(prev_account); switch(action) { case 0: result[5] += (float)SymbolInfoDouble(_Symbol, SYMBOL_VOLUME_MIN); result[7] += result[5] * (float)prof_1l; result[8] -= result[6] * (float)prof_1l; result[4] = result[7] + result[8]; result[1] = result[0] + result[4]; break; case 1: result[6] += (float)SymbolInfoDouble(_Symbol, SYMBOL_VOLUME_MIN); result[7] += result[5] * (float)prof_1l; result[8] -= result[6] * (float)prof_1l; result[4] = result[7] + result[8]; result[1] = result[0] + result[4]; break; case 2: result[0] += result[4]; result[1] = result[0]; result[2] = result[0]; for(int i = 3; i < AccountDescr; i++) result[i] = 0; break; case 3: result[7] += result[5] * (float)prof_1l; result[8] -= result[6] * (float)prof_1l; result[4] = result[7] + result[8]; result[1] = result[0] + result[4]; break; } //--- return result return result; } //+------------------------------------------------------------------+ //| | //+------------------------------------------------------------------+ vector GetAgentReward(int skill, vector &discriminator, float &prev_account[]) { //--- prepare matrix discriminator_matrix; discriminator_matrix.Init(1, discriminator.Size()); discriminator_matrix.Row(discriminator, 0); discriminator_matrix.Reshape(NSkills, AccountDescr); vector forecast = discriminator_matrix.Row(skill); //--- check action int action = 3; float buy = forecast[5] - prev_account[5]; float sell = forecast[6] - prev_account[6]; if(buy < 0 && sell < 0) action = 2; else if(buy > sell) action = 0; else if(buy < sell) action = 1; //--- calculate reward vector result = vector::Zeros(NActions); float mean = (forecast / discriminator_matrix.Mean(0)).Mean(); result[action] = MathLog(MathAbs(mean)); //--- return result return result; } //+------------------------------------------------------------------+