275 lines
16 KiB
MQL5
275 lines
16 KiB
MQL5
//+------------------------------------------------------------------+
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//| Faza2.mq5 |
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//| Copyright 2023, DNG |
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//| https://www.mql5.com/ru/users/dng |
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//+------------------------------------------------------------------+
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#property copyright "Copyright 2023, DNG"
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#property link "https://www.mql5.com/ru/users/dng"
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#property version "1.00"
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//+------------------------------------------------------------------+
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//| Includes |
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//+------------------------------------------------------------------+
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#include "Cell.mqh"
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#include "..\RL\FQF.mqh"
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//+------------------------------------------------------------------+
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//| Input parameters |
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//+------------------------------------------------------------------+
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input int Iterations = 100000;
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input int UpdateTarget = 10000;
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//+------------------------------------------------------------------+
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//| |
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//+------------------------------------------------------------------+
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CFQF StudyNet;
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//---
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float dError;
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datetime dtStudied;
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bool bEventStudy;
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//---
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CBufferFloat State1;
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CBufferFloat *Rewards;
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Cell Base[];
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//+------------------------------------------------------------------+
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//| Expert initialization function |
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//+------------------------------------------------------------------+
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int OnInit()
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{
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//---
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if(!LoadTotalBase())
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return(INIT_FAILED);
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//---
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if(!StudyNet.Load(FileName + ".nnw", dtStudied, true))
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{
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CArrayObj *model = new CArrayObj();
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if(!CreateDescriptions(model))
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{
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delete model;
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return INIT_FAILED;
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}
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if(!StudyNet.Create(model))
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{
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delete model;
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return INIT_FAILED;
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}
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delete model;
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}
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if(!StudyNet.TrainMode(true))
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return INIT_FAILED;
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StudyNet.SetUpdateTarget(UpdateTarget);
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//---
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bEventStudy = EventChartCustom(ChartID(), 1, 0, 0, "Init");
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//---
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return(INIT_SUCCEEDED);
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}
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//+------------------------------------------------------------------+
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//| Expert deinitialization function |
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//+------------------------------------------------------------------+
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void OnDeinit(const int reason)
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{
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if(!!Rewards)
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delete Rewards;
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//---
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StudyNet.Save(FileName + ".nnw", 0, true);
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}
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//+------------------------------------------------------------------+
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//| Train function |
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//+------------------------------------------------------------------+
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void Train(void)
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{
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int total = ArraySize(Base);
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uint ticks = GetTickCount();
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for(int iter = 0; (iter < Iterations && !IsStopped()); iter ++)
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{
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int i = 0;
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int count = 0;
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int total_max = 0;
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i = (int)((MathRand() * MathRand() / MathPow(32767, 2)) * (total - 1));
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State1.AssignArray(Base[i].state);
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if(IsStopped())
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{
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PrintFormat("%s -> %d", __FUNCTION__, __LINE__);
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ExpertRemove();
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return;
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}
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int action = Base[i].total_actions;
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if(action < 0)
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{
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iter--;
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continue;
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}
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if(!StudyNet.feedForward(GetPointer(State1), 12, true))
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return;
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action = Base[i].actions[action];
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if(action < 0 || action > 3)
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action = 3;
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StudyNet.getResults(Rewards);
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Rewards.BufferInit(4, 0);
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if(!Rewards.Update(action, -Base[i].value))
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return;
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//---
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if(!StudyNet.backProp(GetPointer(Rewards)))
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return;
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if(GetTickCount() - ticks > 500)
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{
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Comment(StringFormat("%.2f%% -> Error %.8f", iter * 100.0 / (double)(Iterations), StudyNet.getRecentAverageError()));
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ticks = GetTickCount();
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}
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}
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Comment("");
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//---
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PrintFormat("%s -> %d -> %10.7f", __FUNCTION__, __LINE__, StudyNet.getRecentAverageError());
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ExpertRemove();
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//---
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}
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//+------------------------------------------------------------------+
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//| |
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//+------------------------------------------------------------------+
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bool CreateDescriptions(CArrayObj *Description)
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{
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//---
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if(!Description)
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{
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Description = new CArrayObj();
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if(!Description)
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return false;
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}
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//--- Model
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Description.Clear();
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CLayerDescription *descr;
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//--- Input layer
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if(!(descr = new CLayerDescription()))
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return false;
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descr.type = defNeuronBaseOCL;
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uint prev_count = descr.count = (int)(HistoryBars * 12 + 9);
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descr.window = 0;
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descr.activation = None;
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descr.optimization = ADAM;
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if(!Description.Add(descr))
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{
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delete descr;
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return false;
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}
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//--- layer 1
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if(!(descr = new CLayerDescription()))
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return false;
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descr.type = defNeuronBatchNormOCL;
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descr.count = prev_count;
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descr.batch = 200;
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descr.activation = None;
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descr.optimization = ADAM;
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if(!Description.Add(descr))
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{
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delete descr;
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return false;
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}
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//--- layer 2
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if(!(descr = new CLayerDescription()))
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return false;
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descr.type = defNeuronConvOCL;
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descr.count = prev_count / 3 - 1 ;
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descr.window = 6;
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descr.step = 3;
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descr.window_out = 6;
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descr.activation = LReLU;
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descr.optimization = ADAM;
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if(!Description.Add(descr))
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{
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delete descr;
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return false;
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}
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//--- layer 3
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if(!(descr = new CLayerDescription()))
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return false;
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descr.type = defNeuronBaseOCL;
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descr.count = 100;
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descr.optimization = ADAM;
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descr.activation = SIGMOID;
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if(!Description.Add(descr))
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{
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delete descr;
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return false;
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}
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//--- layer 4
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if(!(descr = new CLayerDescription()))
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return false;
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descr.type = defNeuronConvOCL;
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descr.count = 49;
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descr.window = 4;
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descr.step = 2;
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descr.window_out = 8;
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descr.activation = LReLU;
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descr.optimization = ADAM;
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if(!Description.Add(descr))
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{
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delete descr;
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return false;
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}
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//--- layer 5
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if(!(descr = new CLayerDescription()))
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return false;
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descr.type = defNeuronBaseOCL;
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descr.count = 100;
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descr.optimization = ADAM;
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descr.activation = TANH;
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if(!Description.Add(descr))
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{
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delete descr;
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return false;
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}
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//--- layer 6
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if(!(descr = new CLayerDescription()))
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return false;
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descr.type = defNeuronFQF;
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descr.count = 4;
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descr.window_out = 32;
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descr.optimization = ADAM;
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if(!Description.Add(descr))
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{
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delete descr;
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return false;
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}
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//---
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return true;
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}
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//+------------------------------------------------------------------+
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//| ChartEvent function |
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//+------------------------------------------------------------------+
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void OnChartEvent(const int id,
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const long &lparam,
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const double &dparam,
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const string &sparam)
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{
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//---
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if(id == 1001)
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Train();
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}
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//+------------------------------------------------------------------+
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//| |
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//+------------------------------------------------------------------+
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bool LoadTotalBase(void)
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{
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int handle = FileOpen(FileName + ".bd", FILE_READ | FILE_BIN | FILE_COMMON);
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if(handle < 0)
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return false;
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int total = FileReadInteger(handle);
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if(total <= 0)
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{
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FileClose(handle);
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return false;
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}
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if(ArrayResize(Base, total) < total)
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{
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FileClose(handle);
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return false;
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}
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for(int i = 0; i < total; i++)
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if(!Base[i].Load(handle))
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{
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FileClose(handle);
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return false;
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}
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FileClose(handle);
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//---
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return true;
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}
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//+------------------------------------------------------------------+
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