| 1 | #ifndef MARS_MJTrainCuts | 
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| 2 | #define MARS_MJTrainCuts | 
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| 3 |  | 
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| 4 | #ifndef MARS_MJTrainRanForest | 
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| 5 | #include "MJTrainRanForest.h" | 
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| 6 | #endif | 
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| 7 |  | 
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| 8 | #ifndef ROOT_TObjArray | 
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| 9 | #include <TObjArray.h> | 
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| 10 | #endif | 
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| 11 |  | 
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| 12 | #ifndef MARS_MDataSet | 
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| 13 | #include "MDataSet.h" | 
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| 14 | #endif | 
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| 15 |  | 
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| 16 | class MH3; | 
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| 17 | class MBinning; | 
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| 18 |  | 
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| 19 | class MJTrainCuts : public MJTrainRanForest | 
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| 20 | { | 
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| 21 | public: | 
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| 22 | enum Type_t { kTrainOn, kTrainOff, kTestOn, kTestOff }; | 
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| 23 |  | 
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| 24 | private: | 
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| 25 | MDataSet fDataSetOn; | 
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| 26 | MDataSet fDataSetOff; | 
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| 27 |  | 
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| 28 | UInt_t fNum[4]; | 
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| 29 | /* | 
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| 30 | TList fPreTasksSet[4]; | 
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| 31 | TList fPostTasksSet[4]; | 
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| 32 |  | 
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| 33 | Bool_t fEnableWeights[4]; | 
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| 34 | */ | 
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| 35 | Bool_t fUseRegression; | 
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| 36 |  | 
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| 37 | TList     fHists; | 
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| 38 | TObjArray fBinnings; | 
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| 39 |  | 
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| 40 | // Result | 
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| 41 | void DisplayResult(MH3 &h31, MH3 &h32, Float_t ontime); | 
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| 42 |  | 
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| 43 | public: | 
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| 44 | MJTrainCuts() :  fUseRegression(kFALSE) | 
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| 45 | { | 
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| 46 | for (int i=0; i<4; i++) | 
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| 47 | { | 
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| 48 | //fEnableWeights[i]=kFALSE; | 
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| 49 | fNum[i] = (UInt_t)-1; | 
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| 50 | } | 
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| 51 |  | 
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| 52 | fHists.SetOwner(); | 
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| 53 | fBinnings.SetOwner(); | 
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| 54 | } | 
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| 55 |  | 
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| 56 | void SetDataSetOn(const MDataSet &ds, UInt_t ntrain=(UInt_t)-1, UInt_t ntest=(UInt_t)-1) | 
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| 57 | { | 
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| 58 | ds.Copy(fDataSetOn); | 
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| 59 |  | 
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| 60 | fDataSetOn.SetNumAnalysis(1); | 
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| 61 |  | 
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| 62 | fNum[kTestOn]  = ntrain; | 
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| 63 | fNum[kTrainOn] = ntest; | 
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| 64 | } | 
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| 65 | void SetDataSetOff(const MDataSet &ds, UInt_t ntrain=(UInt_t)-1, UInt_t ntest=(UInt_t)-1) | 
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| 66 | { | 
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| 67 | ds.Copy(fDataSetOff); | 
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| 68 |  | 
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| 69 | fDataSetOff.SetNumAnalysis(2); | 
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| 70 |  | 
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| 71 | fNum[kTestOff]  = ntrain; | 
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| 72 | fNum[kTrainOff] = ntest; | 
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| 73 | } | 
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| 74 |  | 
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| 75 | // Add Histogram | 
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| 76 | void AddHist(UInt_t nx); | 
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| 77 | void AddHist(UInt_t nx, UInt_t ny); | 
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| 78 | void AddHist(UInt_t nx, UInt_t ny, UInt_t nz); | 
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| 79 |  | 
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| 80 | void AddBinning(UInt_t n, const MBinning &bins); | 
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| 81 | //void AddBinning(const MBinning &bins); | 
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| 82 |  | 
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| 83 | // Standard user interface | 
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| 84 | /* | 
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| 85 | void SetWeights(Type_t typ, const char *rule)  { if (fEnableWeights[typ]) return; fEnableWeights[typ]=kTRUE; AddPostTask(typ, rule); } | 
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| 86 | void SetWeights(Type_t typ, MTask *t)          { if (fEnableWeights[typ]) return; fEnableWeights[typ]=kTRUE; AddPostTask(typ, t); } | 
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| 87 |  | 
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| 88 | void AddPreTaskOn(MTask *t)                                       { AddPreTask(kTrainOn, t); AddPreTask(kTestOn, t); } | 
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| 89 | void AddPreTaskOn(const char *rule, const char *name="MWeight")   { AddPreTask(kTrainOn, rule, name); AddPreTask(kTestOn, rule, name); } | 
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| 90 | void AddPreTaskOff(MTask *t)                                      { AddPreTask(kTrainOff, t); AddPreTask(kTestOff, t); } | 
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| 91 | void AddPreTaskOff(const char *rule, const char *name="MWeight")  { AddPreTask(kTrainOff, rule, name); AddPreTask(kTestOff, rule, name); } | 
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| 92 |  | 
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| 93 | void AddPostTaskOn(MTask *t)                                      { AddPostTask(kTrainOn, t); AddPostTask(kTestOn, t); } | 
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| 94 | void AddPostTaskOn(const char *rule, const char *name="MWeight")  { AddPostTask(kTrainOn, rule, name); AddPostTask(kTestOn, rule, name); } | 
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| 95 | void AddPostTaskOff(MTask *t)                                     { AddPostTask(kTrainOff, t); AddPostTask(kTestOff, t); } | 
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| 96 | void AddPostTaskOff(const char *rule, const char *name="MWeight") { AddPostTask(kTrainOff, rule, name); AddPostTask(kTestOff, rule, name); } | 
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| 97 |  | 
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| 98 | void AddPreTask(Type_t typ, MTask *t)                                      { Add(fPreTasksSet[typ],  t); } | 
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| 99 | void AddPreTask(Type_t typ, const char *rule, const char *name="MWeight")  { AddPar(fPreTasksSet[typ], rule, name); } | 
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| 100 | void AddPostTask(Type_t typ, MTask *t)                                     { Add(fPostTasksSet[typ],  t); } | 
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| 101 | void AddPostTask(Type_t typ, const char *rule, const char *name="MWeight") { AddPar(fPostTasksSet[typ], rule, name); } | 
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| 102 |  | 
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| 103 | void SetWeightsOn(const char *rule)  { SetWeights(kTrainOn, rule);  SetWeights(kTestOn, rule); } | 
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| 104 | void SetWeightsOn(MTask *t)          { SetWeights(kTrainOn, t);     SetWeights(kTestOn, t); } | 
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| 105 | void SetWeightsOff(const char *rule) { SetWeights(kTrainOff, rule); SetWeights(kTestOff, rule); } | 
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| 106 | void SetWeightsOff(MTask *t)         { SetWeights(kTrainOff, t);    SetWeights(kTestOff, t); } | 
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| 107 | */ | 
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| 108 | void EnableRegression(Bool_t b=kTRUE)     { fUseRegression =  b; } | 
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| 109 | void EnableClassification(Bool_t b=kTRUE) { fUseRegression = !b; } | 
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| 110 |  | 
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| 111 | // Main function to start processing | 
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| 112 | Bool_t Process(const char *out); | 
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| 113 |  | 
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| 114 | ClassDef(MJTrainCuts, 0)//Class to help finding cuts using the random forest | 
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| 115 | }; | 
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| 116 |  | 
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| 117 | #endif | 
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