| 1 | #include <estim/arx.h> |
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| 2 | #include <estim/merger.h> |
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| 3 | #include <stat/exp_family.h> |
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| 4 | #include <stat/loggers.h> |
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| 5 | //#include <stat/merger.h> |
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| 6 | using namespace bdm; |
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| 7 | |
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| 8 | //These lines are needed for use of cout and endl |
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| 9 | using std::cout; |
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| 10 | using std::endl; |
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| 11 | |
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| 12 | int main() { |
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| 13 | // Setup model |
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| 14 | RV y ( "{y }" ); |
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| 15 | RV u1 ( "{u1 }" ); |
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| 16 | RV u2 ( "{u2 }" ); |
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| 17 | RV uu=u1; uu.add ( u2 ); |
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| 18 | |
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| 19 | double a1t = 1.5; |
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| 20 | double a2t = 0.8; |
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| 21 | double sqr=0.10; |
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| 22 | // Full system |
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| 23 | vec thg =vec_2 ( a1t,a2t ); //Simulated system - zero for constant term |
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| 24 | vec Th = concat ( thg, sqr ); //Full parameter |
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| 25 | |
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| 26 | // Estimated systems ARX(2) |
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| 27 | RV a1 ( "{a1 }" ); |
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| 28 | RV a2 ( "{a2 }" ); |
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| 29 | RV r ( "{r }" ); |
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| 30 | RV all =a1; all.add ( a2 ); all.add ( r ); |
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| 31 | RV allj =a1; allj.add ( r ); allj.add ( a2 ); |
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| 32 | vec Thj=vec_3 ( a1t,sqr,a2t ); |
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| 33 | // Setup values |
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| 34 | |
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| 35 | //ARX constructor |
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| 36 | mat V0 = 0.001*eye ( 2 ); V0 ( 0,0 ) = 1; // |
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| 37 | mat V0g = 0.001*eye ( 3 ); V0g ( 0,0 ) = 1; // |
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| 38 | |
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| 39 | ARX P1; P1.set_statistics(2, V0, -1 ); |
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| 40 | ARX P2; P2.set_statistics(2, V0, -1 ); |
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| 41 | ARX PG; PG.set_statistics(3, V0g, -1 ); //or -1? |
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| 42 | // ARX PGk ( all, V0g, -1 ); |
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| 43 | |
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| 44 | //Test estimation |
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| 45 | int ndat = 100; |
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| 46 | int t; |
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| 47 | |
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| 48 | // Logging |
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| 49 | dirfilelog L ( "exp/merg_giw",ndat ); |
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| 50 | int Li_Data = L.add ( RV ( "{Y U1 U2 }" ), "" ); |
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| 51 | int Li_LL = L.add ( RV ( "{G M }" ), "LL" ); |
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| 52 | int Li_P1m = L.add ( RV ( "{a1 r }" ), "P1" ); |
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| 53 | int Li_P2m = L.add ( RV ( "{a2 r }" ), "P2" ); |
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| 54 | int Li_Gm = L.add ( RV ( "{a1 a2 r }" ), "G" ); |
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| 55 | int Li_Mm = L.add ( RV ( "{a1 r a2 }" ), "M" ); |
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| 56 | L.init(); |
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| 57 | |
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| 58 | vec Yt ( ndat ); |
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| 59 | vec yt ( 1 ); |
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| 60 | |
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| 61 | vec LLs ( 2 ); |
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| 62 | vec rgrg ( 2 ); |
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| 63 | |
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| 64 | //Proposal |
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| 65 | enorm<ldmat> g0; g0.set_rv( a1 ); g0.set_parameters ( "1 ",mat ( "1" ) ); |
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| 66 | egamma g1; g1.set_rv ( r ); g1.set_parameters ( "2 ", "2" ); |
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| 67 | enorm<ldmat> g2; g2.set_rv ( a2 ); g2.set_parameters ( "1 ",mat ( "1" ) ); |
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| 68 | |
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| 69 | Array<const epdf*> A ( 3 ); A ( 0 ) = &g0; A ( 1 ) =&g1; A ( 2 ) = &g2; |
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| 70 | eprod G0; G0.set_parameters ( A ); |
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| 71 | |
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| 72 | for ( t=0; t<ndat; t++ ) { |
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| 73 | // True system |
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| 74 | rgrg ( 0 ) = pow ( sin ( ( t/40.0 ) *pi ),3 ); |
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| 75 | rgrg ( 1 ) = pow ( cos ( ( t/40.0 +0.1 ) *pi ),3 ); |
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| 76 | |
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| 77 | Yt ( t ) = thg*rgrg + sqr * NorRNG(); |
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| 78 | |
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| 79 | // Bayes for all |
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| 80 | P1.bayes ( concat ( Yt ( t ),vec_1 ( rgrg ( 0 ) ) ) ); |
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| 81 | P2.bayes ( concat ( Yt ( t ),vec_1 ( rgrg ( 1 ) ) ) ); |
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| 82 | PG.bayes ( concat ( Yt ( t ),rgrg ) ); |
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| 83 | |
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| 84 | |
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| 85 | // crippling PGk by substituting zeros. |
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| 86 | /* ldmat &Vk=const_cast<egiw*>(PGk._e())->_V(); //PG ldmat does not like 0! |
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| 87 | mat fVk=PG._e()->_V().to_mat(); |
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| 88 | fVk(1,2) = 0.0; |
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| 89 | fVk(2,1) = 0.0; |
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| 90 | Vk = ldmat(fVk); |
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| 91 | */ //PGk is now krippled |
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| 92 | |
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| 93 | // Merge estimates |
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| 94 | Array<pdf*> A ( 2 ); A ( 0 ) =&P1;A ( 1 ) =&P2; |
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| 95 | merger M ( A ); |
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| 96 | M.set_parameters ( 1.5, 100,3 ); //M._Mix().set_method(QB); |
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| 97 | //M2.set_parameters ( 100.0, 1000,3 ); //M2._Mix().set_method(QB); |
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| 98 | M.merge ( &G0 ); |
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| 99 | //M2.merge ( &G0 ); |
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| 100 | |
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| 101 | //Likelihood |
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| 102 | yt ( 0 ) = Yt ( t ); |
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| 103 | |
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| 104 | // LLs ( 0 ) = P1._e()->evallog ( get_vec(Th, "1 2") ); |
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| 105 | // LLs ( 1 ) = P2._e()->evallog ( get_vec(Th, "3 2") ); |
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| 106 | LLs ( 0 ) = PG._e()->evallog ( Th ); |
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| 107 | LLs ( 1 ) = M._Mix().logpred ( concat ( Thj, vec_1 ( 1.0 ) ) ); |
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| 108 | // LLs ( 3 ) = M2._Mix().logpred ( concat(Thj, vec_1(1.0)) ); |
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| 109 | L.logit ( Li_LL, LLs ); //log-normal |
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| 110 | |
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| 111 | //Logger |
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| 112 | L.logit ( Li_Data, vec_3 ( Yt ( t ), rgrg ( 0 ), rgrg ( 1 ) ) ); |
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| 113 | L.logit ( Li_P1m, P1._e()->mean() ); |
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| 114 | L.logit ( Li_P2m, P2._e()->mean() ); |
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| 115 | L.logit ( Li_Gm, PG._e()->mean() ); |
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| 116 | L.logit ( Li_Mm, M.mean() ); |
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| 117 | |
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| 118 | L.step ( ); |
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| 119 | |
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| 120 | cout << "Vg: " << PG._e()->_V().to_mat() <<endl; |
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| 121 | vec mea = M.mean(); |
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| 122 | cout << "Ve: " << M.variance() <<endl; |
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| 123 | } |
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| 124 | L.finalize( ); |
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| 125 | L.itsave ( "merg_egiw.it" ); |
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| 126 | cout << endl; |
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| 127 | } |
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