//general routine for polynomial of a matrix, tuned to minimize the number //of matrix-matrix multiplications on cost of additions and memory // the polynom and exp routines will work on any type, for which traits class // is defined containing definition of an element type, norm and axpy operation #include "la_traits.h" #include "sparsemat_traits.h" template const T polynom2(const T &x, const NRVec &c) { int order=c.size()-1; T z,y; //trivial reference implementation by horner scheme if(order==0) {y=x; y=c[0];} //to avoid the problem: we do not know the size of the matrix to contruct a scalar one else { int i; z=x*c[order]; for(i=order-1; i>=0; i--) { if(i const T polynom(const T &x, const NRVec &c) { int n=c.size()-1; int i,j,k,m=0,t; if(n<=4) return polynom2(x,c); //here the horner scheme is optimal //first find m which minimizes the number of multiplications j=10*n; for(i=2;i<=n+1;i++) { t=i-2+2*(n/i)-(n%i)?0:1; if(tn) break; if(j==0) {if(i==0) s=x; /*just to get the dimensions of the matrix*/ s=c[k]; /*create diagonal matrix*/} else NRMat_traits::axpy(s,xpows[j-1],c[k]); //general s+=xpows[j-1]*c[k]; but more efficient for matrices } if(i==0) {r=s; f=xpows[m-1];} else { r+= s*f; f=f*xpows[m-1]; } } delete[] xpows; return r; } //for general objects template const T ncommutator ( const T &x, const T &y, int nest=1, const bool right=1) { T z; if(right) {z=x; while(--nest>=0) z=z*y-y*z;} else {z=y; while(--nest>=0) z=x*z-z*x;} return z; } template const T nanticommutator ( const T &x, const T &y, int nest=1, const bool right=1) { T z; if(right) {z=x; while(--nest>=0) z=z*y+y*z;} else {z=y; while(--nest>=0) z=x*z+z*x;} return z; } //general BCH expansion (can be written more efficiently in a specialization for matrices) template const T BCHexpansion (const T &h, const T &t, const int n, const bool verbose=1)\ { T result=h; double factor=1.; T z=h; for(int i=1; i<=n; ++i) { factor/=i; z= z*t-t*z; if(verbose) cerr << "BCH contribution at order "< const T ipow( const T &x, int i) { if(i<0) laerror("negative exponent in ipow"); if(i==0) {T r=x; r=1.; return r;}//trick for matrix dimension if(i==1) return x; T y,z; z=x; while(!(i&1)) { z = z*z; i >>= 1; } y=z; while((i >>= 1)/*!=0*/) { z = z*z; if(i&1) y = y*z; } return y; } inline int nextpow2(const double n) { const double log2=log(2.); if(n<=.75) return 0; //try to keep the taylor expansion short if(n<=1.) return 1; return int(ceil(log(n)/log2-log(.75))); } template NRVec::elementtype> exp_aux(const T &x, int &power) { //should better be computed by mathematica to have accurate last digits, chebyshev instead, see exp in glibc static double exptaylor[]={ 1., 1., 0.5, 0.1666666666666666666666, 0.0416666666666666666666, 0.0083333333333333333333, 0.0013888888888888888888, 0.00019841269841269841253, 2.4801587301587301566e-05, 2.7557319223985892511e-06, 2.7557319223985888276e-07, 2.5052108385441720224e-08, 2.0876756987868100187e-09, 1.6059043836821613341e-10, 1.1470745597729724507e-11, 7.6471637318198164055e-13, 4.7794773323873852534e-14, 2.8114572543455205981e-15, 1.5619206968586225271e-16, 8.2206352466243294955e-18, 4.1103176233121648441e-19, 0.}; double mnorm= NRMat_traits::norm(x); power=nextpow2(mnorm); double scale=exp(-log(2.)*power); //find how long taylor expansion will be necessary const double precision=1e-16; double s,t; s=mnorm*scale; int n=0; t=1.; do { n++; t*=s; } while(t*exptaylor[n]>precision);//taylor 0 will terminate in any case int i; //adjust the coefficients in order to avoid scaling the argument NRVec::elementtype> taylor2(n+1); for(i=0,t=1.;i<=n;i++) { taylor2[i]=exptaylor[i]*t; t*=scale; } return taylor2; } template const T exp(const T &x) { int power; //prepare the polynom of and effectively scale T NRVec::elementtype> taylor2=exp_aux(x,power); T r=polynom(x,taylor2); //for accuracy summing from the smallest terms up would be better, but this is more efficient for matrices //power the result back for(int i=0; i const typename NRMat_traits::elementtype determinant(MAT a)//again passed by value { typename NRMat_traits::elementtype det; if(a.nrows()!=a.ncols()) laerror("determinant of non-square matrix"); linear_solve(a,NULL,&det); return det; } template const V exptimes(const M &mat, V vec) //uses just matrix vector multiplication { if(mat.nrows()!=mat.ncols()||(unsigned int) mat.nrows() != (unsigned int)vec.size()) laerror("inappropriate sizes in exptimes"); int power; //prepare the polynom of and effectively scale the matrix NRVec::elementtype> taylor2=exp_aux(mat,power); V result(mat.nrows()); for(int i=1; i<=(1<1) vec=result; //apply again to the result of previous application //apply polynom of the matrix to the vector iteratively V y=vec; result=y*taylor2[0]; for(int j=1; j