//This is the ideal Fourier invariants. ring rQ = 0,(q1,q2),dp; ideal Invariants = 0; // This is the inverse of the Fourier transform. matrix ptoq[2][2] = 1/4,3/4, 3/4,-3/4; // This is the ring of probability distributions. ring rP = 0,(p1,p2),dp; //This is the Fourier transform. matrix qtop[2][2] = 1,1, 1,-1/3; ideal Fourier = qtop*transpose(maxideal(1)); // This is the list of polynomial invariants. map F = rQ, Fourier; ideal PInvariants = F(Invariants); // This is the polynomial parametrization. ring r = 0,(c0,c1),dp; ideal P = c0^3+c1^3, 3*c0^2*c1+3*c0*c1^2; // This checks that the polynomial parametrization // lies on the probability simplex. // It requires suma.sing. Most likely, you should // change the directory where you saved this file. // If you do have this file, you should uncomment // the following two lines. // < "/home/lgp/singular/suma.sing"; // Suma(Substitute(0,P)); // This checks that the PInvariants vanish at // the polynomial parametrization. map Evaluate = rP, P; // The following command takes a lot of space and time to // finish for larger models. // ideal Z = Evaluate(PInvariants); setring rP; ideal Z; int i; for (i=1; i<= size(PInvariants); i++) { i; Z = PInvariants[i]; setring r; Evaluate(Z); setring rP; }