X-Git-Url: https://git.donarmstrong.com/?a=blobdiff_plain;f=linearalgebra.h;h=7453f4ebd8b86ed20f530c2e1ba7989808361fb2;hb=3e8b80da722e11c72bce957e2f42a6e884dd02b6;hp=58a60dae8f04d9eae12fff9f8d729cc2119d4c92;hpb=f0a594f6676ef5a52d1f122b6de70de2fda08c81;p=mothur.git diff --git a/linearalgebra.h b/linearalgebra.h index 58a60da..7453f4e 100644 --- a/linearalgebra.h +++ b/linearalgebra.h @@ -20,20 +20,63 @@ public: ~LinearAlgebra() {} vector > matrix_mult(vector >, vector >); + vector >transpose(vector >); void recenter(double, vector >, vector >&); - int tred2(vector >&, vector&, vector&); + //eigenvectors + int tred2(vector >&, vector&, vector&); int qtli(vector&, vector&, vector >&); + vector< vector > calculateEuclidianDistance(vector >&, int); //pass in axes and number of dimensions vector< vector > calculateEuclidianDistance(vector >&); //pass in axes vector > getObservedEuclideanDistance(vector >&); double calcPearson(vector >&, vector >&); double calcSpearman(vector >&, vector >&); double calcKendall(vector >&, vector >&); - + double calcKruskalWallis(vector&, double&); + double calcWilcoxon(vector&, vector&, double&); + + double calcPearson(vector&, vector&, double&); + double calcSpearman(vector&, vector&, double&); + double calcKendall(vector&, vector&, double&); + + double calcSpearmanSig(double, double, double, double); //length, f^3 - f where f is the number of ties in x, f^3 - f where f is the number of ties in y, sum of squared diffs in ranks. - designed to find the sif of one score. + double calcPearsonSig(double, double); //length, coeff. + double calcKendallSig(double, double); //length, coeff. + + vector solveEquations(vector >, vector); + vector solveEquations(vector >, vector); + vector > getInverse(vector >); + double choose(double, double); + double normalvariate(double mu, double sigma); + vector< vector > lda(vector< vector >& a, vector groups, vector< vector >& means, bool&); //Linear discriminant analysis - a is [features][valuesFromGroups] groups indicates which group each sampling comes from. For example if groups = early, late, mid, early, early. a[0][0] = value for feature0 from groupEarly. + int svd(vector< vector >& a, vector& w, vector< vector >& v); //Singular value decomposition private: MothurOut* m; double pythag(double, double); + double betacf(const double, const double, const double); + double betai(const double, const double, const double); + double gammln(const double); + double gammq(const double, const double); + double gser(double&, const double, const double, double&); + double gcf(double&, const double, const double, double&); + double erfcc(double); + double gammp(const double, const double); + double pnorm(double x); + + double ran0(int&); //for testing + double ran1(int&); //for testing + double ran2(int&); //for testing + double ran3(int&); //for testing + double ran4(int&); //for testing + void psdes(unsigned long &, unsigned long &); //for testing + + void ludcmp(vector >&, vector&, double&); + void lubksb(vector >&, vector&, vector&); + + void ludcmp(vector >&, vector&, float&); + void lubksb(vector >&, vector&, vector&); + }; #endif