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The Math project is a library of lightweight, self-contained mathematics and statistics components addressing the most common practical problems not immediately available in the Java programming language or commons-lang.

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/*
 * Licensed to the Apache Software Foundation (ASF) under one or more
 * contributor license agreements.  See the NOTICE file distributed with
 * this work for additional information regarding copyright ownership.
 * The ASF licenses this file to You under the Apache License, Version 2.0
 * (the "License"); you may not use this file except in compliance with
 * the License.  You may obtain a copy of the License at
 *
 *      http://www.apache.org/licenses/LICENSE-2.0
 *
 * Unless required by applicable law or agreed to in writing, software
 * distributed under the License is distributed on an "AS IS" BASIS,
 * WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
 * See the License for the specific language governing permissions and
 * limitations under the License.
 */

package org.apache.commons.math.linear;

import java.util.Arrays;


/**
 * Class transforming a symmetrical matrix to tridiagonal shape.
 * 

A symmetrical m × m matrix A can be written as the product of three matrices: * A = Q × T × QT with Q an orthogonal matrix and T a symmetrical * tridiagonal matrix. Both Q and T are m × m matrices.

*

This implementation only uses the upper part of the matrix, the part below the * diagonal is not accessed at all.

*

Transformation to tridiagonal shape is often not a goal by itself, but it is * an intermediate step in more general decomposition algorithms like {@link * EigenDecomposition eigen decomposition}. This class is therefore intended for internal * use by the library and is not public. As a consequence of this explicitly limited scope, * many methods directly returns references to internal arrays, not copies.

* @version $Revision: 799857 $ $Date: 2009-08-01 09:07:12 -0400 (Sat, 01 Aug 2009) $ * @since 2.0 */ class TriDiagonalTransformer { /** Householder vectors. */ private final double householderVectors[][]; /** Main diagonal. */ private final double[] main; /** Secondary diagonal. */ private final double[] secondary; /** Cached value of Q. */ private RealMatrix cachedQ; /** Cached value of Qt. */ private RealMatrix cachedQt; /** Cached value of T. */ private RealMatrix cachedT; /** * Build the transformation to tridiagonal shape of a symmetrical matrix. *

The specified matrix is assumed to be symmetrical without any check. * Only the upper triangular part of the matrix is used.

* @param matrix the symmetrical matrix to transform. * @exception InvalidMatrixException if matrix is not square */ public TriDiagonalTransformer(RealMatrix matrix) throws InvalidMatrixException { if (!matrix.isSquare()) { throw new NonSquareMatrixException(matrix.getRowDimension(), matrix.getColumnDimension()); } final int m = matrix.getRowDimension(); householderVectors = matrix.getData(); main = new double[m]; secondary = new double[m - 1]; cachedQ = null; cachedQt = null; cachedT = null; // transform matrix transform(); } /** * Returns the matrix Q of the transform. *

Q is an orthogonal matrix, i.e. its transpose is also its inverse.

* @return the Q matrix */ public RealMatrix getQ() { if (cachedQ == null) { cachedQ = getQT().transpose(); } return cachedQ; } /** * Returns the transpose of the matrix Q of the transform. *

Q is an orthogonal matrix, i.e. its transpose is also its inverse.

* @return the Q matrix */ public RealMatrix getQT() { if (cachedQt == null) { final int m = householderVectors.length; cachedQt = MatrixUtils.createRealMatrix(m, m); // build up first part of the matrix by applying Householder transforms for (int k = m - 1; k >= 1; --k) { final double[] hK = householderVectors[k - 1]; final double inv = 1.0 / (secondary[k - 1] * hK[k]); cachedQt.setEntry(k, k, 1); if (hK[k] != 0.0) { double beta = 1.0 / secondary[k - 1]; cachedQt.setEntry(k, k, 1 + beta * hK[k]); for (int i = k + 1; i < m; ++i) { cachedQt.setEntry(k, i, beta * hK[i]); } for (int j = k + 1; j < m; ++j) { beta = 0; for (int i = k + 1; i < m; ++i) { beta += cachedQt.getEntry(j, i) * hK[i]; } beta *= inv; cachedQt.setEntry(j, k, beta * hK[k]); for (int i = k + 1; i < m; ++i) { cachedQt.addToEntry(j, i, beta * hK[i]); } } } } cachedQt.setEntry(0, 0, 1); } // return the cached matrix return cachedQt; } /** * Returns the tridiagonal matrix T of the transform. * @return the T matrix */ public RealMatrix getT() { if (cachedT == null) { final int m = main.length; cachedT = MatrixUtils.createRealMatrix(m, m); for (int i = 0; i < m; ++i) { cachedT.setEntry(i, i, main[i]); if (i > 0) { cachedT.setEntry(i, i - 1, secondary[i - 1]); } if (i < main.length - 1) { cachedT.setEntry(i, i + 1, secondary[i]); } } } // return the cached matrix return cachedT; } /** * Get the Householder vectors of the transform. *

Note that since this class is only intended for internal use, * it returns directly a reference to its internal arrays, not a copy.

* @return the main diagonal elements of the B matrix */ double[][] getHouseholderVectorsRef() { return householderVectors; } /** * Get the main diagonal elements of the matrix T of the transform. *

Note that since this class is only intended for internal use, * it returns directly a reference to its internal arrays, not a copy.

* @return the main diagonal elements of the T matrix */ double[] getMainDiagonalRef() { return main; } /** * Get the secondary diagonal elements of the matrix T of the transform. *

Note that since this class is only intended for internal use, * it returns directly a reference to its internal arrays, not a copy.

* @return the secondary diagonal elements of the T matrix */ double[] getSecondaryDiagonalRef() { return secondary; } /** * Transform original matrix to tridiagonal form. *

Transformation is done using Householder transforms.

*/ private void transform() { final int m = householderVectors.length; final double[] z = new double[m]; for (int k = 0; k < m - 1; k++) { //zero-out a row and a column simultaneously final double[] hK = householderVectors[k]; main[k] = hK[k]; double xNormSqr = 0; for (int j = k + 1; j < m; ++j) { final double c = hK[j]; xNormSqr += c * c; } final double a = (hK[k + 1] > 0) ? -Math.sqrt(xNormSqr) : Math.sqrt(xNormSqr); secondary[k] = a; if (a != 0.0) { // apply Householder transform from left and right simultaneously hK[k + 1] -= a; final double beta = -1 / (a * hK[k + 1]); // compute a = beta A v, where v is the Householder vector // this loop is written in such a way // 1) only the upper triangular part of the matrix is accessed // 2) access is cache-friendly for a matrix stored in rows Arrays.fill(z, k + 1, m, 0); for (int i = k + 1; i < m; ++i) { final double[] hI = householderVectors[i]; final double hKI = hK[i]; double zI = hI[i] * hKI; for (int j = i + 1; j < m; ++j) { final double hIJ = hI[j]; zI += hIJ * hK[j]; z[j] += hIJ * hKI; } z[i] = beta * (z[i] + zI); } // compute gamma = beta vT z / 2 double gamma = 0; for (int i = k + 1; i < m; ++i) { gamma += z[i] * hK[i]; } gamma *= beta / 2; // compute z = z - gamma v for (int i = k + 1; i < m; ++i) { z[i] -= gamma * hK[i]; } // update matrix: A = A - v zT - z vT // only the upper triangular part of the matrix is updated for (int i = k + 1; i < m; ++i) { final double[] hI = householderVectors[i]; for (int j = i; j < m; ++j) { hI[j] -= hK[i] * z[j] + z[i] * hK[j]; } } } } main[m - 1] = householderVectors[m - 1][m - 1]; } }




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