1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60 61 62 63 64 65 66 67 68 69 70 71 72 73 74 75 76 77 78 79 80 81 82 83 84 85 86 87 88 89 90 91 92 93 94 95 96 97 98 99 100 101 102 103 104 105 106 107 108 109 110 111 112 113 114 115 116 117 118 119 120 121 122 123 124 125 126 127 128 129 130 131 132 133 134 135 136 137 138 139 140 141 142 143 144 145 146 147 148 149 150 151 152 153 154 155 156 157 158 159 160 161 162 163 164 165 166 167 168 169 170 171 172 173 174 175 176 177 178 179 180 181 182 183 184 185 186 187 188 189 190 191 192 193 194 195 196 197 198 199 200 201 202 203 204 205 206 207 208 209 210 211 212 213 214 215 216 217 218 219 220 221 222 223 224 225 226 227 228 229 230 231 232 233 234 235 236 237 238 239 240 241 242 243 244 245 246 247 248 249 250 251 252 253 254 255 256 257 258 259 260 261 262 263 264 265 266 267 268 269 270 271 272 273 274 275 276 277 278 279 280 281 282 283 284 285 286 287 288 289 290 291 292 293 294 295 296 297 298 299 300 301 302 303 304 305 306 307 308 309 310 311 312 313 314 315 316 317 318 319 320 321 322 323 324 325 326 327 328 329 330 331 332 333 334 335 336 337 338 339 340 341 342 343 344 345 346 347 348 349 350 351 352 353 354 355 356 357 358 359
|
/* ========================================================================= */
/* === AMD: approximate minimum degree ordering =========================== */
/* ========================================================================= */
/* ------------------------------------------------------------------------- */
/* AMD Version 1.1 (Jan. 21, 2004), Copyright (c) 2004 by Timothy A. Davis, */
/* Patrick R. Amestoy, and Iain S. Duff. See ../README for License. */
/* email: davis@cise.ufl.edu CISE Department, Univ. of Florida. */
/* web: http://www.cise.ufl.edu/research/sparse/amd */
/* ------------------------------------------------------------------------- */
/* AMD finds a symmetric ordering P of a matrix A so that the Cholesky
* factorization of P*A*P' has fewer nonzeros and takes less work than the
* Cholesky factorization of A. If A is not symmetric, then it performs its
* ordering on the matrix A+A'. Two sets of user-callable routines are
* provided, one for "int" integers and the other for "long" integers.
*
* The method is based on the approximate minimum degree algorithm, discussed
* in Amestoy, Davis, and Duff, "An approximate degree ordering algorithm",
* SIAM Journal of Matrix Analysis and Applications, vol. 17, no. 4, pp.
* 886-905, 1996. This package can perform both the AMD ordering (with
* aggressive absorption), and the AMDBAR ordering (without aggressive
* absorption) discussed in the above paper. This package differs from the
* Fortran codes discussed in the paper:
*
* (1) it can ignore "dense" rows and columns, leading to faster run times
* (2) it computes the ordering of A+A' if A is not symmetric
* (3) it is followed by a depth-first post-ordering of the assembly tree
* (or supernodal elimination tree)
*
* For historical reasons, the Fortran versions, amd.f and amdbar.f, have
* been left (nearly) unchanged. They compute the identical ordering as
* described in the above paper.
*/
#ifndef AMD_H
#define AMD_H
int amd_order ( /* returns 0 if OK, negative value if error */
int n, /* A is n-by-n. n must be >= 0. */
const int Ap [ ], /* column pointers for A, of size n+1 */
const int Ai [ ], /* row indices of A, of size nz = Ap [n] */
int P [ ], /* output permutation, of size n */
double Control [ ], /* input Control settings, of size AMD_CONTROL */
double Info [ ] /* output Info statistics, of size AMD_INFO */
) ;
long amd_l_order ( /* see above for description of arguments */
long n,
const long Ap [ ],
const long Ai [ ],
long P [ ],
double Control [ ],
double Info [ ]
) ;
/* Input arguments (not modified):
*
* n: the matrix A is n-by-n.
* Ap: an int/long array of size n+1, containing the column pointers of A.
* Ai: an int/long array of size nz, containing the row indices of A,
* where nz = Ap [n].
* Control: a double array of size AMD_CONTROL, containing control
* parameters. Defaults are used if Control is NULL.
*
* Output arguments (not defined on input):
*
* P: an int/long array of size n, containing the output permutation. If
* row i is the kth pivot row, then P [k] = i. In MATLAB notation,
* the reordered matrix is A (P,P).
* Info: a double array of size AMD_INFO, containing statistical
* information. Ignored if Info is NULL.
*
* On input, the matrix A is stored in column-oriented form. The row indices
* of nonzero entries in column j are stored in Ai [Ap [j] ... Ap [j+1]-1].
* The row indices must appear in ascending order in each column, and there
* must not be any duplicate entries. Row indices must be in the range 0 to
* n-1. Ap [0] must be zero, and thus nz = Ap [n] is the number of nonzeros
* in A. The array Ap is of size n+1, and the array Ai is of size nz = Ap [n].
* The matrix does not need to be symmetric, and the diagonal does not need to
* be present (if diagonal entries are present, they are ignored except for
* the output statistic Info [AMD_NZDIAG]). The arrays Ai and Ap are not
* modified. This form of the Ap and Ai arrays to represent the nonzero
* pattern of the matrix A is the same as that used internally by MATLAB.
* If you wish to use a more flexible input structure, please see the
* umfpack_*_triplet_to_col routines in the UMFPACK package, at
* http://www.cise.ufl.edu/research/sparse/umfpack, or use the amd_preprocess
* routine discussed below.
*
* Restrictions: n >= 0. Ap [0] = 0. Ap [j] <= Ap [j+1] for all j in the
* range 0 to n-1. nz = Ap [n] >= 0. For all j in the range 0 to n-1,
* and for all p in the range Ap [j] to Ap [j+1]-2, Ai [p] < Ai [p+1] must
* hold. Ai [0..nz-1] must be in the range 0 to n-1. To avoid integer
* overflow, (2.4*nz + 8*n) < INT_MAX / sizeof (int) for must hold for the
* "int" version. (2.4*nz + 8*n) < LONG_MAX / sizeof (long) must hold
* for the "long" version. Finally, Ai, Ap, and P must not be NULL. If
* any of these restrictions are not met, AMD returns AMD_INVALID.
*
* AMD returns:
*
* AMD_OK if the matrix is valid and sufficient memory can be allocated to
* perform the ordering.
*
* AMD_OUT_OF_MEMORY if not enough memory can be allocated.
*
* AMD_INVALID if the input arguments n, Ap, Ai are invalid, or if P is
* NULL.
*
* The AMD routine first forms the pattern of the matrix A+A', and then
* computes a fill-reducing ordering, P. If P [k] = i, then row/column i of
* the original is the kth pivotal row. In MATLAB notation, the permuted
* matrix is A (P,P), except that 0-based indexing is used instead of the
* 1-based indexing in MATLAB.
*
* The Control array is used to set various parameters for AMD. If a NULL
* pointer is passed, default values are used. The Control array is not
* modified.
*
* Control [AMD_DENSE]: controls the threshold for "dense" rows/columns.
* A dense row/column in A+A' can cause AMD to spend a lot of time in
* ordering the matrix. If Control [AMD_DENSE] >= 0, rows/columns
* with more than Control [AMD_DENSE] * sqrt (n) entries are ignored
* during the ordering, and placed last in the output order. The
* default value of Control [AMD_DENSE] is 10. If negative, no
* rows/columns are treated as "dense". Rows/columns with 16 or
* fewer off-diagonal entries are never considered "dense".
*
* Control [AMD_AGGRESSIVE]: controls whether or not to use aggressive
* absorption, in which a prior element is absorbed into the current
* element if is a subset of the current element, even if it is not
* adjacent to the current pivot element (refer to Amestoy, Davis,
* & Duff, 1996, for more details). The default value is nonzero,
* which means to perform aggressive absorption. This nearly always
* leads to a better ordering (because the approximate degrees are
* more accurate) and a lower execution time. There are cases where
* it can lead to a slightly worse ordering, however. To turn it off,
* set Control [AMD_AGGRESSIVE] to 0.
*
* Control [2..4] are not used in the current version, but may be used in
* future versions.
*
* The Info array provides statistics about the ordering on output. If it is
* not present, the statistics are not returned. This is not an error
* condition.
*
* Info [AMD_STATUS]: the return value of AMD, either AMD_OK,
* AMD_OUT_OF_MEMORY, or AMD_INVALID.
*
* Info [AMD_N]: n, the size of the input matrix
*
* Info [AMD_NZ]: the number of nonzeros in A, nz = Ap [n]
*
* Info [AMD_SYMMETRY]: the symmetry of the matrix A. It is the number
* of "matched" off-diagonal entries divided by the total number of
* off-diagonal entries. An entry A(i,j) is matched if A(j,i) is also
* an entry, for any pair (i,j) for which i != j. In MATLAB notation,
* S = spones (A) ;
* B = tril (S, -1) + triu (S, 1) ;
* symmetry = nnz (B & B') / nnz (B) ;
*
* Info [AMD_NZDIAG]: the number of entries on the diagonal of A.
*
* Info [AMD_NZ_A_PLUS_AT]: the number of nonzeros in A+A', excluding the
* diagonal. If A is perfectly symmetric (Info [AMD_SYMMETRY] = 1)
* with a fully nonzero diagonal, then Info [AMD_NZ_A_PLUS_AT] = nz-n
* (the smallest possible value). If A is perfectly unsymmetric
* (Info [AMD_SYMMETRY] = 0, for an upper triangular matrix, for
* example) with no diagonal, then Info [AMD_NZ_A_PLUS_AT] = 2*nz
* (the largest possible value).
*
* Info [AMD_NDENSE]: the number of "dense" rows/columns of A+A' that were
* removed from A prior to ordering. These are placed last in the
* output order P.
*
* Info [AMD_MEMORY]: the amount of memory used by AMD, in bytes. In the
* current version, this is 1.2 * Info [AMD_NZ_A_PLUS_AT] + 9*n
* times the size of an integer. This is at most 2.4nz + 9n. This
* excludes the size of the input arguments Ai, Ap, and P, which have
* a total size of nz + 2*n + 1 integers.
*
* Info [AMD_NCMPA]: the number of garbage collections performed.
*
* Info [AMD_LNZ]: the number of nonzeros in L (excluding the diagonal).
* This is a slight upper bound because mass elimination is combined
* with the approximate degree update. It is a rough upper bound if
* there are many "dense" rows/columns. The rest of the statistics,
* below, are also slight or rough upper bounds, for the same reasons.
* The post-ordering of the assembly tree might also not exactly
* correspond to a true elimination tree postordering.
*
* Info [AMD_NDIV]: the number of divide operations for a subsequent LDL'
* or LU factorization of the permuted matrix A (P,P).
*
* Info [AMD_NMULTSUBS_LDL]: the number of multiply-subtract pairs for a
* subsequent LDL' factorization of A (P,P).
*
* Info [AMD_NMULTSUBS_LU]: the number of multiply-subtract pairs for a
* subsequent LU factorization of A (P,P), assuming that no numerical
* pivoting is required.
*
* Info [AMD_DMAX]: the maximum number of nonzeros in any column of L,
* including the diagonal.
*
* Info [14..19] are not used in the current version, but may be used in
* future versions.
*/
/* ------------------------------------------------------------------------- */
/* AMD preprocess */
/* ------------------------------------------------------------------------- */
/* amd_preprocess: sorts, removes duplicate entries, and transposes the
* nonzero pattern of a column-form matrix A, to obtain the matrix R.
*
* Alternatively, you can consider this routine as constructing a row-form
* matrix from a column-form matrix. Duplicate entries are allowed in A (and
* removed in R). The columns of R are sorted. Checks its input A for errors.
*
* On input, A can have unsorted columns, and can have duplicate entries.
* Ap [0] must still be zero, and Ap must be monotonically nondecreasing.
* Row indices must be in the range 0 to n-1.
*
* On output, if this routine returns AMD_OK, then the matrix R is a valid
* input matrix for AMD_order. It has sorted columns, with no duplicate
* entries in each column. Since AMD_order operates on the matrix A+A', it
* can just as easily use A or A', so the transpose has no significant effect
* (except for minor tie-breaking, which can lead to a minor effect in the
* quality of the ordering). As an example, compare the output of amd_demo.c
* and amd_demo2.c.
*
* This routine transposes A to get R because that's the simplest way to
* sort and remove duplicate entries from a matrix.
*
* Allocates 2*n integer work arrays, and free's them when done.
*
* If you wish to call amd_order, but do not know if your matrix has unsorted
* columns or duplicate entries, then you can use the following code, which is
* fairly efficient. amd_order will not allocate any internal matrix until
* it checks that the input matrix is valid, so the method below is memory-
* efficient as well. This code snippet assumes that Rp and Ri are already
* allocated, and are the same size as Ap and Ai respectively.
result = amd_order (n, p, Ap, Ai, Control, Info) ;
if (result == AMD_INVALID)
{
if (amd_preprocess (n, Ap, Ai, Rp, Ri) == AMD_OK)
{
result = amd_order (n, p, Rp, Ri, Control, Info) ;
}
}
* amd_preprocess will still return AMD_INVALID if any row index in Ai is out
* of range or if the Ap array is invalid. These errors are not corrected by
* amd_preprocess since they represent a more serious error that should be
* flagged with the AMD_INVALID error code.
*/
int amd_preprocess
(
int n,
const int Ap [ ],
const int Ai [ ],
int Rp [ ],
int Ri [ ]
) ;
long amd_l_preprocess
(
long n,
const long Ap [ ],
const long Ai [ ],
long Rp [ ],
long Ri [ ]
) ;
/* Input arguments (not modified):
*
* n: the matrix A is n-by-n.
* Ap: an int/long array of size n+1, containing the column pointers of A.
* Ai: an int/long array of size nz, containing the row indices of A,
* where nz = Ap [n].
* The nonzero pattern of column j of A is in Ai [Ap [j] ... Ap [j+1]-1].
* Ap [0] must be zero, and Ap [j] <= Ap [j+1] must hold for all j in the
* range 0 to n-1. Row indices in Ai must be in the range 0 to n-1.
* The row indices in any one column need not be sorted, and duplicates
* may exist.
*
* Output arguments (not defined on input):
*
* Rp: an int/long array of size n+1, containing the column pointers of R.
* Ri: an int/long array of size rnz, containing the row indices of R,
* where rnz = Rp [n]. Note that Rp [n] will be less than Ap [n] if
* duplicates appear in A. In general, Rp [n] <= Ap [n].
* The data structure for R is the same as A, except that each column of
* R contains sorted row indices, and no duplicates appear in any column.
*
* amd_preprocess returns:
*
* AMD_OK if the matrix A is valid and sufficient memory can be allocated
* to perform the preprocessing.
*
* AMD_OUT_OF_MEMORY if not enough memory can be allocated.
*
* AMD_INVALID if the input arguments n, Ap, Ai are invalid, or if Rp or
* Ri are NULL.
*/
/* ------------------------------------------------------------------------- */
/* AMD Control and Info arrays */
/* ------------------------------------------------------------------------- */
/* amd_defaults: sets the default control settings */
void amd_defaults (double Control [ ]) ;
void amd_l_defaults (double Control [ ]) ;
/* amd_control: prints the control settings */
void amd_control (double Control [ ]) ;
void amd_l_control (double Control [ ]) ;
/* amd_info: prints the statistics */
void amd_info (double Info [ ]) ;
void amd_l_info (double Info [ ]) ;
#define AMD_CONTROL 5 /* size of Control array */
#define AMD_INFO 20 /* size of Info array */
/* contents of Control */
#define AMD_DENSE 0 /* "dense" if degree > Control [0] * sqrt (n) */
#define AMD_AGGRESSIVE 1 /* do aggressive absorption if Control [1] != 0 */
/* default Control settings */
#define AMD_DEFAULT_DENSE 10.0 /* default "dense" degree 10*sqrt(n) */
#define AMD_DEFAULT_AGGRESSIVE 1 /* do aggressive absorption by default */
/* contents of Info */
#define AMD_STATUS 0 /* return value of amd_order and amd_l_order */
#define AMD_N 1 /* A is n-by-n */
#define AMD_NZ 2 /* number of nonzeros in A */
#define AMD_SYMMETRY 3 /* symmetry of pattern (1 is sym., 0 is unsym.) */
#define AMD_NZDIAG 4 /* # of entries on diagonal */
#define AMD_NZ_A_PLUS_AT 5 /* nz in A+A' */
#define AMD_NDENSE 6 /* number of "dense" rows/columns in A */
#define AMD_MEMORY 7 /* amount of memory used by AMD */
#define AMD_NCMPA 8 /* number of garbage collections in AMD */
#define AMD_LNZ 9 /* approx. nz in L, excluding the diagonal */
#define AMD_NDIV 10 /* number of fl. point divides for LU and LDL' */
#define AMD_NMULTSUBS_LDL 11 /* number of fl. point (*,-) pairs for LDL' */
#define AMD_NMULTSUBS_LU 12 /* number of fl. point (*,-) pairs for LU */
#define AMD_DMAX 13 /* max nz. in any column of L, incl. diagonal */
/* ------------------------------------------------------------------------- */
/* return values of AMD */
/* ------------------------------------------------------------------------- */
#define AMD_OK 0 /* success */
#define AMD_OUT_OF_MEMORY -1 /* malloc failed */
#define AMD_INVALID -2 /* input arguments are not valid */
#endif
|