| 1 | |
|---|
| 2 | /* version 3.6. (c) Copyright 1993-2002 by the University of Washington. |
|---|
| 3 | Written by Joseph Felsenstein, Akiko Fuseki, Sean Lamont, and Andrew Keeffe. |
|---|
| 4 | Permission is granted to copy and use this program provided no fee is |
|---|
| 5 | charged for it and provided that this copyright notice is not removed. */ |
|---|
| 6 | |
|---|
| 7 | #include "phylip.h" |
|---|
| 8 | #include "cont.h" |
|---|
| 9 | |
|---|
| 10 | |
|---|
| 11 | |
|---|
| 12 | #ifndef OLDC |
|---|
| 13 | /* function prototypes */ |
|---|
| 14 | void getoptions(void); |
|---|
| 15 | void getdata(void); |
|---|
| 16 | void allocrest(void); |
|---|
| 17 | void doinit(void); |
|---|
| 18 | void contwithin(void); |
|---|
| 19 | void contbetween(node *, node *); |
|---|
| 20 | void nuview(node *); |
|---|
| 21 | void makecontrasts(node *); |
|---|
| 22 | void writecontrasts(void); |
|---|
| 23 | |
|---|
| 24 | void regressions(void); |
|---|
| 25 | double logdet(double **); |
|---|
| 26 | void invert(double **); |
|---|
| 27 | void initcovars(boolean); |
|---|
| 28 | double normdiff(boolean); |
|---|
| 29 | void matcopy(double **, double **); |
|---|
| 30 | void newcovars(boolean); |
|---|
| 31 | void printcovariances(boolean); |
|---|
| 32 | void emiterate(boolean); |
|---|
| 33 | void initcontrastnode(node **, node **, node *, long, long, long *, |
|---|
| 34 | long *, initops, pointarray, pointarray, Char *, Char *, FILE *); |
|---|
| 35 | |
|---|
| 36 | void maketree(void); |
|---|
| 37 | /* function prototypes */ |
|---|
| 38 | #endif |
|---|
| 39 | |
|---|
| 40 | |
|---|
| 41 | Char infilename[FNMLNGTH], outfilename[FNMLNGTH], intreename[FNMLNGTH]; |
|---|
| 42 | long nonodes, chars, numtrees; |
|---|
| 43 | long *sample, contnum; |
|---|
| 44 | phenotype3 **x, **cntrast, *ssqcont; |
|---|
| 45 | double **vara, **vare, **oldvara, **oldvare, |
|---|
| 46 | **Bax, **Bex, **temp1, **temp2, **temp3; |
|---|
| 47 | double logL, logLvara, logLnovara; |
|---|
| 48 | boolean nophylo, printdata, progress, reg, mulsets, |
|---|
| 49 | varywithin, writecont, bifurcating; |
|---|
| 50 | Char ch; |
|---|
| 51 | long contno; |
|---|
| 52 | node *grbg; |
|---|
| 53 | |
|---|
| 54 | /* Local variables for maketree, propagated globally for c version: */ |
|---|
| 55 | tree curtree; |
|---|
| 56 | |
|---|
| 57 | /* Variables declared just to make treeread happy */ |
|---|
| 58 | boolean haslengths, goteof, first; |
|---|
| 59 | double trweight; |
|---|
| 60 | |
|---|
| 61 | |
|---|
| 62 | void getoptions() |
|---|
| 63 | { |
|---|
| 64 | /* interactively set options */ |
|---|
| 65 | long loopcount, loopcount2; |
|---|
| 66 | Char ch; |
|---|
| 67 | boolean done, done1; |
|---|
| 68 | |
|---|
| 69 | mulsets = false; |
|---|
| 70 | nophylo = true; |
|---|
| 71 | printdata = false; |
|---|
| 72 | progress = true; |
|---|
| 73 | varywithin = false; |
|---|
| 74 | writecont = false; |
|---|
| 75 | loopcount = 0; |
|---|
| 76 | do { |
|---|
| 77 | cleerhome(); |
|---|
| 78 | printf("\nContinuous character comparative analysis, version %s\n\n", |
|---|
| 79 | VERSION); |
|---|
| 80 | printf("Settings for this run:\n"); |
|---|
| 81 | printf(" W within-population variation in data?"); |
|---|
| 82 | if (varywithin) |
|---|
| 83 | printf(" Yes, multiple individuals\n"); |
|---|
| 84 | else { |
|---|
| 85 | printf(" No, species values are means\n"); |
|---|
| 86 | printf(" R Print out correlations and regressions? %s\n", |
|---|
| 87 | (reg ? "Yes" : "No")); |
|---|
| 88 | } |
|---|
| 89 | printf(" A LRT test of no phylogenetic component?"); |
|---|
| 90 | if (nophylo) |
|---|
| 91 | printf(" Yes, with and without VarA\n"); |
|---|
| 92 | else |
|---|
| 93 | printf(" No, just assume it is there\n"); |
|---|
| 94 | if (!varywithin) |
|---|
| 95 | printf(" C Print out contrasts? %s\n", |
|---|
| 96 | (writecont? "Yes" : "No")); |
|---|
| 97 | printf(" M Analyze multiple trees?"); |
|---|
| 98 | if (mulsets) |
|---|
| 99 | printf(" Yes, %2ld trees\n", numtrees); |
|---|
| 100 | else |
|---|
| 101 | printf(" No\n"); |
|---|
| 102 | printf(" 0 Terminal type (IBM PC, ANSI, none)? %s\n", |
|---|
| 103 | ibmpc ? "IBM PC" : |
|---|
| 104 | ansi ? "ANSI" : "(none)"); |
|---|
| 105 | printf(" 1 Print out the data at start of run %s\n", |
|---|
| 106 | (printdata ? "Yes" : "No")); |
|---|
| 107 | printf(" 2 Print indications of progress of run %s\n", |
|---|
| 108 | (progress ? "Yes" : "No")); |
|---|
| 109 | printf("\n Y to accept these or type the letter for one to change\n"); |
|---|
| 110 | #ifdef WIN32 |
|---|
| 111 | phyFillScreenColor(); |
|---|
| 112 | #endif |
|---|
| 113 | scanf("%c%*[^\n]", &ch); |
|---|
| 114 | getchar(); |
|---|
| 115 | if (ch == '\n') |
|---|
| 116 | ch = ' '; |
|---|
| 117 | uppercase(&ch); |
|---|
| 118 | done = (ch == 'Y'); |
|---|
| 119 | if (!done) { |
|---|
| 120 | if (strchr("RAMWC120", ch) != NULL) { |
|---|
| 121 | switch (ch) { |
|---|
| 122 | |
|---|
| 123 | case 'R': |
|---|
| 124 | reg = !reg; |
|---|
| 125 | break; |
|---|
| 126 | |
|---|
| 127 | case 'A': |
|---|
| 128 | nophylo = !nophylo; |
|---|
| 129 | break; |
|---|
| 130 | |
|---|
| 131 | case 'M': |
|---|
| 132 | mulsets = !mulsets; |
|---|
| 133 | if (mulsets) { |
|---|
| 134 | loopcount2 = 0; |
|---|
| 135 | do { |
|---|
| 136 | printf("How many trees?\n"); |
|---|
| 137 | #ifdef WIN32 |
|---|
| 138 | phyFillScreenColor(); |
|---|
| 139 | #endif |
|---|
| 140 | scanf("%ld%*[^\n]", &numtrees); |
|---|
| 141 | getchar(); |
|---|
| 142 | done1 = (numtrees >= 1); |
|---|
| 143 | if (!done1) |
|---|
| 144 | printf("BAD TREES NUMBER: it must be greater than 1\n"); |
|---|
| 145 | countup(&loopcount2, 10); |
|---|
| 146 | } while (done1 != true); |
|---|
| 147 | } |
|---|
| 148 | break; |
|---|
| 149 | |
|---|
| 150 | case 'C': |
|---|
| 151 | writecont = !writecont; |
|---|
| 152 | break; |
|---|
| 153 | |
|---|
| 154 | case 'W': |
|---|
| 155 | varywithin = !varywithin; |
|---|
| 156 | break; |
|---|
| 157 | |
|---|
| 158 | case '0': |
|---|
| 159 | initterminal(&ibmpc, &ansi); |
|---|
| 160 | break; |
|---|
| 161 | |
|---|
| 162 | case '1': |
|---|
| 163 | printdata = !printdata; |
|---|
| 164 | break; |
|---|
| 165 | |
|---|
| 166 | case '2': |
|---|
| 167 | progress = !progress; |
|---|
| 168 | break; |
|---|
| 169 | } |
|---|
| 170 | } else |
|---|
| 171 | printf("Not a possible option!\n"); |
|---|
| 172 | } |
|---|
| 173 | countup(&loopcount, 100); |
|---|
| 174 | } while (!done); |
|---|
| 175 | } /* getoptions */ |
|---|
| 176 | |
|---|
| 177 | |
|---|
| 178 | void getdata() |
|---|
| 179 | { |
|---|
| 180 | /* read species data */ |
|---|
| 181 | long i, j, k, l; |
|---|
| 182 | |
|---|
| 183 | if (printdata) { |
|---|
| 184 | fprintf(outfile, |
|---|
| 185 | "\nContinuous character contrasts analysis, version %s\n\n",VERSION); |
|---|
| 186 | fprintf(outfile, "%4ld Populations, %4ld Characters\n\n", spp, chars); |
|---|
| 187 | fprintf(outfile, "Name"); |
|---|
| 188 | fprintf(outfile, " Phenotypes\n"); |
|---|
| 189 | fprintf(outfile, "----"); |
|---|
| 190 | fprintf(outfile, " ----------\n\n"); |
|---|
| 191 | } |
|---|
| 192 | x = (phenotype3 **)Malloc((long)spp*sizeof(phenotype3 *)); |
|---|
| 193 | cntrast = (phenotype3 **)Malloc((long)spp*sizeof(phenotype3 *)); |
|---|
| 194 | ssqcont = (phenotype3 *)Malloc((long)spp*sizeof(phenotype3 *)); |
|---|
| 195 | contnum = spp-1; |
|---|
| 196 | for (i = 0; i < spp; i++) { |
|---|
| 197 | scan_eoln(infile); |
|---|
| 198 | initname(i); |
|---|
| 199 | if (varywithin) { |
|---|
| 200 | fscanf(infile, "%ld", &sample[i]); |
|---|
| 201 | contnum += sample[i]-1; |
|---|
| 202 | scan_eoln(infile); |
|---|
| 203 | } |
|---|
| 204 | else sample[i] = 1; |
|---|
| 205 | if (printdata) |
|---|
| 206 | for(j = 0; j < nmlngth; j++) |
|---|
| 207 | putc(nayme[i][j], outfile); |
|---|
| 208 | x[i] = (phenotype3 *)Malloc((long)sample[i]*sizeof(phenotype3)); |
|---|
| 209 | cntrast[i] = (phenotype3 *)Malloc((long)(sample[i]*sizeof(phenotype3))); |
|---|
| 210 | ssqcont[i] = (double *)Malloc((long)(sample[i]*sizeof(double))); |
|---|
| 211 | for (k = 0; k <= sample[i]-1; k++) { |
|---|
| 212 | x[i][k] = (phenotype3)Malloc((long)chars*sizeof(double)); |
|---|
| 213 | cntrast[i][k] = (phenotype3)Malloc((long)chars*sizeof(double)); |
|---|
| 214 | for (j = 1; j <= chars; j++) { |
|---|
| 215 | if (eoln(infile)) |
|---|
| 216 | scan_eoln(infile); |
|---|
| 217 | fscanf(infile, "%lf", &x[i][k][j - 1]); |
|---|
| 218 | if (printdata) { |
|---|
| 219 | fprintf(outfile, "%10.5f", x[i][k][j - 1]); |
|---|
| 220 | if (j % 6 == 0) { |
|---|
| 221 | putc('\n', outfile); |
|---|
| 222 | for (l = 1; l <= nmlngth; l++) |
|---|
| 223 | putc(' ', outfile); |
|---|
| 224 | } |
|---|
| 225 | } |
|---|
| 226 | } |
|---|
| 227 | } |
|---|
| 228 | if (printdata) |
|---|
| 229 | putc('\n', outfile); |
|---|
| 230 | } |
|---|
| 231 | scan_eoln(infile); |
|---|
| 232 | if (printdata) |
|---|
| 233 | putc('\n', outfile); |
|---|
| 234 | } /* getdata */ |
|---|
| 235 | |
|---|
| 236 | |
|---|
| 237 | void allocrest() |
|---|
| 238 | { |
|---|
| 239 | long i; |
|---|
| 240 | |
|---|
| 241 | /* otherwise if individual variation, these are allocated in getdata */ |
|---|
| 242 | sample = (long *)Malloc((long)spp*sizeof(long)); |
|---|
| 243 | nayme = (naym *)Malloc((long)spp*sizeof(naym)); |
|---|
| 244 | vara = (double **)Malloc((long)chars*sizeof(double *)); |
|---|
| 245 | oldvara = (double **)Malloc((long)chars*sizeof(double *)); |
|---|
| 246 | vare = (double **)Malloc((long)chars*sizeof(double *)); |
|---|
| 247 | oldvare = (double **)Malloc((long)chars*sizeof(double *)); |
|---|
| 248 | Bax = (double **)Malloc((long)chars*sizeof(double *)); |
|---|
| 249 | Bex = (double **)Malloc((long)chars*sizeof(double *)); |
|---|
| 250 | temp1 = (double **)Malloc((long)chars*sizeof(double *)); |
|---|
| 251 | temp2 = (double **)Malloc((long)chars*sizeof(double *)); |
|---|
| 252 | temp3 = (double **)Malloc((long)chars*sizeof(double *)); |
|---|
| 253 | for (i = 0; i < chars; i++) { |
|---|
| 254 | vara[i] = (double *)Malloc((long)chars*sizeof(double)); |
|---|
| 255 | oldvara[i] = (double *)Malloc((long)chars*sizeof(double)); |
|---|
| 256 | vare[i] = (double *)Malloc((long)chars*sizeof(double)); |
|---|
| 257 | oldvare[i] = (double *)Malloc((long)chars*sizeof(double)); |
|---|
| 258 | Bax[i] = (double *)Malloc((long)chars*sizeof(double)); |
|---|
| 259 | Bex[i] = (double *)Malloc((long)chars*sizeof(double)); |
|---|
| 260 | temp1[i] = (double *)Malloc((long)chars*sizeof(double)); |
|---|
| 261 | temp2[i] = (double *)Malloc((long)chars*sizeof(double)); |
|---|
| 262 | temp3[i] = (double *)Malloc((long)chars*sizeof(double)); |
|---|
| 263 | } |
|---|
| 264 | } /* allocrest */ |
|---|
| 265 | |
|---|
| 266 | |
|---|
| 267 | void doinit() |
|---|
| 268 | { |
|---|
| 269 | /* initializes variables */ |
|---|
| 270 | |
|---|
| 271 | inputnumbers(&spp, &chars, &nonodes, 1); |
|---|
| 272 | getoptions(); |
|---|
| 273 | allocrest(); |
|---|
| 274 | } /* doinit */ |
|---|
| 275 | |
|---|
| 276 | |
|---|
| 277 | void contwithin() |
|---|
| 278 | { |
|---|
| 279 | /* compute the within-species contrasts, if any */ |
|---|
| 280 | long i, j, k; |
|---|
| 281 | double *sumphen; |
|---|
| 282 | |
|---|
| 283 | sumphen = (double *)Malloc((long)chars*sizeof(double)); |
|---|
| 284 | for (i = 0; i <= spp-1 ; i++) { |
|---|
| 285 | for (j = 0; j < chars; j++) |
|---|
| 286 | sumphen[j] = 0.0; |
|---|
| 287 | for (k = 0; k <= (sample[i]-1); k++) { |
|---|
| 288 | for (j = 0; j < chars; j++) { |
|---|
| 289 | if (k > 0) |
|---|
| 290 | cntrast[i][k][j] |
|---|
| 291 | = (sumphen[j] - k*x[i][k][j])/sqrt((double)(k*(k+1))); |
|---|
| 292 | sumphen[j] += x[i][k][j]; |
|---|
| 293 | if (k == (sample[i]-1)) |
|---|
| 294 | curtree.nodep[i]->view[j] = sumphen[j]/sample[i]; |
|---|
| 295 | x[i][0][j] = sumphen[j]/sample[i]; |
|---|
| 296 | } |
|---|
| 297 | if (k == 0) |
|---|
| 298 | curtree.nodep[i]->ssq = 1.0/sample[i]; /* sum of squares for sp. i */ |
|---|
| 299 | else |
|---|
| 300 | ssqcont[i][k] = 1.0; /* if a within contrast */ |
|---|
| 301 | } |
|---|
| 302 | } |
|---|
| 303 | contno = 1; |
|---|
| 304 | } /* contwithin */ |
|---|
| 305 | |
|---|
| 306 | |
|---|
| 307 | void contbetween(node *p, node *q) |
|---|
| 308 | { |
|---|
| 309 | /* compute one contrast */ |
|---|
| 310 | long i; |
|---|
| 311 | double v1, v2; |
|---|
| 312 | |
|---|
| 313 | for (i = 0; i < chars; i++) |
|---|
| 314 | cntrast[contno - 1][0][i] = (p->view[i] - q->view[i])/sqrt(p->ssq+q->ssq); |
|---|
| 315 | v1 = q->v + q->deltav; |
|---|
| 316 | if (p->back != q) |
|---|
| 317 | v2 = p->v + p->deltav; |
|---|
| 318 | else v2 = p->deltav; |
|---|
| 319 | ssqcont[contno - 1][0] = (v1 + v2)/(p->ssq + q->ssq); |
|---|
| 320 | /* this is really the variance of the contrast */ |
|---|
| 321 | contno++; |
|---|
| 322 | } /* contbetween */ |
|---|
| 323 | |
|---|
| 324 | |
|---|
| 325 | void nuview(node *p) |
|---|
| 326 | { |
|---|
| 327 | /* renew information about subtrees */ |
|---|
| 328 | long j; |
|---|
| 329 | node *q, *r; |
|---|
| 330 | double v1, v2, vtot, f1, f2; |
|---|
| 331 | |
|---|
| 332 | q = p->next->back; |
|---|
| 333 | r = p->next->next->back; |
|---|
| 334 | v1 = q->v + q->deltav; |
|---|
| 335 | v2 = r->v + r->deltav; |
|---|
| 336 | vtot = v1 + v2; |
|---|
| 337 | if (vtot > 0.0) |
|---|
| 338 | f1 = v2 / vtot; |
|---|
| 339 | else |
|---|
| 340 | f1 = 0.5; |
|---|
| 341 | f2 = 1.0 - f1; |
|---|
| 342 | for (j = 0; j < chars; j++) |
|---|
| 343 | p->view[j] = f1 * q->view[j] + f2 * r->view[j]; |
|---|
| 344 | p->deltav = v1 * f1; |
|---|
| 345 | p->ssq = f1*f1*q->ssq + f2*f2*r->ssq; |
|---|
| 346 | } /* nuview */ |
|---|
| 347 | |
|---|
| 348 | |
|---|
| 349 | void makecontrasts(node *p) |
|---|
| 350 | { |
|---|
| 351 | /* compute the contrasts, recursively */ |
|---|
| 352 | if (p->tip) |
|---|
| 353 | return; |
|---|
| 354 | makecontrasts(p->next->back); |
|---|
| 355 | makecontrasts(p->next->next->back); |
|---|
| 356 | nuview(p); |
|---|
| 357 | contbetween(p->next->back, p->next->next->back); |
|---|
| 358 | } /* makecontrasts */ |
|---|
| 359 | |
|---|
| 360 | |
|---|
| 361 | void writecontrasts() |
|---|
| 362 | { |
|---|
| 363 | /* write out the contrasts */ |
|---|
| 364 | long i, j; |
|---|
| 365 | |
|---|
| 366 | if (printdata || reg) { |
|---|
| 367 | fprintf(outfile, "\nContrasts (columns are different characters)\n"); |
|---|
| 368 | fprintf(outfile, "--------- -------- --- --------- -----------\n\n"); |
|---|
| 369 | } |
|---|
| 370 | for (i = 0; i <= contno - 2; i++) { |
|---|
| 371 | for (j = 0; j < chars; j++) |
|---|
| 372 | fprintf(outfile, "%10.5f", cntrast[i][0][j]); |
|---|
| 373 | putc('\n', outfile); |
|---|
| 374 | } |
|---|
| 375 | } /* writecontrasts */ |
|---|
| 376 | |
|---|
| 377 | |
|---|
| 378 | void regressions() |
|---|
| 379 | { |
|---|
| 380 | /* compute regressions and correlations among contrasts */ |
|---|
| 381 | long i, j, k; |
|---|
| 382 | double **sumprod; |
|---|
| 383 | |
|---|
| 384 | sumprod = (double **)Malloc((long)chars*sizeof(double *)); |
|---|
| 385 | for (i = 0; i < chars; i++) { |
|---|
| 386 | sumprod[i] = (double *)Malloc((long)chars*sizeof(double)); |
|---|
| 387 | for (j = 0; j < chars; j++) |
|---|
| 388 | sumprod[i][j] = 0.0; |
|---|
| 389 | } |
|---|
| 390 | for (i = 0; i <= contno - 2; i++) { |
|---|
| 391 | for (j = 0; j < chars; j++) { |
|---|
| 392 | for (k = 0; k < chars; k++) |
|---|
| 393 | sumprod[j][k] += cntrast[i][0][j] * cntrast[i][0][k]; |
|---|
| 394 | } |
|---|
| 395 | } |
|---|
| 396 | fprintf(outfile, "\nCovariance matrix\n"); |
|---|
| 397 | fprintf(outfile, "---------- ------\n\n"); |
|---|
| 398 | for (i = 0; i < chars; i++) { |
|---|
| 399 | for (j = 0; j < chars; j++) |
|---|
| 400 | sumprod[i][j] /= contno - 1; |
|---|
| 401 | } |
|---|
| 402 | for (i = 0; i < chars; i++) { |
|---|
| 403 | for (j = 0; j < chars; j++) |
|---|
| 404 | fprintf(outfile, "%10.4f", sumprod[i][j]); |
|---|
| 405 | putc('\n', outfile); |
|---|
| 406 | } |
|---|
| 407 | fprintf(outfile, "\nRegressions (columns on rows)\n"); |
|---|
| 408 | fprintf(outfile, "----------- -------- -- -----\n\n"); |
|---|
| 409 | for (i = 0; i < chars; i++) { |
|---|
| 410 | for (j = 0; j < chars; j++) |
|---|
| 411 | fprintf(outfile, "%10.4f", sumprod[i][j] / sumprod[i][i]); |
|---|
| 412 | putc('\n', outfile); |
|---|
| 413 | } |
|---|
| 414 | fprintf(outfile, "\nCorrelations\n"); |
|---|
| 415 | fprintf(outfile, "------------\n\n"); |
|---|
| 416 | for (i = 0; i < chars; i++) { |
|---|
| 417 | for (j = 0; j < chars; j++) |
|---|
| 418 | fprintf(outfile, "%10.4f", |
|---|
| 419 | sumprod[i][j] / sqrt(sumprod[i][i] * sumprod[j][j])); |
|---|
| 420 | putc('\n', outfile); |
|---|
| 421 | } |
|---|
| 422 | for (i = 0; i < chars; i++) |
|---|
| 423 | free(sumprod[i]); |
|---|
| 424 | free(sumprod); |
|---|
| 425 | } /* regressions */ |
|---|
| 426 | |
|---|
| 427 | |
|---|
| 428 | double logdet(double **a) |
|---|
| 429 | { |
|---|
| 430 | /* Gauss-Jordan log determinant calculation. |
|---|
| 431 | in place, overwriting previous contents of a. On exit, |
|---|
| 432 | matrix a contains the inverse. Works only for positive definite A */ |
|---|
| 433 | long i, j, k; |
|---|
| 434 | double temp, sum; |
|---|
| 435 | |
|---|
| 436 | sum = 0.0; |
|---|
| 437 | for (i = 0; i < chars; i++) { |
|---|
| 438 | if (a[i][i] == 0.0) { /* debug make fabs() < 1.0E-37 instead? */ |
|---|
| 439 | printf("ERROR: tried to invert singular matrix.\n"); |
|---|
| 440 | exxit(-1); |
|---|
| 441 | } |
|---|
| 442 | sum += log(a[i][i]); |
|---|
| 443 | temp = 1.0 / a[i][i]; |
|---|
| 444 | a[i][i] = 1.0; |
|---|
| 445 | for (j = 0; j < chars; j++) |
|---|
| 446 | a[i][j] *= temp; |
|---|
| 447 | for (j = 0; j < chars; j++) { |
|---|
| 448 | if (j != i) { |
|---|
| 449 | temp = a[j][i]; |
|---|
| 450 | a[j][i] = 0.0; |
|---|
| 451 | for (k = 0; k < chars; k++) |
|---|
| 452 | a[j][k] -= temp * a[i][k]; |
|---|
| 453 | } |
|---|
| 454 | } |
|---|
| 455 | } |
|---|
| 456 | return(sum); |
|---|
| 457 | } /* lodget */ |
|---|
| 458 | |
|---|
| 459 | |
|---|
| 460 | void invert(double **a) |
|---|
| 461 | { |
|---|
| 462 | /* Gauss-Jordan reduction -- invert chars x chars matrix a |
|---|
| 463 | in place, overwriting previous contents of a. On exit, |
|---|
| 464 | matrix a contains the inverse.*/ |
|---|
| 465 | long i, j, k; |
|---|
| 466 | double temp; |
|---|
| 467 | |
|---|
| 468 | for (i = 0; i < chars; i++) { |
|---|
| 469 | if (a[i][i] == 0.0) { /* debug make fabs() < 1.0E-37 instead? */ |
|---|
| 470 | printf("ERROR: tried to invert singular matrix.\n"); |
|---|
| 471 | exxit(-1); |
|---|
| 472 | } |
|---|
| 473 | temp = 1.0 / a[i][i]; |
|---|
| 474 | a[i][i] = 1.0; |
|---|
| 475 | for (j = 0; j < chars; j++) |
|---|
| 476 | a[i][j] *= temp; |
|---|
| 477 | for (j = 0; j < chars; j++) { |
|---|
| 478 | if (j != i) { |
|---|
| 479 | temp = a[j][i]; |
|---|
| 480 | a[j][i] = 0.0; |
|---|
| 481 | for (k = 0; k < chars; k++) |
|---|
| 482 | a[j][k] -= temp * a[i][k]; |
|---|
| 483 | } |
|---|
| 484 | } |
|---|
| 485 | } |
|---|
| 486 | } /*invert*/ |
|---|
| 487 | |
|---|
| 488 | |
|---|
| 489 | void initcovars(boolean novara) |
|---|
| 490 | { |
|---|
| 491 | /* Initialize covariance estimates */ |
|---|
| 492 | long i, j, k, l, contswithin; |
|---|
| 493 | |
|---|
| 494 | /* zero the matrices */ |
|---|
| 495 | for (i = 0; i < chars; i++) |
|---|
| 496 | for (j = 0; j < chars; j++) { |
|---|
| 497 | vara[i][j] = 0.0; |
|---|
| 498 | vare[i][j] = 0.0; |
|---|
| 499 | } |
|---|
| 500 | /* estimate VE from within contrasts -- unbiasedly */ |
|---|
| 501 | contswithin = 0; |
|---|
| 502 | for (i = 0; i < spp; i++) { |
|---|
| 503 | for (j = 1; j < sample[i]; j++) { |
|---|
| 504 | contswithin++; |
|---|
| 505 | for (k = 0; k < chars; k++) |
|---|
| 506 | for (l = 0; l < chars; l++) |
|---|
| 507 | vare[k][l] += cntrast[i][j][k]*cntrast[i][j][l]; |
|---|
| 508 | } |
|---|
| 509 | } |
|---|
| 510 | /* estimate VA from between contrasts -- biasedly: does not take out VE */ |
|---|
| 511 | if (!novara) { /* leave VarA = 0 if no A component assumed present */ |
|---|
| 512 | for (i = 0; i < spp-1; i++) { |
|---|
| 513 | for (j = 0; j < chars; j++) |
|---|
| 514 | for (k = 0; k < chars; k++) |
|---|
| 515 | if (ssqcont[i][0] <= 0.0) |
|---|
| 516 | vara[j][k] += cntrast[i][0][j]*cntrast[i][0][k]; |
|---|
| 517 | else |
|---|
| 518 | vara[j][k] += cntrast[i][0][j]*cntrast[i][0][k] |
|---|
| 519 | / ((long)(spp-1)*ssqcont[i][0]); |
|---|
| 520 | } |
|---|
| 521 | } |
|---|
| 522 | for (k = 0; k < chars; k++) |
|---|
| 523 | for (l = 0; l < chars; l++) |
|---|
| 524 | if (contswithin > 0) |
|---|
| 525 | vare[k][l] /= contswithin; |
|---|
| 526 | else { |
|---|
| 527 | if (!novara) { |
|---|
| 528 | vara[k][l] = 0.5 * vara[k][l]; |
|---|
| 529 | vare[k][l] = vara[k][l]; |
|---|
| 530 | } |
|---|
| 531 | } |
|---|
| 532 | } /* initcovars */ |
|---|
| 533 | |
|---|
| 534 | |
|---|
| 535 | double normdiff(boolean novara) |
|---|
| 536 | { |
|---|
| 537 | /* Get relative norm of difference between old, new covariances */ |
|---|
| 538 | double s; |
|---|
| 539 | long i, j; |
|---|
| 540 | |
|---|
| 541 | s = 0.0; |
|---|
| 542 | for (i = 0; i < chars; i++) |
|---|
| 543 | for (j = 0; j < chars; j++) { |
|---|
| 544 | if (!novara) { |
|---|
| 545 | if (fabs(oldvara[i][j]) <= 0.00000001) |
|---|
| 546 | s += vara[i][j]; |
|---|
| 547 | else |
|---|
| 548 | s += fabs(vara[i][j]/oldvara[i][j]-1.0); |
|---|
| 549 | } |
|---|
| 550 | if (fabs(oldvare[i][j]) <= 0.00000001) |
|---|
| 551 | s += vare[i][j]; |
|---|
| 552 | else |
|---|
| 553 | s += fabs(vare[i][j]/oldvare[i][j]-1.0); |
|---|
| 554 | } |
|---|
| 555 | return s/((double)(chars*chars)); |
|---|
| 556 | } /* normdiff */ |
|---|
| 557 | |
|---|
| 558 | |
|---|
| 559 | void matcopy(double **a, double **b) |
|---|
| 560 | { |
|---|
| 561 | /* Copy matrices chars x chars: a to b */ |
|---|
| 562 | long i; |
|---|
| 563 | |
|---|
| 564 | for (i = 0; i < chars; i++) { |
|---|
| 565 | memcpy(b[i], a[i], chars*sizeof(double)); |
|---|
| 566 | } |
|---|
| 567 | } /* matcopy */ |
|---|
| 568 | |
|---|
| 569 | |
|---|
| 570 | void newcovars(boolean novara) |
|---|
| 571 | { |
|---|
| 572 | /* one EM update of covariances, compute old likelihood too */ |
|---|
| 573 | long i, j, k, l, m; |
|---|
| 574 | double sum, sum2, sum3, sqssq; |
|---|
| 575 | |
|---|
| 576 | if (!novara) |
|---|
| 577 | matcopy(vara, oldvara); |
|---|
| 578 | matcopy(vare, oldvare); |
|---|
| 579 | sum2 = 0.0; /* log likelihood of old parameters accumulates here */ |
|---|
| 580 | for (i = 0; i < chars; i++) /* zero out vara and vare */ |
|---|
| 581 | for (j = 0; j < chars; j++) { |
|---|
| 582 | if (!novara) |
|---|
| 583 | vara[i][j] = 0.0; |
|---|
| 584 | vare[i][j] = 0.0; |
|---|
| 585 | } |
|---|
| 586 | for (i = 0; i < spp-1; i++) { /* accumulate over contrasts ... */ |
|---|
| 587 | if (i <= spp-2) { /* E(aa'|x) and E(ee'|x) for "between" contrasts */ |
|---|
| 588 | sqssq = sqrt(ssqcont[i][0]); |
|---|
| 589 | for (k = 0; k < chars; k++) /* compute (dA+E) for this contrast */ |
|---|
| 590 | for (l = 0; l < chars; l++) |
|---|
| 591 | if (!novara) |
|---|
| 592 | temp1[k][l] = ssqcont[i][0] * oldvara[k][l] + oldvare[k][l]; |
|---|
| 593 | else |
|---|
| 594 | temp1[k][l] = oldvare[k][l]; |
|---|
| 595 | matcopy(temp1, temp2); |
|---|
| 596 | invert(temp2); /* compute (dA+E)^(-1) */ |
|---|
| 597 | /* sum of - x (dA+E)^(-1) x'/2 for old A, E */ |
|---|
| 598 | for (k = 0; k < chars; k++) |
|---|
| 599 | for (l = 0; l < chars; l++) |
|---|
| 600 | sum2 -= cntrast[i][0][k]*temp2[k][l]*cntrast[i][0][l]/2.0; |
|---|
| 601 | matcopy(temp1, temp3); |
|---|
| 602 | sum2 -= 0.5 * logdet(temp3); /* log determinant term too */ |
|---|
| 603 | if (!novara) { |
|---|
| 604 | for (k = 0; k < chars; k++) |
|---|
| 605 | for (l = 0; l < chars; l++) { |
|---|
| 606 | sum = 0.0; |
|---|
| 607 | for (j = 0; j < chars; j++) |
|---|
| 608 | sum += temp2[k][j] * sqssq * oldvara[j][l]; |
|---|
| 609 | Bax[k][l] = sum; /* Bax = (dA+E)^(-1) * sqrt(d) * A */ |
|---|
| 610 | } |
|---|
| 611 | } |
|---|
| 612 | for (k = 0; k < chars; k++) |
|---|
| 613 | for (l = 0; l < chars; l++) { |
|---|
| 614 | sum = 0.0; |
|---|
| 615 | for (j = 0; j < chars; j++) |
|---|
| 616 | sum += temp2[k][j] * oldvare[j][l]; |
|---|
| 617 | Bex[k][l] = sum; /* Bex = (dA+E)^(-1) * E */ |
|---|
| 618 | } |
|---|
| 619 | if (!novara) { |
|---|
| 620 | for (k = 0; k < chars; k++) |
|---|
| 621 | for (l = 0; l < chars; l++) { |
|---|
| 622 | sum = 0.0; |
|---|
| 623 | for (m = 0; m < chars; m++) |
|---|
| 624 | sum += Bax[m][k] * (cntrast[i][0][m]*cntrast[i][0][l] |
|---|
| 625 | -temp1[m][l]); |
|---|
| 626 | temp2[k][l] = sum; /* Bax'*(xx'-(dA+E)) ... */ |
|---|
| 627 | } |
|---|
| 628 | for (k = 0; k < chars; k++) |
|---|
| 629 | for (l = 0; l < chars; l++) { |
|---|
| 630 | sum = 0.0; |
|---|
| 631 | for (m = 0; m < chars; m++) |
|---|
| 632 | sum += temp2[k][m] * Bax[m][l]; |
|---|
| 633 | vara[k][l] += sum; /* ... * Bax */ |
|---|
| 634 | } |
|---|
| 635 | } |
|---|
| 636 | for (k = 0; k < chars; k++) |
|---|
| 637 | for (l = 0; l < chars; l++) { |
|---|
| 638 | sum = 0.0; |
|---|
| 639 | for (m = 0; m < chars; m++) |
|---|
| 640 | sum += Bex[m][k] * (cntrast[i][0][m]*cntrast[i][0][l] |
|---|
| 641 | -temp1[m][l]); |
|---|
| 642 | temp2[k][l] = sum; /* Bex'*(xx'-(dA+E)) ... */ |
|---|
| 643 | } |
|---|
| 644 | for (k = 0; k < chars; k++) |
|---|
| 645 | for (l = 0; l < chars; l++) { |
|---|
| 646 | sum = 0.0; |
|---|
| 647 | for (m = 0; m < chars; m++) |
|---|
| 648 | sum += temp2[k][m] * Bex[m][l]; |
|---|
| 649 | vare[k][l] += sum; /* ... * Bex */ |
|---|
| 650 | } |
|---|
| 651 | } |
|---|
| 652 | } |
|---|
| 653 | matcopy(oldvare, temp2); |
|---|
| 654 | invert(temp2); /* get E^(-1) */ |
|---|
| 655 | matcopy(oldvare, temp3); |
|---|
| 656 | sum3 = 0.5 * logdet(temp3); /* get 1/2 log det(E) */ |
|---|
| 657 | for (i = 0; i < spp; i++) { |
|---|
| 658 | if (sample[i] > 1) { |
|---|
| 659 | for (j = 1; j < sample[i]; j++) { /* E(aa'|x) (invisibly) and |
|---|
| 660 | E(ee'|x) for within contrasts */ |
|---|
| 661 | for (k = 0; k < chars; k++) |
|---|
| 662 | for (l = 0; l < chars; l++) { |
|---|
| 663 | vare[k][l] += cntrast[i][j][k] * cntrast[i][j][l] - oldvare[k][l]; |
|---|
| 664 | sum2 -= cntrast[i][j][k] * temp2[k][l] * cntrast[i][j][l] / 2.0; |
|---|
| 665 | /* accumulate - x*E^(-1)*x'/2 for old E */ |
|---|
| 666 | } |
|---|
| 667 | sum2 -= sum3; /* log determinant term too */ |
|---|
| 668 | } |
|---|
| 669 | } |
|---|
| 670 | } |
|---|
| 671 | for (i = 0; i < chars; i++) /* complete EM by dividing by denom ... */ |
|---|
| 672 | for (j = 0; j < chars; j++) { /* ... and adding old VA, VE */ |
|---|
| 673 | if (!novara) { |
|---|
| 674 | vara[i][j] /= (double)contnum; |
|---|
| 675 | vara[i][j] += oldvara[i][j]; |
|---|
| 676 | } |
|---|
| 677 | vare[i][j] /= (double)contnum; |
|---|
| 678 | vare[i][j] += oldvare[i][j]; |
|---|
| 679 | } |
|---|
| 680 | logL = sum2; /* log likelihood for old values */ |
|---|
| 681 | } /* newcovars */ |
|---|
| 682 | |
|---|
| 683 | |
|---|
| 684 | void printcovariances(boolean novara) |
|---|
| 685 | { |
|---|
| 686 | /* print out ML covariances and regressions in the error-covariance case */ |
|---|
| 687 | long i, j; |
|---|
| 688 | |
|---|
| 689 | fprintf(outfile, "\n\n"); |
|---|
| 690 | if (novara) |
|---|
| 691 | fprintf(outfile, "Estimates when VarA is not in the model\n\n"); |
|---|
| 692 | else |
|---|
| 693 | fprintf(outfile, "Estimates when VarA is in the model\n\n"); |
|---|
| 694 | if (!novara) { |
|---|
| 695 | fprintf(outfile, "Estimate of VarA\n"); |
|---|
| 696 | fprintf(outfile, "-------- -- ----\n"); |
|---|
| 697 | fprintf(outfile, "\n"); |
|---|
| 698 | for (i = 0; i < chars; i++) { |
|---|
| 699 | for (j = 0; j < chars; j++) |
|---|
| 700 | fprintf(outfile, " %12.6f ", vara[i][j]); |
|---|
| 701 | fprintf(outfile, "\n"); |
|---|
| 702 | } |
|---|
| 703 | fprintf(outfile, "\n"); |
|---|
| 704 | } |
|---|
| 705 | fprintf(outfile, "Estimate of VarE\n"); |
|---|
| 706 | fprintf(outfile, "-------- -- ----\n"); |
|---|
| 707 | fprintf(outfile, "\n"); |
|---|
| 708 | for (i = 0; i < chars; i++) { |
|---|
| 709 | for (j = 0; j < chars; j++) |
|---|
| 710 | fprintf(outfile, " %12.6f ", vare[i][j]); |
|---|
| 711 | fprintf(outfile, "\n"); |
|---|
| 712 | } |
|---|
| 713 | fprintf(outfile, "\n"); |
|---|
| 714 | if (!novara) { |
|---|
| 715 | fprintf(outfile, "VarA Regressions (columns on rows)\n"); |
|---|
| 716 | fprintf(outfile, "---- ----------- -------- -- -----\n\n"); |
|---|
| 717 | for (i = 0; i < chars; i++) { |
|---|
| 718 | for (j = 0; j < chars; j++) |
|---|
| 719 | fprintf(outfile, "%10.4f", vara[i][j] / vara[i][i]); |
|---|
| 720 | putc('\n', outfile); |
|---|
| 721 | } |
|---|
| 722 | fprintf(outfile, "\n"); |
|---|
| 723 | fprintf(outfile, "VarA Correlations\n"); |
|---|
| 724 | fprintf(outfile, "---- ------------\n\n"); |
|---|
| 725 | for (i = 0; i < chars; i++) { |
|---|
| 726 | for (j = 0; j < chars; j++) |
|---|
| 727 | fprintf(outfile, "%10.4f", |
|---|
| 728 | vara[i][j] / sqrt(vara[i][i] * vara[j][j])); |
|---|
| 729 | putc('\n', outfile); |
|---|
| 730 | } |
|---|
| 731 | fprintf(outfile, "\n"); |
|---|
| 732 | } |
|---|
| 733 | fprintf(outfile, "VarE Regressions (columns on rows)\n"); |
|---|
| 734 | fprintf(outfile, "---- ----------- -------- -- -----\n\n"); |
|---|
| 735 | for (i = 0; i < chars; i++) { |
|---|
| 736 | for (j = 0; j < chars; j++) |
|---|
| 737 | fprintf(outfile, "%10.4f", vare[i][j] / vare[i][i]); |
|---|
| 738 | putc('\n', outfile); |
|---|
| 739 | } |
|---|
| 740 | fprintf(outfile, "\n"); |
|---|
| 741 | fprintf(outfile, "\nVarE Correlations\n"); |
|---|
| 742 | fprintf(outfile, "---- ------------\n\n"); |
|---|
| 743 | for (i = 0; i < chars; i++) { |
|---|
| 744 | for (j = 0; j < chars; j++) |
|---|
| 745 | fprintf(outfile, "%10.4f", |
|---|
| 746 | vare[i][j] / sqrt(vare[i][i] * vare[j][j])); |
|---|
| 747 | putc('\n', outfile); |
|---|
| 748 | } |
|---|
| 749 | fprintf(outfile, "\n\n"); |
|---|
| 750 | } /* printcovariances */ |
|---|
| 751 | |
|---|
| 752 | |
|---|
| 753 | void emiterate(boolean novara) |
|---|
| 754 | { |
|---|
| 755 | /* EM iteration of error and phylogenetic covariances */ |
|---|
| 756 | /* How to handle missing values? */ |
|---|
| 757 | long its; |
|---|
| 758 | double relnorm; |
|---|
| 759 | |
|---|
| 760 | initcovars(novara); |
|---|
| 761 | its = 1; |
|---|
| 762 | do { |
|---|
| 763 | newcovars(novara); |
|---|
| 764 | relnorm = normdiff(novara); |
|---|
| 765 | if (its % 100 == 0) |
|---|
| 766 | printf("Iteration no. %ld: ln L = %f, Norm = %f\n", its, logL, relnorm); |
|---|
| 767 | its++; |
|---|
| 768 | } while ((relnorm > 0.00001) && (its < 10000)); |
|---|
| 769 | if (its == 10000) { |
|---|
| 770 | printf("\nWARNING: Iterations did not converge."); |
|---|
| 771 | printf(" Results may be unreliable.\n"); |
|---|
| 772 | } |
|---|
| 773 | } /* emiterate */ |
|---|
| 774 | |
|---|
| 775 | |
|---|
| 776 | void initcontrastnode(node **p, node **grbg, node *q, long len, |
|---|
| 777 | long nodei, long *ntips, long *parens, initops whichinit, |
|---|
| 778 | pointarray treenode, pointarray nodep, Char *str, |
|---|
| 779 | Char *ch, FILE *intree) |
|---|
| 780 | { |
|---|
| 781 | /* initializes a node */ |
|---|
| 782 | boolean minusread; |
|---|
| 783 | double valyew, divisor; |
|---|
| 784 | |
|---|
| 785 | switch (whichinit) { |
|---|
| 786 | case bottom: |
|---|
| 787 | gnu(grbg, p); |
|---|
| 788 | (*p)->index = nodei; |
|---|
| 789 | (*p)->tip = false; |
|---|
| 790 | nodep[(*p)->index - 1] = (*p); |
|---|
| 791 | (*p)->view = (phenotype3)Malloc((long)chars*sizeof(double)); |
|---|
| 792 | break; |
|---|
| 793 | case nonbottom: |
|---|
| 794 | gnu(grbg, p); |
|---|
| 795 | (*p)->index = nodei; |
|---|
| 796 | (*p)->view = (phenotype3)Malloc((long)chars*sizeof(double)); |
|---|
| 797 | break; |
|---|
| 798 | case tip: |
|---|
| 799 | match_names_to_data (str, nodep, p, spp); |
|---|
| 800 | (*p)->view = (phenotype3)Malloc((long)chars*sizeof(double)); |
|---|
| 801 | (*p)->deltav = 0.0; |
|---|
| 802 | break; |
|---|
| 803 | case length: |
|---|
| 804 | processlength(&valyew, &divisor, ch, &minusread, intree, parens); |
|---|
| 805 | (*p)->v = valyew / divisor; |
|---|
| 806 | (*p)->iter = false; |
|---|
| 807 | if ((*p)->back != NULL) { |
|---|
| 808 | (*p)->back->v = (*p)->v; |
|---|
| 809 | (*p)->back->iter = false; |
|---|
| 810 | } |
|---|
| 811 | break; |
|---|
| 812 | default: /* cases of hslength,iter,hsnolength,treewt,unittrwt*/ |
|---|
| 813 | break; /* not handled */ |
|---|
| 814 | } |
|---|
| 815 | } /* initcontrastnode */ |
|---|
| 816 | |
|---|
| 817 | |
|---|
| 818 | void maketree() |
|---|
| 819 | { |
|---|
| 820 | /* set up the tree and use it */ |
|---|
| 821 | long which, nextnode; |
|---|
| 822 | node *q, *r; |
|---|
| 823 | |
|---|
| 824 | alloctree(&curtree.nodep, nonodes); |
|---|
| 825 | setuptree(&curtree, nonodes); |
|---|
| 826 | which = 1; |
|---|
| 827 | while (which <= numtrees) { |
|---|
| 828 | if ((printdata || reg) && numtrees > 1) { |
|---|
| 829 | fprintf(outfile, "Tree number%4ld\n", which); |
|---|
| 830 | fprintf(outfile, "==== ====== ====\n\n"); |
|---|
| 831 | } |
|---|
| 832 | nextnode = 0; |
|---|
| 833 | treeread (intree, &curtree.start, curtree.nodep, &goteof, &first, |
|---|
| 834 | curtree.nodep, &nextnode, &haslengths, &grbg, initcontrastnode); |
|---|
| 835 | q = curtree.start; |
|---|
| 836 | r = curtree.start; |
|---|
| 837 | while (!(q->next == curtree.start)) |
|---|
| 838 | q = q->next; |
|---|
| 839 | q->next = curtree.start->next; |
|---|
| 840 | curtree.start = q; |
|---|
| 841 | chuck(&grbg, r); |
|---|
| 842 | curtree.nodep[spp] = q; |
|---|
| 843 | bifurcating = (curtree.start->next->next == curtree.start); |
|---|
| 844 | contwithin(); |
|---|
| 845 | makecontrasts(curtree.start); |
|---|
| 846 | if (!bifurcating) { |
|---|
| 847 | makecontrasts(curtree.start->back); |
|---|
| 848 | contbetween(curtree.start, curtree.start->back); |
|---|
| 849 | } |
|---|
| 850 | if (!varywithin) { |
|---|
| 851 | if (writecont) |
|---|
| 852 | writecontrasts(); |
|---|
| 853 | if (reg) |
|---|
| 854 | regressions(); |
|---|
| 855 | putc('\n', outfile); |
|---|
| 856 | } |
|---|
| 857 | else { |
|---|
| 858 | emiterate(false); |
|---|
| 859 | printcovariances(false); |
|---|
| 860 | if (nophylo) { |
|---|
| 861 | logLvara = logL; |
|---|
| 862 | emiterate(nophylo); |
|---|
| 863 | printcovariances(nophylo); |
|---|
| 864 | logLnovara = logL; |
|---|
| 865 | fprintf(outfile, "\n\n\n Likelihood Ratio Test"); |
|---|
| 866 | fprintf(outfile, " of no VarA component\n"); |
|---|
| 867 | fprintf(outfile, " ---------- ----- ----"); |
|---|
| 868 | fprintf(outfile, " -- -- ---- ---------\n\n"); |
|---|
| 869 | fprintf(outfile, " Log likelihood with varA = %13.5f,", |
|---|
| 870 | logLvara); |
|---|
| 871 | fprintf(outfile, " %ld parameters\n\n", chars*(chars+1)); |
|---|
| 872 | fprintf(outfile, " Log likelihood without varA = %13.5f,", |
|---|
| 873 | logLnovara); |
|---|
| 874 | fprintf(outfile, " %ld parameters\n\n", chars*(chars+1)/2); |
|---|
| 875 | fprintf(outfile, " difference = %13.5f\n\n", |
|---|
| 876 | logLvara-logLnovara); |
|---|
| 877 | fprintf(outfile, " Chi-square value = %13.5f, ", |
|---|
| 878 | 2.0*(logLvara-logLnovara)); |
|---|
| 879 | fprintf(outfile, " %ld degrees of freedom\n\n", chars*(chars+1)/2); |
|---|
| 880 | } |
|---|
| 881 | } |
|---|
| 882 | which++; |
|---|
| 883 | } |
|---|
| 884 | if (progress) |
|---|
| 885 | printf("\nOutput written to file \"%s\"\n\n", outfilename); |
|---|
| 886 | } /* maketree */ |
|---|
| 887 | |
|---|
| 888 | |
|---|
| 889 | int main(int argc, Char *argv[]) |
|---|
| 890 | { /* main program */ |
|---|
| 891 | #ifdef MAC |
|---|
| 892 | argc = 1; /* macsetup("Contrast","Contrast"); */ |
|---|
| 893 | argv[0] = "Contrast"; |
|---|
| 894 | #endif |
|---|
| 895 | init(argc, argv); |
|---|
| 896 | openfile(&infile,INFILE,"input data","r",argv[0],infilename); |
|---|
| 897 | openfile(&intree,INTREE,"input tree", "r",argv[0],intreename); |
|---|
| 898 | openfile(&outfile,OUTFILE,"output", "w",argv[0],outfilename); |
|---|
| 899 | ibmpc = IBMCRT; |
|---|
| 900 | ansi = ANSICRT; |
|---|
| 901 | reg = true; |
|---|
| 902 | numtrees = 1; |
|---|
| 903 | doinit(); |
|---|
| 904 | getdata(); |
|---|
| 905 | maketree(); |
|---|
| 906 | FClose(infile); |
|---|
| 907 | FClose(outfile); |
|---|
| 908 | FClose(intree); |
|---|
| 909 | printf("Done.\n\n"); |
|---|
| 910 | #ifdef WIN32 |
|---|
| 911 | phyRestoreConsoleAttributes(); |
|---|
| 912 | #endif |
|---|
| 913 | return 0; |
|---|
| 914 | } |
|---|