Hello Ryan,
I rerun my SNP calling pipeline using a different method, and it seems that the data fs look a little bit better (presence of low-frequency shared polymorphisms), but the strips at particular frequencies are still there. I am really not sure what could cause this. I am also getting some errors at the beginning of the optimization (using the dadi.Inference.optimize_log function):
Beginning optimization ************************************************
8 , -496810 , array([ 0.0901689 , 32.2392 , 0.00901311 , 4.16508 , 9.65673 , 4.00496 , 1.79129 , 0.0286078 ])
16 , -423761 , array([ 0.190932 , 32.5291 , 0.0107814 , 4.28896 , 16.5152 , 4.28416 , 1.80309 , 0.0198988 ])
WARNING:Numerics:Extrapolation may have failed. Check resulting frequency spectrum for unexpected results.
WARNING:Inference:Model is masked in some entries where data is not.
WARNING:Inference:Number of affected entries is 77. Sum of data in those entries is 381:
WARNING:Numerics:Extrapolation may have failed. Check resulting frequency spectrum for unexpected results.
WARNING:Inference:Model is masked in some entries where data is not.
WARNING:Inference:Number of affected entries is 77. Sum of data in those entries is 381:
WARNING:Numerics:Extrapolation may have failed. Check resulting frequency spectrum for unexpected results.
WARNING:Inference:Model is masked in some entries where data is not.
WARNING:Inference:Number of affected entries is 77. Sum of data in those entries is 381:
WARNING:Numerics:Extrapolation may have failed. Check resulting frequency spectrum for unexpected results.
WARNING:Inference:Model is masked in some entries where data is not.
WARNING:Inference:Number of affected entries is 77. Sum of data in those entries is 381:
WARNING:Numerics:Extrapolation may have failed. Check resulting frequency spectrum for unexpected results.
WARNING:Inference:Model is masked in some entries where data is not.
WARNING:Inference:Number of affected entries is 77. Sum of data in those entries is 381:
WARNING:Numerics:Extrapolation may have failed. Check resulting frequency spectrum for unexpected results.
WARNING:Inference:Model is masked in some entries where data is not.
WARNING:Inference:Number of affected entries is 77. Sum of data in those entries is 381:
381.0 372593.0
381.0 372593.0
381.0 372593.0
381.0 372593.0
381.0 372593.0
381.0 372593.0
24 , -796464 , array([ 0.204067 , 37.4219 , 0.0550363 , 7.51519 , 6.7188 , 10.6923 , 2.27205 , 0.00154578 ])
WARNING:Numerics:Extrapolation may have failed. Check resulting frequency spectrum for unexpected results.
WARNING:Inference:Model is masked in some entries where data is not.
WARNING:Inference:Number of affected entries is 77. Sum of data in those entries is 381:
WARNING:Numerics:Extrapolation may have failed. Check resulting frequency spectrum for unexpected results.
WARNING:Inference:Model is masked in some entries where data is not.
WARNING:Inference:Number of affected entries is 77. Sum of data in those entries is 381:
WARNING:Numerics:Extrapolation may have failed. Check resulting frequency spectrum for unexpected results.
WARNING:Inference:Model is masked in some entries where data is not.
WARNING:Inference:Number of affected entries is 77. Sum of data in those entries is 381:
381.0 372593.0
381.0 372593.0
381.0 372593.0
32 , -420012 , array([ 0.191864 , 32.8642 , 0.0121467 , 4.47304 , 15.4627 , 4.57631 , 1.83383 , 0.0165068 ])
40 , -420654 , array([ 0.240726 , 34.8134 , 0.00845121 , 4.82029 , 11.7067 , 7.17143 , 2.38726 , 0.0142131 ])
48 , -419284 , array([ 0.206221 , 33.5056 , 0.0108196 , 4.57757 , 14.1528 , 5.27923 , 1.99431 , 0.0157397 ])
56 , -420551 , array([ 0.219414 , 34.7422 , 0.00917865 , 4.84808 , 12.9347 , 5.08161 , 2.02714 , 0.014058 ])
64 , -419344 , array([ 0.208277 , 33.6754 , 0.0105341 , 4.6205 , 13.9473 , 5.24659 , 1.99961 , 0.0154532 ])
72 , -419323 , array([ 0.208277 , 33.6754 , 0.0105341 , 4.6205 , 13.9473 , 5.24659 , 1.99961 , 0.0154686 ])
80 , -419305 , array([ 0.207062 , 33.5553 , 0.0107016 , 4.59512 , 14.0682 , 5.26582 , 1.99848 , 0.0156216 ])
88 , -419302 , array([ 0.20638 , 33.4878 , 0.0107972 , 4.58089 , 14.1368 , 5.28197 , 1.99472 , 0.0157173 ])
96 , -419304 , array([ 0.206238 , 33.4737 , 0.0108172 , 4.57792 , 14.1653 , 5.27897 , 1.99436 , 0.0157373 ])
104 , -419303 , array([ 0.206332 , 33.483 , 0.010804 , 4.58446 , 14.1417 , 5.27747 , 1.9946 , 0.0157241 ])
112 , -419287 , array([ 0.206248 , 33.4748 , 0.0108266 , 4.57813 , 14.1501 , 5.2788 , 1.99438 , 0.0157359 ])
120 , -419306 , array([ 0.206303 , 33.5137 , 0.010808 , 4.57928 , 14.1445 , 5.27792 , 1.99452 , 0.0157281 ])
128 , -419303 , array([ 0.206457 , 33.475 , 0.0108154 , 4.57819 , 14.1498 , 5.27876 , 1.99439 , 0.0157355 ])
136 , -419289 , array([ 0.206286 , 33.4785 , 0.0108105 , 4.57891 , 14.1463 , 5.2782 , 1.99448 , 0.0157306 ])
144 , -419279 , array([ 0.206286 , 33.4785 , 0.0108105 , 4.57891 , 14.1463 , 5.2782 , 1.99448 , 0.0157463 ])
152 , -419282 , array([ 0.206254 , 33.4753 , 0.010815 , 4.57825 , 14.1496 , 5.27871 , 1.99639 , 0.0157351 ])
160 , -419284 , array([ 0.206275 , 33.4774 , 0.010812 , 4.57869 , 14.1474 , 5.28366 , 1.99445 , 0.0157321 ])
168 , -419298 , array([ 0.206268 , 33.48 , 0.0108095 , 4.57946 , 14.1619 , 5.27842 , 1.99451 , 0.0157296 ])
176 , -419282 , array([ 0.206274 , 33.4776 , 0.0108118 , 4.58332 , 14.1475 , 5.27838 , 1.99446 , 0.0157319 ])
184 , -419291 , array([ 0.206275 , 33.4774 , 0.0108228 , 4.57869 , 14.1474 , 5.27838 , 1.99445 , 0.0157321 ])
192 , -419284 , array([ 0.206275 , 33.5109 , 0.010812 , 4.57869 , 14.1474 , 5.27838 , 1.99445 , 0.0157321 ])
200 , -419305 , array([ 0.206481 , 33.4774 , 0.010812 , 4.57869 , 14.1474 , 5.27838 , 1.99445 , 0.0157321 ])
208 , -419285 , array([ 0.206275 , 33.4774 , 0.010812 , 4.57869 , 14.1474 , 5.27838 , 1.99445 , 0.0157321 ])
216 , -419280 , array([ 0.206275 , 33.4774 , 0.010812 , 4.57869 , 14.1474 , 5.27838 , 1.99445 , 0.0157479 ])
224 , -419284 , array([ 0.206275 , 33.4774 , 0.010812 , 4.57869 , 14.1474 , 5.27838 , 1.99645 , 0.0157321 ])
232 , -419284 , array([ 0.206275 , 33.4774 , 0.010812 , 4.57869 , 14.1474 , 5.28366 , 1.99445 , 0.0157321 ])
240 , -419300 , array([ 0.206275 , 33.4774 , 0.010812 , 4.57869 , 14.1616 , 5.27838 , 1.99445 , 0.0157321 ])
248 , -419282 , array([ 0.206275 , 33.4774 , 0.010812 , 4.58327 , 14.1474 , 5.27838 , 1.99445 , 0.0157321 ])
256 , -419291 , array([ 0.206275 , 33.4774 , 0.0108228 , 4.57869 , 14.1474 , 5.27838 , 1.99445 , 0.0157321 ])
264 , -419284 , array([ 0.206275 , 33.5109 , 0.010812 , 4.57869 , 14.1474 , 5.27838 , 1.99445 , 0.0157321 ])
272 , -419305 , array([ 0.206481 , 33.4774 , 0.010812 , 4.57869 , 14.1474 , 5.27838 , 1.99445 , 0.0157321 ])
280 , -419285 , array([ 0.206275 , 33.4774 , 0.010812 , 4.57869 , 14.1474 , 5.27838 , 1.99445 , 0.0157321 ])
288 , -419280 , array([ 0.206275 , 33.4774 , 0.010812 , 4.57869 , 14.1474 , 5.27838 , 1.99445 , 0.0157479 ])
296 , -419284 , array([ 0.206275 , 33.4774 , 0.010812 , 4.57869 , 14.1474 , 5.27838 , 1.99645 , 0.0157321 ])
304 , -419284 , array([ 0.206275 , 33.4774 , 0.010812 , 4.57869 , 14.1474 , 5.28366 , 1.99445 , 0.0157321 ])
312 , -419300 , array([ 0.206275 , 33.4774 , 0.010812 , 4.57869 , 14.1616 , 5.27838 , 1.99445 , 0.0157321 ])
320 , -419282 , array([ 0.206275 , 33.4774 , 0.010812 , 4.58327 , 14.1474 , 5.27838 , 1.99445 , 0.0157321 ])
328 , -419291 , array([ 0.206275 , 33.4774 , 0.0108228 , 4.57869 , 14.1474 , 5.27838 , 1.99445 , 0.0157321 ])
336 , -419284 , array([ 0.206275 , 33.5109 , 0.010812 , 4.57869 , 14.1474 , 5.27838 , 1.99445 , 0.0157321 ])
344 , -419305 , array([ 0.206481 , 33.4774 , 0.010812 , 4.57869 , 14.1474 , 5.27838 , 1.99445 , 0.0157321 ])
352 , -419285 , array([ 0.206275 , 33.4774 , 0.010812 , 4.57869 , 14.1474 , 5.27838 , 1.99445 , 0.0157321 ])
360 , -419280 , array([ 0.206275 , 33.4774 , 0.010812 , 4.57869 , 14.1474 , 5.27838 , 1.99445 , 0.0157479 ])
368 , -419284 , array([ 0.206275 , 33.4774 , 0.010812 , 4.57869 , 14.1474 , 5.27838 , 1.99645 , 0.0157321 ])
376 , -419284 , array([ 0.206275 , 33.4774 , 0.010812 , 4.57869 , 14.1474 , 5.28366 , 1.99445 , 0.0157321 ])
384 , -419300 , array([ 0.206275 , 33.4774 , 0.010812 , 4.57869 , 14.1616 , 5.27838 , 1.99445 , 0.0157321 ])
392 , -419282 , array([ 0.206275 , 33.4774 , 0.010812 , 4.58327 , 14.1474 , 5.27838 , 1.99445 , 0.0157321 ])
400 , -419291 , array([ 0.206275 , 33.4774 , 0.0108228 , 4.57869 , 14.1474 , 5.27838 , 1.99445 , 0.0157321 ])
408 , -419284 , array([ 0.206275 , 33.5109 , 0.010812 , 4.57869 , 14.1474 , 5.27838 , 1.99445 , 0.0157321 ])
416 , -419305 , array([ 0.206481 , 33.4774 , 0.010812 , 4.57869 , 14.1474 , 5.27838 , 1.99445 , 0.0157321 ])
424 , -419285 , array([ 0.206275 , 33.4774 , 0.010812 , 4.57869 , 14.1474 , 5.27838 , 1.99445 , 0.0157321 ])
432 , -419280 , array([ 0.206275 , 33.4774 , 0.010812 , 4.57869 , 14.1474 , 5.27838 , 1.99445 , 0.0157479 ])
440 , -419285 , array([ 0.206275 , 33.4774 , 0.010812 , 4.57869 , 14.1474 , 5.27838 , 1.99445 , 0.0157321 ])
Finished optimization **************************************************
At least this time the optimization does not seem to be pushing the bounds of parameters, and the migration rates make more sense.
Thank you,
Best,
Mathilde