NaN Samples in SNLE with slice_np_vectorized #1383
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Thanks for creating this! We remember we had experienced I am not sure if the "near-zero likelihood" is the cause for this, but it would be possible. The training curves look good imo. The negative values are likely a result of overfitting in these particular epochs. The neural net seems to recover quite well though, so I think all is good there. Michael |
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Thanks for creating this!
We remember we had experienced
NaN
samples with MCMC at some point. In all of these cases, I don't think they ever caused performance issues. As such, I tend to believe that removing the NaN samples still good and reliable results. I would recommend to check though, e.g. with SBC or with MCMC diagnostics.I am not sure if the "near-zero likelihood" is the cause for this, but it would be possible.
The training curves look good imo. The negative values are likely a result of overfitting in these particular epochs. The neural net seems to recover quite well though, so I think all is good there.
Michael