Henrik Häggström
henhagg.bsky.social
Henrik Häggström
@henhagg.bsky.social
PhD student @deptmathgothenburg.bsky.social | https://research.chalmers.se/en/person/henhagg
We experimented mainly with SDE mixed-effects models and in particular a real-data model of translation kinetics after mRNA transfection.

All inferences in the provided code can easily be run on a standard laptop.

🔗 arxiv.org/abs/2504.11279

💻 github.com/henhagg/semp...
April 28, 2025 at 1:04 PM
💡We compare our method (SeMPLE) with pseudomarginal (exact) inference (PEPSDI in the figure). Results are very similar to exact inference but our method is way faster and requires less tuning than particle MCMC.
April 28, 2025 at 1:04 PM
💡 We use easy to train but expressive Gaussian Mixture Models to approximate the likelihood and posterior.

💡Approximations are amortized and can be sequentially refined for each individual.

💡The semi-amortized approximations make our methodology scalable for an increasing number of individuals.
April 28, 2025 at 1:04 PM