A very interesting paper with insights into understanding when and why synthetic data (although imperfect and biased) can boost the performance of statistical inference!! π
10.10.2025 17:44 β π 3 π 0 π¬ 0 π 0@dsam99.bsky.social
Machine Learning PhD Student at CMU | Student Researcher at Google | dsam99.github.io
A very interesting paper with insights into understanding when and why synthetic data (although imperfect and biased) can boost the performance of statistical inference!! π
10.10.2025 17:44 β π 3 π 0 π¬ 0 π 0LLM self-improvement has critical implications in synthetic data, post-training and test-time inference. To understand LLMs' true capability of self-improvement, we perform large-scale experiments with multiple families of LLMs, tasks and mechanisms. Here is what we found: (1/9)
06.12.2024 18:02 β π 12 π 4 π¬ 1 π 1ββ
24.11.2024 16:24 β π 1 π 0 π¬ 0 π 0Could I be added as well? Iβve worked a bit on uncertainty quantification in LLMs and BNNs π
19.11.2024 15:31 β π 2 π 0 π¬ 0 π 0