Explore how Thompson Sampling with AI transforms search optimization in fields like protein design and question answering. What innovative applications do you see for AI in your industry? Let’s discuss! #AI #Innovation #ThompsonSampling LINK
Diffusion Approximations Reveal New Insights for Thompson Sampling
Researchers show in the small‑gap regime (gaps ~√γ) Thompson sampling updates converge to stochastic differential equations; latest now revision Oct 5 2025. getnews.me/diffusion-approximations... #thompsonsampling #diffusionapproximation
AI Thompson Sampling Drives Nash Equilibrium, Avoids Collusion
Research shows two agents using Thompson sampling converge to the Nash equilibrium, avoiding algorithmic collusion when every action has a non‑zero chance of being optimal. Read more: getnews.me/ai-thompson-sampling-dri... #thompsonsampling #nash
New Methods Improve Prior Selection for Gaussian Process Bandits
Two new GP‑Thompson sampling variants—Prior‑Elimination GP‑TS (PE‑GP‑TS) and HyperPrior GP‑TS (HP‑GP‑TS)—adaptively select priors and achieve sub‑linear regret, reported on 26 Sep 2025. getnews.me/new-methods-improve-prio... #gpbands #thompsonsampling
Bayesian Algorithms for Adversarial Online Learning in Infinite Actions
Researchers propose a Thompson sampling that uses a Gaussian‑process prior on the d‑dimensional unit cube [0,1]^d and achieves a regret bound of O(β√(Td log(1+√d λ/β))). getnews.me/bayesian-algorithms-for-... #thompsonsampling #gaussianprocess