Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

The Multi-fidelity Multi-armed Bandit

About

We study a variant of the classical stochastic $K$-armed bandit where observing the outcome of each arm is expensive, but cheap approximations to this outcome are available. For example, in online advertising the performance of an ad can be approximated by displaying it for shorter time periods or to narrower audiences. We formalise this task as a multi-fidelity bandit, where, at each time step, the forecaster may choose to play an arm at any one of $M$ fidelities. The highest fidelity (desired outcome) expends cost $\lambda^{(m)}$. The $m^{\text{th}}$ fidelity (an approximation) expends $\lambda^{(m)} < \lambda^{(M)}$ and returns a biased estimate of the highest fidelity. We develop MF-UCB, a novel upper confidence bound procedure for this setting and prove that it naturally adapts to the sequence of available approximations and costs thus attaining better regret than naive strategies which ignore the approximations. For instance, in the above online advertising example, MF-UCB would use the lower fidelities to quickly eliminate suboptimal ads and reserve the larger expensive experiments on a small set of promising candidates. We complement this result with a lower bound and show that MF-UCB is nearly optimal under certain conditions.

Kirthevasan Kandasamy, Gautam Dasarathy, Jeff Schneider, Barnab\'as P\'oczos• 2016

Related benchmarks

TaskDatasetResultRank
Multi-fidelity Multi-armed BanditNLI shared evaluation pool
Mean Cost-Weighted Pseudo-Regret4.32e+3
18
Bandit Regret MinimizationVanishing-mismatch experiment
Mean Cost-Weighted Pseudo-Regret1.50e+3
15
Bandit Regret MinimizationCheckpoint-based (evaluation)
Mean Difference427.7
5
Cost-weighted pseudo-regret minimizationResidual-mismatch experiment final-budget
Mean Difference (TACC vs Baseline)631.4
4
Multi-fidelity bandit optimizationLLM-as-a-judge residual-mismatch Λ=128000 (test)
Mean Cost-Weighted Pseudo-Regret5.36e+3
4
Showing 5 of 5 rows

Other info

Follow for update