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Fast Pure Exploration via Frank-Wolfe (NeurIPS 2021)

This is the repository for the NeurIPS 2021 paper "Fast Pure Exploration via Frank-Wolfe" by Po-An Wang, Ruo-Chun Tzeng and Alexandre Proutiere.

  • utilities/envelope.jl contains the key functions for our sampling rules and introduces a generic way for the objective function and its sub-gradient (i.e., f, ∇f in our code) and the generalized log-likelihood ratio (i.e., alt_min and glrt in our utilities/peps.jl) for the active learning problems under various structures.

Package Requirement

Julia with version 1.5.4.

  • LinearAlgebra, Distributions, Statistics, Random
  • JuMP, Tulip
  • Distributed, JLD2
  • Plots, StatsPlots, CPUTime, Printf, LaTeXStrings, IterTools

Experiments

  • Classical Best-Arm Identification
  • Linear Best-Arm Identification, Linear Threshold
  • Lipschitz Best-Arm Identification

Execution Instructions

Please go to the corresponding folder, e.g., standard, linear, or lipschitz and then execute the following commands:

  • For Best Arm Identification problem, execute, e.g., julia -O3 -p8 experiment_bai1.jl for parallel computing with 8 processes to speeding-up the computation.
  • For Threshold Bandit problem, the command is similar as above, just replace the filename with, e.g., experiment_threshold.jl.
  • After completing the experiments, the performance statistics are saved in the .dat file. You can visualize the result by e.g., julia -O3 viz.jl BAI1.

Please note that except for linear/experiment_bai.jl, all other experiments support multiple confidence δs as input. The reason why linear/experiment_bai.jl cannot support multiple confidence δs is because of the stopping rule of XYAdaptive.

Baseline Tables

Name Abbrev. Description
FW-based Sampling FWS Our Frank-Wolfe based Sampling
Track-and-Stop-D T-D Track and Stop (Garivier and Kaufmann, 2016) with D-Tracking
Optimistic TaS-C O-C Optimistic Track and Stop (Degenne, Koolen and Ménard, 2019) with C-Tracking
Menard-C M-C Gradient Ascent algorithm (Ménard, 2019) with C-Tracking
DaBomb-C D-C AdaHedge vs Best-Response (Section 3.1 in Degenne, Koolen and Ménard, 2019) with C-Tracking
ConvexGame-C CG-C LineGame-C with C-Tracking (Degenne et al. 2020)
LinGame-C Lk-C LineGame with C-Tracking (Degenne et al. 2020)
LazyTaS LT Lazy TaS with modified threshold in A.1 (Jedra and Proutiere, 2020)
XY-Adaptive XY-A XY-Adaptive (Soare et al. 2014)

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This is the repo for Fast Pure Exploration via Frank-Wolfe (NeurIPS 2021).

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