E in the inaccurate case, even if the BAMCP advantage is less visible in the second experiment. BEB was no Roc-A chemical information longer able to compete with OPPS-DS and was even beaten by BAMCP and BFS3 in the last experiment. -Greedy was still a decent choice except in the first experiment. As observed in the accurate case, Soft-max was very bad in every case. In Fig 12, if we take a look at the top-right point, we can see OPPS-DS is the best choice in the second and third experiment. BEB, SBOSS and -Greedy share the first place with OPPS-DS in the first one. If we place our offline-time bound right under OPPS-DS minimal offline time cost, we can see how the top is affected from left to right: GC: (Random), (Random, SBOSS), (SBOSS), (BEB, SBOSS, -Greedy), (BEB, BFS3, SBOSS, -Greedy), GDL: (Random), (Random, SBOSS), (BAMCP, Random, SBOSS), (BEB, SBOSS, -Greedy), (BEB, BFS3, SBOSS, -Greedy), (BAMCP, BEB, BFS3, SBOSS, -Greedy), Grid: (Random), (Random, SBOSS), (BAMCP, BEB, BFS3, Random, SBOSS), (-Greedy). SBOSS is again the first algorithm to appear in the rankings. -Greedy is the only one which could reach the top in every case, even when facing BAMCP and BFS3 fed with high online computation cost. BEB no longer appears to be undeniably better than the others. Besides, the two first experiments show that most algorithms obtained similar results, except for BAMCP which does not appear on the top in the first experiment. In the last experiment, -Greedy succeeded to beat all other algorithms. Fig 13 does not bring us more information than those we observed in the accurate case.PLOS ONE | DOI:10.1371/journal.pone.0157088 June 15,18 /Benchmarking for Bayesian Reinforcement LearningFig 9. Best algorithms w.r.t Performance (accurate case). doi:10.1371/journal.pone.0157088.g5.3.3 Summary. In the accurate case, OPPS-DS was always among the best algorithms, at the cost of some offline computation time. When the offline time budget was too constrained for OPPS-DS, different algorithms were suitable depending on the online time budget: ?Low online time budget: SBOSS was the fastest algorithm to make better decisions than a random policy.PLOS ONE | DOI:10.1371/journal.pone.0157088 June 15,19 /Benchmarking for Bayesian Reinforcement LearningFig 10. Offline computation cost Vs. Performance (inaccurate case). doi:10.1371/journal.pone.0157088.gPLOS ONE | DOI:10.1371/journal.pone.0157088 June 15,20 /Benchmarking for Bayesian Reinforcement LearningFig 11. Online computation cost Vs. Performance (inaccurate case). doi:10.1371/journal.pone.0157088.gPLOS ONE | DOI:10.1371/journal.pone.0157088 June 15,21 /Benchmarking for Bayesian Reinforcement LearningFig 12. Best algorithms w.r.t offline/online time periods (inaccurate case). doi:10.1371/journal.pone.0157088.gPLOS ONE | DOI:10.1371/journal.pone.0157088 June 15,22 /Benchmarking for Bayesian Reinforcement LearningFig 13. Best algorithms w.r.t Performance (inaccurate case). doi:10.1371/journal.pone.0157088.g?Medium online time budget: BEB reached Dalfopristin chemical information performances similar to OPPS-DS on each experiment. ?High online time budget: In the first experiment, BFS3 managed to catch up BEB and OPPS-DS when given sufficient time. In the second experiment, it was BAMCP which hasPLOS ONE | DOI:10.1371/journal.pone.0157088 June 15,23 /Benchmarking for Bayesian Reinforcement Learningachieved this result. Neither BFS3 nor BAMCP was able to compete with BEB and OPPS-DS in the last experiment. The results obtained in the inaccurate case were very interes.E in the inaccurate case, even if the BAMCP advantage is less visible in the second experiment. BEB was no longer able to compete with OPPS-DS and was even beaten by BAMCP and BFS3 in the last experiment. -Greedy was still a decent choice except in the first experiment. As observed in the accurate case, Soft-max was very bad in every case. In Fig 12, if we take a look at the top-right point, we can see OPPS-DS is the best choice in the second and third experiment. BEB, SBOSS and -Greedy share the first place with OPPS-DS in the first one. If we place our offline-time bound right under OPPS-DS minimal offline time cost, we can see how the top is affected from left to right: GC: (Random), (Random, SBOSS), (SBOSS), (BEB, SBOSS, -Greedy), (BEB, BFS3, SBOSS, -Greedy), GDL: (Random), (Random, SBOSS), (BAMCP, Random, SBOSS), (BEB, SBOSS, -Greedy), (BEB, BFS3, SBOSS, -Greedy), (BAMCP, BEB, BFS3, SBOSS, -Greedy), Grid: (Random), (Random, SBOSS), (BAMCP, BEB, BFS3, Random, SBOSS), (-Greedy). SBOSS is again the first algorithm to appear in the rankings. -Greedy is the only one which could reach the top in every case, even when facing BAMCP and BFS3 fed with high online computation cost. BEB no longer appears to be undeniably better than the others. Besides, the two first experiments show that most algorithms obtained similar results, except for BAMCP which does not appear on the top in the first experiment. In the last experiment, -Greedy succeeded to beat all other algorithms. Fig 13 does not bring us more information than those we observed in the accurate case.PLOS ONE | DOI:10.1371/journal.pone.0157088 June 15,18 /Benchmarking for Bayesian Reinforcement LearningFig 9. Best algorithms w.r.t Performance (accurate case). doi:10.1371/journal.pone.0157088.g5.3.3 Summary. In the accurate case, OPPS-DS was always among the best algorithms, at the cost of some offline computation time. When the offline time budget was too constrained for OPPS-DS, different algorithms were suitable depending on the online time budget: ?Low online time budget: SBOSS was the fastest algorithm to make better decisions than a random policy.PLOS ONE | DOI:10.1371/journal.pone.0157088 June 15,19 /Benchmarking for Bayesian Reinforcement LearningFig 10. Offline computation cost Vs. Performance (inaccurate case). doi:10.1371/journal.pone.0157088.gPLOS ONE | DOI:10.1371/journal.pone.0157088 June 15,20 /Benchmarking for Bayesian Reinforcement LearningFig 11. Online computation cost Vs. Performance (inaccurate case). doi:10.1371/journal.pone.0157088.gPLOS ONE | DOI:10.1371/journal.pone.0157088 June 15,21 /Benchmarking for Bayesian Reinforcement LearningFig 12. Best algorithms w.r.t offline/online time periods (inaccurate case). doi:10.1371/journal.pone.0157088.gPLOS ONE | DOI:10.1371/journal.pone.0157088 June 15,22 /Benchmarking for Bayesian Reinforcement LearningFig 13. Best algorithms w.r.t Performance (inaccurate case). doi:10.1371/journal.pone.0157088.g?Medium online time budget: BEB reached performances similar to OPPS-DS on each experiment. ?High online time budget: In the first experiment, BFS3 managed to catch up BEB and OPPS-DS when given sufficient time. In the second experiment, it was BAMCP which hasPLOS ONE | DOI:10.1371/journal.pone.0157088 June 15,23 /Benchmarking for Bayesian Reinforcement Learningachieved this result. Neither BFS3 nor BAMCP was able to compete with BEB and OPPS-DS in the last experiment. The results obtained in the inaccurate case were very interes.