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首页> 外文期刊>Journal of Intelligent Information Systems >Robust learning in expert networks: a comparative analysis
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Robust learning in expert networks: a comparative analysis

机译:专家网络中的稳健学习:比较分析

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摘要

Human experts as well as autonomous agents in a referral network must decide whether to accept a task or refer to a more appropriate expert, and if so to whom. In order for the referral network to improve over time, the experts must learn to estimate the topical expertise of other experts. This article extends concepts from Multi-agent Reinforcement Learning and Active Learning to referral networks for distributed learning in referral networks. Among a wide array of algorithms evaluated, Distributed Interval Estimation Learning (DIEL), based on Interval Estimation Learning, was found to be superior for learning appropriate referral choices, compared to ?-Greedy, Q-learning, Thompson Sampling and Upper Confidence Bound (UCB) methods. In addition to a synthetic data set, we compare the performance of the stronger learning-to-refer algorithms on a referral network of high-performance Stochastic Local Search (SLS) SAT solvers where expertise does not obey any known parameterized distribution. An evaluation of overall network performance and a robustness analysis is conducted across the learning algorithms, with an emphasis on capacity constraints and evolving networks, where experts with known expertise drop off and new experts of unknown performance enter situations that arise in real-world scenarios but were heretofore ignored.
机译:转诊网络中的人工专家和自治代理必须决定是接受任务还是转介更合适的专家,以及是否委托给谁。为了使推荐网络随着时间的推移而不断完善,专家们必须学会估计其他专家的主题专长。本文将概念从“多主体强化学习”和“主动学习”扩展到了在引荐网络中进行分布式学习的引荐网络。在评估的各种算法中,基于间隔估计学习的分布式间隔估计学习(DIEL)被发现比?-Greedy,Q学习,汤普森采样和上限置信度( UCB)方法。除了综合数据集,我们还比较了专业知识不服从任何已知参数分布的高性能随机局部搜索(SLS)SAT求解器的引用网络上更强大的“引用学习”算法的性能。整个学习算法对网络的整体性能进行了评估,并进行了鲁棒性分析,重点是容量限制和不断发展的网络,在这些情况下,具有已知专业知识的专家会离职,而性能未知的新专家会进入现实情况,迄今为止被忽略了。

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