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Conditional Restricted Boltzmann Machines for Negotiations in Highly Competitive and Complex Domains

机译:在竞争激烈且复杂的领域中进行谈判的条件受限玻尔兹曼机

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Learning in automated negotiations,while useful,is hard because of the indirect way the target function can be observed and the limited amount of experience available to learn from.This paper proposes two novel opponent modeling techniques based on deep learning methods.Moreover,to improve the learning efficacy of negotiating agents,the second approach is also capable of transferring knowledge efficiently between negotiation tasks.Transfer is conducted by automatically mapping the source knowledge to the target in a rich feature space.Experiments show that using these techniques the proposed strategies outperform existing state-of-the-art agents in highly competitive and complex negotiation domains.Furthermore,the empirical game theoretic analysis reveals the robustness of the proposed strategies.
机译:自动谈判中的学习虽然有用,但由于可以间接观察目标功能并且学习经验有限,因此很难。本文提出了两种基于深度学习方法的新型对手建模技术。第二种方法也可以在谈判任务之间有效地传递知识。通过在丰富的特征空间中将源知识自动映射到目标来进行传递。实验表明,使用这些技术所提出的策略优于现有的策略竞争激烈和复杂的谈判领域中最先进的代理商。此外,经验博弈论分析揭示了所提出策略的鲁棒性。

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