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hbox {NB}^{3}: a multilateral negotiation algorithm for large, non-linear agreement spaces with limited time

机译:hbox {NB} ^ {3}:在有限的时间内针对大型非线性协议空间的多边协商算法

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摘要

Existing work on automated negotiations has mainly focused on bilateral negotiations with linear utility functions. It is often assumed that all possible agreements and their utility values are given beforehand. Most real-world negotiations however are much more complex. We introduce a new family of negotiation algorithms that is applicable to domains with many agents, an intractably large space of possible agreements, non-linear utility functions and limited time so an exhaustive search for the best proposals is not feasible. We assume that agents are selfish and cannot be blindly trusted, so the algorithm does not rely on any mediator. This family of algorithms is called (hbox {NB}^{3}) and applies heuristic Branch & Bound search to find good proposals. Search and negotiation happen simultaneously and therefore strongly influence each other. It applies a new time-based negotiation strategy that considers two utility aspiration levels: one for the agent itself and one for its opponents. Also, we introduce a negotiation protocol that imposes almost no restrictions and is therefore better applicable to negotiations with humans. We present the Negotiating Salesmen Problem (NSP): a variant of the Traveling Salesman Problem with multiple negotiating agents, as a test case. We describe an implementation of (hbox {NB}^{3}) designed for the NSP and present the results of experiments with this implementation. We conclude that the algorithm is able to decrease the costs of the agents significantly, that the heuristic search is efficient and that the algorithm scales well with increasing complexity of the problem.
机译:现有的关于自动谈判的工作主要集中在具有线性效用函数的双边谈判上。通常假定所有可能的协议及其效用值都是事先给出的。但是,大多数现实世界的谈判要复杂得多。我们引入了一个新的协商算法系列,该算法适用于具有许多代理的域,可能的协议空间巨大,非线性效用函数和有限的时间,因此穷举搜索最佳建议是不可行的。我们假设代理是自私的并且不能被盲目信任,因此该算法不依赖任何中介。该算法家族称为(hbox {NB} ^ {3}),并应用启发式分支与界限搜索来找到好的建议。搜索和协商是同时发生的,因此会相互影响。它采用了一种新的基于时间的协商策略,该策略考虑了两个效用期望水平:一个用于代理自身,一个用于其对手。此外,我们引入了一种谈判协议,该协议几乎没有任何限制,因此更适合与人进行谈判。我们提出了“谈判销售员问题”(NSP):带有多个谈判代理的“旅行业务员问题”的变体,作为测试用例。我们描述了为NSP设计的(hbox {NB} ^ {3})的实现,并介绍了使用该实现的实验结果。我们得出的结论是,该算法能够显着降低代理的成本,启发式搜索是有效的,并且随着问题的复杂性的提高,该算法可以很好地扩展。

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