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Adaptive Probabilistic Behavioural Learning System for the effective behavioural decision in cloud trading negotiation market

机译:自适应概率行为学习系统,用于云交易谈判市场中的有效行为决策

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In cloud e-commerce application, building an automated negotiation strategy by understanding the uncertain information of the opponent preferences, utilities, and tactics is highly challenging. The key issue is to analyse and predict the uncertain behaviour of the opponent tactics to suggest the appropriate counter tactics that can reach maximum consensus. To handle such uncertain information, negotiation strategies follow several tactics with and without learning ability. Strategies without learning ability are restricted to negotiate with the opponent having only deterministic behaviour. To overcome this problem most researchers exploited the negotiation strategies with fixed learning ability using Bayesian learning, neural network learning, and genetic tactics. These tactics can learn the opponent's behaviour and cannot guarantee to generate suitable counter-offer for all offers submitted by the opponent cloud service provider. This limitation motivates to propose a novel Adaptive Probabilistic Behavioural Learning System for managing the opponent having unpredictable random behaviours. The proposed Adaptive Probabilistic Behavioural Learning System contains a Behavioural Inference Engine to analyse the sequence of negotiation offer received by the broker for effectively learning the opponent's behaviour over several stages of negotiation process. It also formulates the multi-stage Markov decision problem to suggest the broker with appropriate counter-offer behavioural tactics generation based on the adaptive probabilistic decision taken over the corresponding negotiation stage. Therefore, this research work can outperform the existing fixed behavioural learning tactics and hence maximize the utility value and success rate of negotiating parties without any break-off.
机译:在云电子商务应用程序中,通过了解对手偏好,效用和策略的不确定信息来构建自动协商策略非常具有挑战性。关键问题是分析和预测对手战术的不确定行为,以提出可以达成最大共识的适当反战术。为了处理这种不确定的信息,谈判策略遵循具有和不具有学习能力的几种策略。没有学习能力的策略只能与只有确定性行为的对手协商。为了克服这个问题,大多数研究人员利用贝叶斯学习,神经网络学习和遗传策略来开发具有固定学习能力的谈判策略。这些策略可以了解对手的行为,并且不能保证为对手云服务提供商提交的所有报价生成合适的还价。这种局限性促使人们提出了一种新颖的自适应概率行为学习系统,用于管理具有不可预测的随机行为的对手。提出的自适应概率行为学习系统包含一个行为推理引擎,用于分析经纪人收到的谈判要约的顺序,以便在谈判过程的多个阶段中有效地学习对手的行为。它还制定了多阶段马尔可夫决策问题,以基于在相应协商阶段采取的自适应概率决策来建议具有适当还价行为策略生成的经纪人。因此,这项研究工作可以胜过现有的固定行为学习策略,从而在没有任何中断的情况下最大化谈判方的效用价值和成功率。

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