蜜蜂行为:多活动分配问题的多智能体方法

Satchidananda Dehuri, Sung-Bae Cho, A. Jagadev
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引用次数: 9

摘要

针对多活动分配问题,提出了一种利用蜜蜂行为的多智能体方法,在一定约束条件下寻找最优的客户活动关系。这个np难题是市场营销中产生最佳活动的关键问题之一。在个性化营销中,优化客户满意度和目标效率是非常重要的。利用蜜蜂的行为,提出了一种多智能体方法来克服多个个性化活动同时进行时出现的多重推荐问题。我们使用人工创建的客户活动偏好矩阵,用另外两种称为RANDOM和INDEPENDENT的方法来衡量提议方法的有效性。进一步介绍了广义高斯响应抑制函数,该函数在不同的客户类别中是不同的。在客户活动分配矩阵和推荐百分比的大小上进行了广泛的模拟研究。计算结果表明,该方法相对于随机和独立具有清晰的边缘。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Honey Bee Behavior: A Multi-agent Approach for Multiple Campaigns Assignment Problem
This paper address a multi-agent approach using the behavior of honey bee to find out an optimal customer-campaign relationship under certain restrictions for the problem of multiple campaigns assignment. This NP-hard problem is one of the key issues in marketing when producing the optimal campaign. In personalized marketing it is very important to optimize the customer satisfaction and targeting efficiency. Using the behavior of honey bee a multi-agent approach is proposed to overcome the multiple recommendations problem that occur when several personalized campaigns conducting simultaneously. We measure the effectiveness of the propose method with two other methods known as RANDOM and INDEPENDENT using an artificially created customer-campaign preference matrix. Further a generalized Gaussian response suppression function is introduced and it differs among customer classes. An extensive simulation studies are carried out varying on the small to large scale of the customer-campaign assignment matrix and the percentage of recommendations. Computational result of the proposed method shows a clear edge vis-a-vis RANDOM and INDEPENDENT.
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