期刊文献+

大规模定制下基于交互式遗传算法的谈判模型研究 被引量:1

To Study on Negotiation Model under the Mass Customization Based on Interactive Genetic Algorithm
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摘要 越来越多的企业已经认识到大规模定制是一种竞争策略,可以给企业带来竞争优势。随着大规模定制程度的提高,企业间对信息交互的及时性、有效性的要求也越来越高,企业迫切需要一种快速高效的谈判解决方案来适应大规模定制的需要。运用交互式遗传算法理论来建立谈判模型,以适应大规模定制的需要。 Mass customization, which can bring companies with competitive advantage, has been identified as a competitive strategy by an increasing number of companies. Mass customization has been realized the increasing demands in the timeliness and effectiveness of information interaction, and the urgent needs of the efficient negotiation solution for companies. This paper tries to get a good solution with a negotiation model based on interactive genetic algorithm.
出处 《价值工程》 2008年第10期100-103,共4页 Value Engineering
关键词 大规模定制 交互式遗传算法 谈判模型 mass customization interactive genetic algorithm negotiation Model
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参考文献11

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共引文献21

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