基于马尔可夫预测和数据挖掘方法的自适应云定价策略

Huazheng Qin, Xing Wu, Ji Hou, Hanyu Wang, Wu Zhang, Wanchun Dou
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引用次数: 6

摘要

云计算作为一种新的IT技术正在蓬勃发展,越来越多的供应商正在提供与云计算相关的各种web服务。与此同时,各类用户的需求也在急剧上升。为了使收益最大化,迫切需要一个合适的定价模式。目前,大多数供应商采用静态定价,忽略了供给和需求的变化。由于web服务具有易访问性和可被大量用户使用的特点,提出了一种以收益最大化为目标的动态定价模型。我们的动态定价模型可以根据用户的需求自动调整资源的价格,包的定价基于Apriori算法。此外,动态定价模型还可以通过遗传退火算法进行调整和优化,以适应供需的变化。与静态定价模式相比,动态定价模式可以在相当程度上增加收益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Self-Adaptive Cloud Pricing Strategies with Markov Prediction and Data Mining Method
Cloud computing as a new IT technology is burgeoning and an increasing number of providers are offering various web services related to cloud computing. Meanwhile, the demands of different kinds of users are also rising sharply. In order to maximize the revenue, a proper pricing model is in desperate need. Nowadays, most of the providers are using static pricing which neglects the changes of supply and demand. Since the web services are easy to access and can be used by a large number of users, a dynamic pricing model aimed at maximizing the revenue is proposed. Our dynamic pricing model can automatically adjust the prices of resources according to the demands from users and the pricing for packages is based on Apriori Algorithm. Furthermore, the dynamic pricing model also can be adjusted and optimized by Genetic Annealing Algorithm so as to well adapt to the changes of Supply and demand. Compared with the static pricing model, the dynamic pricing model can increase the revenue to a considerable extent.
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