Applying Genetic Programming for Time-Aware Dynamic QoS Prediction

Yang Syu, Yong-Yi Fanjiang, J. Kuo, Shang-Pin Ma
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引用次数: 9

Abstract

A common defect of most current QoS information exposed is that they are static and did not consider some facts (e.g., Different calling time points) that can cause the actual values of some types of QoS to vary. A solution for such issue is to develop a valid forecasting mechanism able to predict future dynamic QoS values. In the past, several such forecasting approaches already have been developed. However, many of them are based on fixed statistical models and the others' prediction generation process is not understandable and observable. In this paper, we propose to employ Genetic Programming (GP), which is a powerful predictor searching/learning paradigm with very great performance reports in many other forecasting applications and never being applied to dynamic QoS forecasting yet. In this work, we study applying GP to the defined time-aware QoS forecasting problem and we report our experiment results showing and verifying the applicability and performance of GP to the problem.
遗传规划在时间感知QoS动态预测中的应用
当前暴露的大多数QoS信息的一个共同缺陷是它们是静态的,并且没有考虑一些可能导致某些类型的QoS的实际值变化的事实(例如,不同的调用时间点)。该问题的解决方案是开发一种能够预测未来动态QoS值的有效预测机制。过去,已经发展了几种这样的预测方法。然而,其中许多是基于固定的统计模型,其他的预测生成过程是不可理解和不可观察的。遗传规划是一种强大的预测器搜索/学习范式,在许多其他预测应用中具有非常好的性能报告,但尚未应用于动态QoS预测。在这项工作中,我们研究了将GP应用于已定义的时间感知QoS预测问题,并报告了我们的实验结果,显示和验证了GP对该问题的适用性和性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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