EWDLL: Software Aging State Identification based on LightGBM-LR Hybrid Model

Xueyong Tan, J. Liu
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Abstract

Android systems are prone to software aging due to the accumulation of numerical errors and storage-related bugs during long-term operation, resulting in gradual performance degradation and sudden system hang-ups. Thus, it is very critical to accurately identify the aging state for improving the running reliability of Android systems. In this paper, we propose a novel software aging state identification method, named EWDLL. It first introduces the exponential Weibull distribution to simulate the aging state transfer process of the Android system, then it uses Fuzzy Analytical Hierarchy Process (FAHP) to weight the model parameters and resource utilization parameters. Finally, the weighted dataset is fed into the LightGBM-LR model to identify the software state. The experimental results show that our EWDLL method performs better in identifying the software aging state for Android system, i.e., it is 0.86% to 1.09% higher in identification accuracy than the pure LightGBM-LR model, about 10.00% and 4.54% to 4.95% higher than the traditional models KNN and RF, and 1.97% to 3.09% higher than single LightGBM model. Compared with the LR model, it has a maximum accuracy improvement of about 33.29% to 35.64%.
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基于LightGBM-LR混合模型的软件老化状态识别
Android系统在长期运行过程中,由于数值误差和存储相关bug的积累,容易出现软件老化,导致性能逐渐下降,系统突然挂起。因此,准确识别老化状态对于提高Android系统的运行可靠性至关重要。本文提出了一种新的软件老化状态识别方法EWDLL。首先引入指数威布尔分布来模拟Android系统的老化状态转移过程,然后利用模糊层次分析法(FAHP)对模型参数和资源利用参数进行加权。最后,将加权后的数据集输入LightGBM-LR模型进行软件状态识别。实验结果表明,EWDLL方法对Android系统软件老化状态的识别效果较好,识别准确率比单纯的LightGBM- lr模型提高0.86% ~ 1.09%,比传统的KNN和RF模型分别提高10.00%和4.54% ~ 4.95%,比单一的LightGBM模型提高1.97% ~ 3.09%。与LR模型相比,最大准确率提高约33.29% ~ 35.64%。
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