Zhe Wang, Zhen Wang, Jianwen Wu, Wangzhong Xiao, Yidong Chen, Zihua Feng, Dian Yang, Hongchen Liu, Bo Liang, Jiaojiao Fu
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The ability of performance\nfeatures and profiles to describe the real-time performance status of devices\nwas understood and studied by applying the TOPSIS method and multi-level\nweighting processing. A time series model was constructed for the feature set\nunder objective weighting, and multiple sensitivity (real-time, short-term,\nlong-term) performance status perception results were provided to obtain\nreal-time performance evaluation data and long-term stable performance\nprediction data. Finally, by configuring dynamic AB experiments and overlaying\nfine-grained power reduction strategies, the usability of the method was\nverified, and the accuracy of device performance status identification and\nprediction was compared with the performance of the profile features including\ndimensionality reduction time series modeling, TOPSIS method and entropy\nweighting method, subjective weighting, HMA method. The results show that\naccurate real-time performance perception results can greatly enhance business\nvalue, and this research has application effectiveness and certain\nforward-looking significance.","PeriodicalId":501291,"journal":{"name":"arXiv - CS - Performance","volume":"2 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-09-05","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Application Research On Real-Time Perception Of Device Performance Status\",\"authors\":\"Zhe Wang, Zhen Wang, Jianwen Wu, Wangzhong Xiao, Yidong Chen, Zihua Feng, Dian Yang, Hongchen Liu, Bo Liang, Jiaojiao Fu\",\"doi\":\"arxiv-2409.03218\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"In order to accurately identify the performance status of mobile devices and\\nfinely adjust the user experience, a real-time performance perception\\nevaluation method based on TOPSIS (Technique for Order Preference by Similarity\\nto Ideal Solution) combined with entropy weighting method and time series model\\nconstruction was studied. 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Finally, by configuring dynamic AB experiments and overlaying\\nfine-grained power reduction strategies, the usability of the method was\\nverified, and the accuracy of device performance status identification and\\nprediction was compared with the performance of the profile features including\\ndimensionality reduction time series modeling, TOPSIS method and entropy\\nweighting method, subjective weighting, HMA method. 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引用次数: 0
摘要
为了准确识别移动设备的性能状态并精细调整用户体验,研究了一种基于 TOPSIS(Technique for Order Preference by Similarityto Ideal Solution)的实时性能感知评估方法,该方法结合了熵权法和时间序列模型构建。在收集了各种移动设备的性能特征后,利用 PCA(主成分分析)降维法和描述性时间序列分析等特征工程方法拟合了设备的性能轮廓。通过应用 TOPSIS 方法和多级加权处理,了解和研究了性能特征和轮廓对设备实时性能状态的描述能力。在客观加权下,为特征集构建了时间序列模型,并提供了多种灵敏度(实时、短期、长期)性能状态感知结果,从而获得了实时性能评估数据和长期稳定性能预测数据。最后,通过配置动态 AB 实验和叠加细粒度功耗降低策略,验证了该方法的可用性,并与降维时间序列建模、TOPSIS 法和熵权法、主观加权法、HMA 法等轮廓特征的性能比较了设备性能状态识别和预测的准确性。结果表明,准确的实时性能感知结果可以大大提升商业价值,该研究具有应用实效性和一定的前瞻性意义。
Application Research On Real-Time Perception Of Device Performance Status
In order to accurately identify the performance status of mobile devices and
finely adjust the user experience, a real-time performance perception
evaluation method based on TOPSIS (Technique for Order Preference by Similarity
to Ideal Solution) combined with entropy weighting method and time series model
construction was studied. After collecting the performance characteristics of
various mobile devices, the device performance profile was fitted by using PCA
(principal component analysis) dimensionality reduction and feature engineering
methods such as descriptive time series analysis. The ability of performance
features and profiles to describe the real-time performance status of devices
was understood and studied by applying the TOPSIS method and multi-level
weighting processing. A time series model was constructed for the feature set
under objective weighting, and multiple sensitivity (real-time, short-term,
long-term) performance status perception results were provided to obtain
real-time performance evaluation data and long-term stable performance
prediction data. Finally, by configuring dynamic AB experiments and overlaying
fine-grained power reduction strategies, the usability of the method was
verified, and the accuracy of device performance status identification and
prediction was compared with the performance of the profile features including
dimensionality reduction time series modeling, TOPSIS method and entropy
weighting method, subjective weighting, HMA method. The results show that
accurate real-time performance perception results can greatly enhance business
value, and this research has application effectiveness and certain
forward-looking significance.