相关数据对预测能力影响的研究

IF 0.8 4区 物理与天体物理 Q3 PHYSICS, MULTIDISCIPLINARY
Ui-Jung Hwang, Jeong-Eun Rah
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引用次数: 0

摘要

本研究的目的是为日常质量保证(QA)系统设计一个不受相关时间序列数据特定模式影响的预测模型。在瓦里安直线加速器(LINAC)系统的 6 MV 光子束的日常质量保证过程中,所有数据都是在 5 年的特定时间从测量的输出因子中采样的。在构建预测结构之前,进行了自相关函数 (ACF) 分析,以验证给定时间序列数据的相关性。这项研究确定了用于预测的自回归综合移动平均(ARIMA)和非线性自回归(NAR)神经网络模型的最佳配置。此外,研究还利用相关时间序列数据来评估其对预测能力的影响。然后,我们将实际质量保证值与所选的 ARIMA 和 NAR 模型对每日采样输出的预测值进行了比较。我们的研究结果表明,ARIMA 模型提供了一种快速且相对简单的方法,无需复杂的计算方法,而 NAR 模型则优于 ARIMA 模型,尤其是在相关时间序列数据的情况下,这证明了它作为预测模型的真正临床实用性。这一结果揭示了日常质量保证数据中经常出现的相关性。我们得出结论,这些相关性会严重影响根据历史观察结果预测机器行为的准确性。因此,分析特定模式和相关数据对于设计预测结构至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A study on the effect of correlated data on predictive capabilities

A study on the effect of correlated data on predictive capabilities

The purpose of this study is to design a predictive model for a daily quality assurance (QA) system that remains unaffected by specific patterns in correlated time series data. All data were sampled from the measured output factor at specific times over a 5-year period during the daily QA process for a 6 MV photon beam of the Varian linear accelerator (LINAC) system. Before constructing predictive structures, an autocorrelation function (ACF) analysis was conducted to verify the correlation of the given time series data. This study determined the optimal configuration for the autoregressive integrated moving average (ARIMA) and nonlinear autoregressive (NAR) neural network models for prediction. Additionally, it utilized correlated time series data to evaluate its impact on the predictive capability. We then compared the actual QA values to those predicted by the selected ARIMA and NAR models for the sampled daily output. Our findings suggest that while the ARIMA model offers a quick and relatively easy approach without requiring complex computational methods, the NAR model outperforms ARIMA, especially in the context of correlated time series data, demonstrating its real clinical utility as a prediction model. This result reveals that correlations are frequently observed in daily QA data. We concluded that these correlations can substantially influence the accuracy of machine behavior predicted based on historical observations. Consequently, analyzing specific patterns and correlated data is imperative for designing predictive structures.

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来源期刊
Journal of the Korean Physical Society
Journal of the Korean Physical Society PHYSICS, MULTIDISCIPLINARY-
CiteScore
1.20
自引率
16.70%
发文量
276
审稿时长
5.5 months
期刊介绍: The Journal of the Korean Physical Society (JKPS) covers all fields of physics spanning from statistical physics and condensed matter physics to particle physics. The manuscript to be published in JKPS is required to hold the originality, significance, and recent completeness. The journal is composed of Full paper, Letters, and Brief sections. In addition, featured articles with outstanding results are selected by the Editorial board and introduced in the online version. For emphasis on aspect of international journal, several world-distinguished researchers join the Editorial board. High quality of papers may be express-published when it is recommended or requested.
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