跟踪时间序列数据中估计窗口的大小

IF 1.7 4区 计算机科学 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
Tae Yeon Kwon
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引用次数: 0

摘要

本文介绍了一种新方法--基于方差规则的窗口大小跟踪(VR-WT),用于推导估算窗口大小序列。这种方法不仅能识别结构变化点,还能确定估计窗口的最佳大小。VR-WT 旨在实现精确的模型估算,其通用性足以适用于各学科的一系列模型。设计/方法/途径 本文提出了一种名为 "基于方差规则的窗口尺寸跟踪"(VR-WT)的新方法,该方法可得出一系列估算窗口尺寸。研究结果蒙特卡罗模拟研究表明,VR-WT 能准确检测结构变化点并选择合适的窗口大小。在对模型参数进行准确估计并推断其值、符号和重要性至关重要的应用中,VR-WT 至关重要。VR-WT 还帮助我们理解了基于参数的推断的变化,确保了跨时期的稳定性,并强调了市场冲击的时间和影响在不同领域和数据集之间的差异。VR-WT 专注于精确的参数估计。通过动态跟踪窗口大小,VR-WT 可灵活选择窗口大小,实现结构变化的可视化。VR-WT 的第二个特点在于其广泛的适用性和多功能性。我们在三个研究领域进行了实证应用:CAPM;全球股票市场之间的相互依存分析;以及随时间变化的能源价格研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tracking the size of the estimation window in time-series data

Purpose

This paper introduces a novel method, Variance Rule-based Window Size Tracking (VR-WT), for deriving a sequence of estimation window sizes. This approach not only identifies structural change points but also ascertains the optimal size of the estimation window. VR-WT is designed to achieve accurate model estimation and is versatile enough to be applied across a range of models in various disciplines.

Design/methodology/approach

This paper proposes a new method named Variance Rule-based Window size Tracking (VR-WT), which derives a sequence of estimation window sizes. The concept of VR-WT is inspired by the Potential Scale Reduction Factor (PSRF), a tool used to evaluate the convergence and stationarity of MCMC.

Findings

Monte Carlo simulation study demonstrates that VR-WT accurately detects structural change points and select appropriate window sizes. The VR-WT is essential in applications where accurate estimation of model parameters and inference about their value, sign, and significance are critical. The VR-WT has also helped us understand shifts in parameter-based inference, ensuring stability across periods and highlighting how the timing and impact of market shocks vary across fields and datasets.

Originality/value

The first distinction of the VR-WT lies in its purpose and methodological differences. The VR-WT focuses on precise parameter estimation. By dynamically tracking window sizes, VR-WT selects flexible window sizes and enables the visualization of structural changes. The second distinction of VR-WT lies in its broad applicability and versatility. We conducted empirical applications across three fields of study: CAPM; interdependence analysis between global stock markets; and the study of time-dependent energy prices.

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来源期刊
Data Technologies and Applications
Data Technologies and Applications Social Sciences-Library and Information Sciences
CiteScore
3.80
自引率
6.20%
发文量
29
期刊介绍: Previously published as: Program Online from: 2018 Subject Area: Information & Knowledge Management, Library Studies
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