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題名:應用 Spline 迴歸與延伸線性混合效果模式於多層縱向資料分析之實例研究
書刊名:教育與心理研究
作者:葛湘瑋 引用關係
作者(外文):Ker, Hsiang-wei
出版日期:2008
卷期:31:1
頁次:頁133-154
主題關鍵詞:共變異模式多項式迴歸延伸線性混合效果模式縱向資料分析Spline 迴歸Covariance modelsExtended linear mixed-effects modelsLongitudinal data analysisPolynomial regressionsSpline regressions
原始連結:連回原系統網址new window
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  • 被引用次數被引用次數:期刊(0) 博士論文(0) 專書(0) 專書論文(0)
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  • 共同引用共同引用:3
  • 點閱點閱:34
縱向資料分析的目的常在於描述個人隨時間成長及改變的情形,研究若能辨識顯著改變發生的時間點及有受試者間變異的時間點,則可使研究者對個體成長發展過程作更深入的分析。以多項式迴歸或延伸線性混合效果模式,在測量時間點較多的縱向資料分析上有其理論與應用之限制。本研究主要目的在提出以spline迴歸與延伸線性混合效果模式結合的系統化分析方法,來分析測量時間點較多的縱向資料。希望能藉此協助找出重要改變發生的時間點與有受試者間變異的時間點,並將時間納入隨機效果的共變異矩陣,以及說明殘差的異質性與相依性的共變異模式。本研究以視覺搜尋資料作實例分析,並說明應用所發展的系統化分析方法於縱向資料分析的基本步驟與注意事項,包括選擇節點、選擇初始的固定效果模式、選擇具隨機效果的參數與其共變異矩陣模式、建立殘差結構及模式簡化等過程。
Longitudinal data consist of measurements on the same subject repeatedly over time. Such data typically posses a hierarchical structure that repeated measurements are nested within individuals. Longitudinal data with large numbers of time points typically have shifts in the shapes of relationship between performance over time at certain time points, differences between individuals, and dependence and heteroscedasticity in the residuals. These characteristics pose particular challenges to the development of methodologies for analyzing longitudinal data. Polynomial regressions are used for analyzing longitudinal data. However, there exist some limitations in utilizing polynomial regressions in analyzing longitudinal data. The residuals in longitudinal data often exhibit heteroscedasticity and dependence characteristics, which violate the assumptions of homogeneity and independence for multiple regressions. Moreover, the residuals need specific covariance models to describe the residual structure. If the number of occasions is large, the use of polynomial functions is inadequate to describe the whole model shifts for the entire time range because polynomial functions are globally determined in a small interval of time. As an alternative functional form, spline regressions can be fit to the sub-ranges of time with the adjacent functions joined together smoothly to adapt the whole model shift. The main objective of this study was to investigate a methodology that incorporate spline regressions with extended linear mixed-effects models (spline extended LMEs) in modeling multilevel longitudinal data with large number of time points. First the literature of spline regressions and extended linear mixed-effects models are first reviewed. Then a systematic approach which is generally applicable to modeling various multilevel longitudinal data with large number of time points is proposed. A detailed illustration of the proposed methodology is further demonstrated through reanalyzing the visual-search dataset of Peterson and Kramer (2001). Results indicate that spline extended LMEs are flexible in specifying the covariance models, can indicate the between-subjects variability that occurred at certain knots, as well as can incorporate them into variance-covariance structures for random effects. Several recommendations on the application of spline extended LMEs in longitudinal analysis, including the importance of visualization, knots placement, variability at knots, and the possibility of over parameterization, are discussed.
期刊論文
1.Laird, N. M.、Ware, J. H.(1982)。Random-effects models for longitudinal data。Biometrics,38,963-974。  new window
2.葛湘瑋(20040600)。應用線性混合效果模式於建立多層縱向資料的模式之實例研究。教育與心理研究,27(2),399-419。new window  延伸查詢new window
3.Louis, T. A.(1988)。General Methods for Analyzing Repeated Measures。Statistics in Medicine,7,19-45。  new window
4.Morrell, C. H.、Pearson, J. D.、Brant, L. J.(1997)。Linear Transformations of Linear Mixed-Effects Models。The American Statistician,51,338-343。  new window
5.Peterson, M. S.、Kramer, A. F.(2001)。Contextual Cueing Reduces Interference from Task-Irrelevant Onset Distractors。Visual Congition,8,843-859。  new window
6.Stone, C. J.(1986)。Comment on Hastie and Tibshirani。Statistical Science,1,312-314。  new window
7.Durrleman, S.、Simon, R.(1989)。Flexible Regression Models with Cubic Splines。Statistics in Medicine,8,551-561。  new window
8.Goldstein, H.、Healy, M. J. R.、Rasbash, J.(1994)。Multilevel Time Series Nodels with Application to Repeated Measures Data。Statistics in Medicine,13,1643-1655。  new window
9.Wold, S.(1974)。Spline Functions in Data Analysis。Technometrics,16,1-11。  new window
10.Smith, P. L.(1979)。Spline as a Useful and Convenient Statistical Tool。The American Statistician,33,57-62。  new window
11.Wegman, W. J.、Wright, I. W.(1983)。Splines in Statistics。Journal of the American Statistical Association,78,351-363。  new window
研究報告
1.Smith, P. L.(1982)。Curve Fitting and Modelling with Splines Using Statistical Variable Selection Techniques。0。  new window
2.Smith, P. L.、Klein, V.(1982)。The Selection of Knots in Polynomial Splines Using Stepwise Regression。0。  new window
圖書
1.Verbeke, G.、Molenberghs, G.(2010)。Linear mixed models for longitudinal data。New York, NY:Springer-Verlag。  new window
2.London, D.(1985)。Graduation: The Revision of Estimates。Graduation: The Revision of Estimates。Winsted, CT:ACTEX Publications。  new window
3.Wild, C. J.、Seber, George Arthur Frederick(1989)。Nonlinear Regression。New York:John Wiley & Sons。  new window
4.Pinheiro, J. C.、Bates, D. M.(2000)。Mixed-Effects Models in S and S-Plus。Mixedeffects Models in S and S-plus。New York, NY:Springer-Verlag。  new window
5.Vonesh, E. F.、Chinchilli, V. M.(1997)。Linear and Nonlinear Models for the Analysis of Repeated Measurements。Linear and Nonlinear Models for the Analysis of Repeated Measurements。New York, NY:Marcel Dekker, Inc.。  new window
6.Snijders, T.、Bosker, R.(1999)。Multilevel Analysis: An Introduction to Basic and Advanced Multilevel Modelling。Thousand Oaks, CA:Sage Publications。  new window
7.Box, George E. P.、Jenkins, Gwilym M.、Reinsel, Gregory C.(1994)。Time Series Analysis: Forecasting and Control。San Francisco, CA:Holden-Day。  new window
8.Hastie, T. J.、Tibshirani, R. J.(1990)。Generalized Additive Models。London:Chapman & Hall。  new window
9.Carlin, B. P.、Louis, T. A.(1996)。Bayes and Empirical Bayes Methods for Data Analysis。Bayes and Empirical Bayes Methods for Data Analysis。London, UK。  new window
10.Jones, R. H.(1993)。Longitudinal Data with Serial Correlation: A State-Space Approach。Longitudinal Data with Serial Correlation: A State-Space Approach。London, UK。  new window
11.Satorra, A.、Muthén, B. O.、Muthen, B.(1989)。Multilevel Aspects of Varying Parameters in Structural Models。Multilevel Analysis of Educational Data。San Diego。  new window
12.MathSoft Inc.(1999)。Splus 2000 User's Guide。Splus 2000 User's Guide。Seattle, WA。  new window
13.Venables, W. N.、Ripley, B. D.(1999)。Modern Applied Statistics with S-plus。Modern Applied Statistics with S-plus。New York, NY。  new window
14.MacCallum, R. C.、Kim, C.(2000)。Modeling Multivariate Change。Modeling Longitudinal and Multilevel Data: Practical Issues, Applied Approaches and Specific Examples。Mahwah, NJ。  new window
15.Hox, J. J.(2000)。Multilevel Analysis of Grouped and Longitudinal Data。Modeling Longitudinal and Multilevel Data: Practical Issues, Applied Approaches and Specific Examples。Mahwah, NJ。  new window
16.Bates, D. M.、Pinheiro, J. C.(1997)。Software Design for Longitudinal Data Analysis。Modeling Longitudinal and Spatially Correlated Data: Methods, Application and Further Direction。New York, NY。  new window
17.Insightful Corp.(2001)。S-plus 6 for Windows User's Guide。S-plus 6 for Windows User's Guide。Seattle, WA。  new window
其他
1.Hedeker, D.(2005)。Mixed Models for Longitudinal Data: An Applied Introduction,0。  new window
 
 
 
 
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