分层回归分析.doc_第1页
分层回归分析.doc_第2页
分层回归分析.doc_第3页
分层回归分析.doc_第4页
分层回归分析.doc_第5页
已阅读5页,还剩1页未读 继续免费阅读

下载本文档

版权说明:本文档由用户提供并上传,收益归属内容提供方,若内容存在侵权,请进行举报或认领

文档简介

分层回归分析2007-12-08 14:55:16|分类: 专业补充 |标签: |字号大中小订阅 Hierarchical Regression Analysis In a hierarchical multiple regression, the researcher decides not only how many predictors to enter but also the order in which they enter. Usually, the order of entry is based on logical or theoretical considerations. There are three predictor variables and one criterion variable in the following data set. A researcher decided the order of entry is X1, X2, and X3. SPSS for Windows 1. Enter Data. 2. Choose Analyze / Regression / Linear. Dependent: Select y and move it to the Dependent variable list. First, click on the variable y. Next, click on the right arrow. Block 1 of 1 Independent(s): Choose the first predictor variable x1 and move it to the Independent(s) box. Next, click the Next button as shown below. Block 2 of 2 Click the predictor variable x2 and move it to the Independent(s) box. Next, click the Next button as shown below. Block 3 of 3 Click the predictor variable x3 and move it to the Independent(s) box. 3. Click the Statistics button. Check R squared change. Click Continue and OK. SPSS Output 1. R square Change R Square and R Square ChangeOrder of EntryModel 1 : Enter X1Model 1: R square = .25The predictor X1 alone accounts for 25% of the variance in Y. R2 = .25 Model 2 : Enter X2 next.Model 2: R square = .582The Increase in R square: . 582 - .25 = .332The predictor X2 accounts for 33% of the variance in Y after controlling for X1. R2 = .25 + .332 = .582 Model Three: Enter X3 thirdModel 3: R square = .835The Increase in R square: . 835 - .582 = .253The predictor X3 accounts for 25% of the variance in Y, after X1 and X2 were partialed out from X3. R2 = .25 + .332 + .253 = .835 About 84% of the variance in the criterion variable was explained by the first (25%), second (33%) and third (25%) predictor variables. 2. Adjusted R SquareFor our example, there are only five subjects. However, there are three predictors. Recall that R square may be overestimated when the data sets have few cases (n) relative to number of predictors (k). Data sets with a small sample size and a large number of predictors will have a greater difference between the obtained and adjusted R square (.25 vs. .000, .582 vs. .165, and .835 vs. .338).3. F Change and Sig. F ChangeIf the R square change associated with a predictor variable in question is large, it means that the predictor variable is a good predictor of the criterion variable.In the first step, enter the predictor variable x1 first. This resulted in an R square of .25, which was not statistically significant (F Change = 1.00, p .05). In the second step, we add x2. This increased the R square by 33%, which was not statistically significant (F Change = 1.592, p .05). In the third step, we add x3. This increased the R square by an additional 25%, which was not statistically significant (F Change = 1.592, p .05).4. ANOVA TableModel1:About 25% (2.5/10 = .25) of the variance in the criterion variable (Y) can be accounted for by X1. The first model, which includes one predictor variable ( X1), resulted in an F ratio of 1.000 with a p .05.Model 2About 58% (5.82/10 = .58) of the variance in the criterion variable (Y) can be accounted for by X1 and X2. The second model, which includes two predictors (X1 and X2), resulted in an F ratio of 1.395 with a p .05.Model 3:About 84% (8.346/10 = .84) of the variance in the criterion variable (Y) can be accounted for by all three predictors (X1,

温馨提示

  • 1. 本站所有资源如无特殊说明,都需要本地电脑安装OFFICE2007和PDF阅读器。图纸软件为CAD,CAXA,PROE,UG,SolidWorks等.压缩文件请下载最新的WinRAR软件解压。
  • 2. 本站的文档不包含任何第三方提供的附件图纸等,如果需要附件,请联系上传者。文件的所有权益归上传用户所有。
  • 3. 本站RAR压缩包中若带图纸,网页内容里面会有图纸预览,若没有图纸预览就没有图纸。
  • 4. 未经权益所有人同意不得将文件中的内容挪作商业或盈利用途。
  • 5. 人人文库网仅提供信息存储空间,仅对用户上传内容的表现方式做保护处理,对用户上传分享的文档内容本身不做任何修改或编辑,并不能对任何下载内容负责。
  • 6. 下载文件中如有侵权或不适当内容,请与我们联系,我们立即纠正。
  • 7. 本站不保证下载资源的准确性、安全性和完整性, 同时也不承担用户因使用这些下载资源对自己和他人造成任何形式的伤害或损失。

评论

0/150

提交评论