




已阅读5页,还剩19页未读, 继续免费阅读
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
Chap 3. Multiple Regression Analysis:Estimation,Advantages of multiple regression analysis build better models for predicting the dependent variable. E.g. generalize functional form. Marginal propensity to consume Be more amenable to ceteris paribus analysis Key assumption: Implication: other factors affecting wage are not related on average to educ and exper. Multiple linear regression model:,OLS Estimator,OLS: Minimize ceteris paribus interpretations: Holding fixed, then Thus, we have controlled for the variables when estimating the effect of x1 on y.,Holding Other Factors Fixed,The power of multiple regression analysis is that it provides this ceteris paribus interpretation even though the data have not been collected in a ceteris paribus fashion. it allows us to do in non-experimental environments what natural scientists are able to do in a controlled laboratory setting: keep other factors fixed.,OLS and Ceteris Paribus Effects,measures the effect of x1 on y after x2, xk have been partialled or netted out. Two special cases in which the simple regression of y on x1 will produce the same OLS estimate on x1 as the regression of y on x1 and x2. -The partial effect of x2 on y is zero in the sample. That is, - x1 and x2 are uncorrelated in the sample. -Example,data1: 1832 rural household reg consum laborage reg consum laborage financialK corr laborage financialK reg consum laborage reg consum laborage laboredu corr laborage laboredu,Goodness-of-fit,R-sq also equal the squared correlation coef. between the actual and the fitted values of y. R-sq never decreases, and it usually increases when another independent variable is added to a regression. The factor that should determine whether an explanatory variable belongs in a model is whether the explanatory variable has a nonzero partial effect on y in the population.,The Expectation of OLS Estimator,Assumption 1-4 Linear in parameters Random sampling Zero conditional mean No perfect co-linearity none of the independent variables is constant; and there are no exact linear relationships among the independent variables Theorem (Unbiasedness) Under the four assumptions above, we have:,Notice 1: Zero conditional mean,Exogenous Endogenous Misspecification of function form (Chap 9) Omitting the quadratic term The level or log of variable Omitting important factors that correlated with any independent v. Measurement Error (Chap 15, IV) Simultaneously determining one or more x-s with y (Chap 16) Try to use exogenous variable! (Geography, History),Omitted Variable Bias: The Simple Case,Omitted Variable Bias The true population model: The underspecified OLS line: The expectation of : (46),前面3.2节中是x1对x2回归,The expectation of , where the slope coefficient from the regression of x2 on x1, so then, Only two cases where is unbiased, , x2 does not appear in the true model; , x2 and x1 are uncorrelated in the sample;,前面3.2节中是x1对x2回归,Omitted variable bias:,Notice 2: No Perfect Collinearity,An assumption only about x-s, nothing about the relationship between u and x-s Assumption MLR.4 does allow the independent variables to be correlated; they just cannot be perfectly correlated If we did not allow for any correlation among the independent variables, then multiple regression would not be very useful for econometric analysis How to deal with collinearity problem? Drop correlated variable, respectively. (corr=0.7),Notice 3: Over-Specification,Inclusion of an irrelevant variable: does not affect the unbiasedness of the OLS estimators. including irrelevant variables can have undesirable effects on the variances of the OLS estimators.,Variance of The OLS Estimators,Assumption 5 Homoskedasticity: Gauss-Markov Assumptions (for cross-sectional regression): Assumption 1-5 Linear in parameters Random sampling Zero conditional mean No perfect co-linearity Homoskedasticity,Theorem (Sampling variance of OLS estimators) Under the five assumptions above:,More about,The statistical properties of y on x=(x1, x2, , xk) Error variance only one way to reduce the error variance: to add more explanatory variables not always possible and desirable (multi-collinearity) The total sample variations in xj: SSTj Increase the sample size,Multi-collinearity,The linear relationships among the independent v-s. 其他解释变量对xj的拟合优度(含截距项) If k=2: :the proportion of the total variation in xj that can be explained by the other independent variables High (but not perfect) correlation between two or more of the in dependent variables is called multicollinearity.,Small sample size,Small sample size Low SSTj one thing is clear: everything else being equal, for estimating , it is better to have less correlation between xj and the other V-s.,Notice: The influence of multi-collinearity,A high degree of correlation between certain independent variables can be irrelevant as to how well we can estimate other parameters in the model. x2和x3之间的高相关性并不直接影响x1的回归系数的方差,极端的情形就是X1和x2、x3都不相关。同时前面我们知道,增加一个变量并不会改变无偏性。在多重共线性的情形下,估计仍然无偏,我们关心的变量系数的方差也与其他变量之间的共线性没有直接关系,尽管方差会变化,只要t值仍然显著,共线性不是大问题。 How to “solve” the multi-collinearity? Dropping some v.? 如果删除了总体模型中的一个变量,则可能会导致内生性。,参见注释,Estimating : Standard Errors of the OLS Estimators,参见注释,df=number of observations-number of estimated parameters Theorem 3.3 Unbiased estimation of Under the Gauss-Markov Assumption, MLR 1-5,While the presence of heteroskydasticity does not cause bias in the , it does lead to bias in the usual formula for , which when then invalidates the standard errors. This is important because any regression package compute 3.58 as the default standard error for each coefficient.,Gauss-Markov Assumptions (for cross-sectional regression): 1. Linear i
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。
最新文档
- 基础桩基施工技术实施方案
- 智算中心扩建项目建设工程方案
- 探索货物运输合同中的环保责任与可持续发展战略
- 无共同财产且有子女抚养协议的离婚协议书
- 钢结构设计优化与分析
- 信息技术在护理教学模式创新中的应用研究
- 农机创新产品中试验证和熟化应用的策略及实施路径
- 2025-2032年新能源汽车出口至亚美尼亚市场竞争力报告
- 2025年生物质能源在分布式能源系统中的生物质发电与能源政策制定报告
- 2.4《气味告诉我们》教学设计-2024-2025学年科学一年级上册教科版
- 小针刀治疗的应急预案
- 业务外包作业人员培训管理办法
- 电梯五方通话布线方案
- 物理化学实验B智慧树知到课后章节答案2023年下北京科技大学
- 河南农业大学-毕业答辩PPT模板
- 技术类《核电站通用机械设备》第1部分(阀门)
- 田径运动会竞赛团体总分记录表
- 2023年一级建造师考试《建设工程法规及相关知识》真题及答案
- Analyst软件应用培训教程
- 匀变速直线运动的推论和比例式公开课一等奖市赛课一等奖课件
- 安庆时联新材料有限责任公司10000吨年抗氧剂系列产品及抗紫外线吸收剂生产项目环境影响报告
评论
0/150
提交评论