課程資訊
課程名稱
社會科學統計方法專題
Statistical Methods for the Social Science 
開課學期
102-2 
授課對象
社會科學院  政治學研究所  
授課教師
黃心怡 
課號
PS7002 
課程識別碼
322 M3900 
班次
 
學分
全/半年
半年 
必/選修
必修 
上課時間
星期二2,3,4(9:10~12:10) 
上課地點
社科28 
備註
碩班必修:公共行政、比較政治。
限碩士班以上
總人數上限:35人
外系人數限制:5人 
Ceiba 課程網頁
http://ceiba.ntu.edu.tw/1022PS7002spring 
課程簡介影片
 
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課程概述

In this course, I will give a graduate level of introduction to regression models, which are commonly used in policy research, political science, and many other social science fields. This course focuses on linear regression models with interval variables (mostly cross-sectional analysis). The course starts with descriptive statistics. We will learn the basic properties of estimators, hypothesis testing, and the uses of many varieties of independent variables. We will also discuss the casual modeling as a way of understanding the inter-relationships among variables and of understanding why regression coefficients change. Then, the course will cover statistical inference, discussing the assumptions behind the classical linear regression models. Finally, we discuss the implications of a variety of violations of the classical assumptions. The course will cover some basic concept of time-series model and limited variable models.
The course consists of lectures, discussions, exams, and homework assignments. We all know that the best policy to learn statistics is by doing it. Hence, there will be computer assignments to give you practical experience with using STATA and applying the statistical techniques. There will be one article summaries/critiques and one manuscript review assignment, intended to prepare you for a typical task by academics.
 

課程目標
協助同學具有完成碩(博)士論文之基本統計能力,包括如何尋找對的資料、分析資料,及正確地解釋資料。 
課程要求
1. 課前閱讀、課後複習
2. 作業準時繳交 (遲交一日分數打一折)
3. 上課手機需關機
 
預期每週課後學習時數
 
Office Hours
每週三 15:00~17:00 
指定閱讀
Wooldridge, J., Introductory Econometrics: A Modern Approach, 5th Ed, South-Western. (華泰代理)
 
參考書目
羅清俊 (社會科學研究方法:打開天窗說量化),第二版,威仕曼文化
 
評量方式
(僅供參考)
   
課程進度
週次
日期
單元主題
第1週
2/18  Introduction to statistic concepts 
第2週
2/25  Introduction to Stata and bivariate relationships 
第3週
3/04  Multiple regressions: estimation and interpretation 
第4週
3/11  Interaction terms and curvilinear relationships
Normal distribution 
第5週
3/18  Strength of Relationships 
第6週
3/25  Causal Modeling 
第7週
4/01  Regression Inference & Confidence Interval
Wooldridge Ch3&part of Ch4 
第8週
4/08  Hypothesis Testing & Omitted Variable issues 
第9週
4/15  Midterm Exam  
第10週
4/22  Multiple Regression: Asymptotics 
第11週
4/29  Multiple Regression: Further issues 
第12週
5/06  Heteroskedasticity & Multicollinearity 
第13週
5/13  Instrumental Variable 
第14週
5/20  No Class 
第15週
5/27  Time-Series Analysis 
第16週
6/03  Limited dependent variable models 
第17週
6/10  Catch Up/Review 
第18週
06/17  Final Exam