Skip to Contents

Categorical Data Analsys

  • Add Bookmark
    • Category : Social Sciences > Social Sciences
    • Keyword : Categorical,Nominal,Ordinal,Tables,Data
    • Taught by : Namhyoung Kim
    • Created By : Gachon University
    • Offered By : KOCW
    • Date Added : 2016.12.26

    This course provides an introduction to methods for analyzing categorical dataIt emphasizes the ideas behind the methodsand their interpretationsrather than the theory behind themMost methods for categorical data analysis require extensivecomputationsThe use of SAS statistical software will be discussed.

    Creative Commons License
    This work is licensed under a
    Creative Commons
    Attribution-NonCommercial-NoDerivs 4.0
    International License
    .
    • User Rating :
    • Comments : 0
    • Hits : 699

Number of lessons: 14 facebook twitter line whatsapp kakaotalk

차시별 강의
No Contents Type & Play Subject Description URL
1. Type docunent Subject Description
  • Basic concepts which is for categorical data analsys
Url
URL
2. Type docunent Subject Description
  • Two-way table, sample proportion, relative risk
Url
URL
3. Type docunent Subject Description
  • The Odds Ratio
Url
URL
4. Type docunent Subject Description
  • Testing Independence for Ordinal Data
Url
URL
5. Type docunent Subject Description
  • Three-way tables
Url
URL
6. Type docunent Subject Description
  • Generalized Linear Models
Url
URL
7. Type docunent Subject Description
  • Generalized Linear Models for Count Data
Url
URL
8. Type docunent Subject Description
  • Interpreting the Logistic Regression Model
Url
URL
9. Type docunent Subject Description
  • Logistic Regression with Categorical Predictors
Url
URL
10. Type docunent Subject Description
  • Multiple Logistic Regression
Url
URL
11. Type docunent Subject Description
  • Strategies in Model Selection
Url
URL
12. Type docunent Subject Description
  • Model Checking
Url
URL
13. Type docunent Subject Description
  • Logit Models For Nominal Responses
Url
URL
14. Type docunent Subject Description
  • Cumulative Logit Models for Ordinal Responses
Url
URL