Тёмный

Normality, Linearity, Multicollinearity, Homoscedasticity, Outliers and Other Assumption in SPSS 

Mella Tutorials
Подписаться 13 тыс.
Просмотров 3,5 тыс.
50% 1

1. Univariate outliers examined by standardized z scores and need to be within ± 3.29 range.
2. Normality assumption for the responses tested through the values of skewness and kurtosis, where the values need to be found within ±1 and ±3 respectively.
3. To check the linearity assumption, regression analysis was performed and the scatter plot of residuals revealed that multivariate relationship was linear.
4. To check for multicollinearity, Multicollinearity is normally checked at Variance inflation factors (VIF) for each variable. Analysis of collinearity statistics shows this assumption has been met, as VIF scores were below 10, and tolerance scores above 0.2
5. The values of residual are independent. The Durbin-Watson statistic showed that this assumption had been met, as obtained value was close to 2
6. The variance of the residual is constant. In this study plot of standardized residual vs. standardized predicted values showed no sign of funneling, suggesting the assumption of homoscedasticity has been met. In addition to that According to Tabachnick and Fidell (2007) Homoscedasticity is related to normality and when the normality assumption is met the relationship between the variables is said to be homoscedastic

Опубликовано:

 

19 сен 2024

Поделиться:

Ссылка:

Скачать:

Готовим ссылку...

Добавить в:

Мой плейлист
Посмотреть позже
Комментарии : 4   
@XtraWord
@XtraWord Месяц назад
Could you provide an English translation, that would be great
@Firehiwot-u8b
@Firehiwot-u8b 3 месяца назад
Good
@mihretwolde869
@mihretwolde869 Месяц назад
can we check for outliers using multinomial logit model?
@mella_tutorials
@mella_tutorials Месяц назад
Yes, you can. Even if it's some what challenging,
Далее
Regression Analysis in Amharic #ethiopia
28:53
Просмотров 21 тыс.
Bike Vs Tricycle Fast Challenge
00:43
Просмотров 46 млн
Testing Assumptions for Multiple Regression using SPSS
21:57