ST
Week 3 starts to get unreasonably difficult and hard to understand. Apart from that, the course is still worthwhile to take.
In this course, we will expand our exploration of statistical inference techniques by focusing on the science and art of fitting statistical models to data. We will build on the concepts presented in the Statistical Inference course (Course 2) to emphasize the importance of connecting research questions to our data analysis methods. We will also focus on various modeling objectives, including making inference about relationships between variables and generating predictions for future observations.
This course will introduce and explore various statistical modeling techniques, including linear regression, logistic regression, generalized linear models, hierarchical and mixed effects (or multilevel) models, and Bayesian inference techniques. All techniques will be illustrated using a variety of real data sets, and the course will emphasize different modeling approaches for different types of data sets, depending on the study design underlying the data (referring back to Course 1, Understanding and Visualizing Data with Python). During these lab-based sessions, learners will work through tutorials focusing on specific case studies to help solidify the week’s statistical concepts, which will include further deep dives into Python libraries including Statsmodels, Pandas, and Seaborn. This course utilizes the Jupyter Notebook environment within Coursera.
ST
Week 3 starts to get unreasonably difficult and hard to understand. Apart from that, the course is still worthwhile to take.
AA
The course was wonderful however, sometimes I felt that a little bit more details could be provided when python code was being explained for week 2.
EP
Great course. In my view, the lectures were too long and the assignments a bit easy. But, overall, great course.
TW
Good for advance topics like Marginal and Multilevel modelling. The Bayesian model could be explained in a detailed manner by providing more python assignments.
KR
These whole three certifications lays the foundation for learning Machine Learning a more in-depth way.
VO
Good course, but the last of three was the most difficult one. I hope that it were a good introduction to the fascinating world of statistics and data science
NU
The course is great, the only improvement I would make is to be a little more didactic in the last two units because it is a more complicated subject.
ST
It was very technical and a lot of the mathematics behind the models were not explained properly. The codes were also not explained properly
JK
Good course giving a fair view on fitting statistical models. Could do to elaborate on some of the theoretical models using more illustrations for more understanding.
KA
Just like the other courses in the specialization, very well thought out and planned! Up to date, great professors . . . couldn't ask for more!
FS
Overall, the course was a great refresher of statistical theory and application with some great Python exercises. However, some of the Python coding instruction itself could have been more detailed.
SM
A great introduction to regression and bayesian analysis in python. I get that the content is hard, but they sum it all well. I would recommend for those who have prior knowledge of statistics.