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Learner Reviews & Feedback for Topics in Applied Econometrics by Queen Mary University of London

About the Course

In this course, you will discover models and approaches that are designed to deal with challenges raised by the empirical econometric modelling and particular types of data. You will: – Explore the motivations of each approach by means of graphs, preliminary statistics and presentation of economic theories – Discuss the problem of identification of the parameters, and how to address this problem by modelling simultaneous equations and causality in economics. – Examine the key features of panel data, and highlight the advantages and disadvantages of working with panel data rather than other structures of data. – Learn how to choose what econometric specification to adopt by introducing the test for poolability and the Hausman tests. – Discuss models for probability that are used where the variable under investigation is qualitative, and needs to be treated with a different approach. – Learn how to apply this approach to building an Early Warning system to forecast systemic banking crises using data from the World Bank. It is recommended that you have completed and understood the previous two courses in this Specialisation: The Classical Linear Regression Model and Hypothesis Testing in Econometrics. By the end of this course, you will be able to: – Respond appropriately to issues raised by some feature of the data – Resolve address problems raised by identification and causality – Resolve problems raised by simultaneous equation and instrumental variables models – Resolve problems raised by longitudinal data – Resolve problems raised by probability models – Manipulate and plot the different types of data....
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1 - 4 of 4 Reviews for Topics in Applied Econometrics

By Asad S

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Aug 27, 2023

nice

By Maria P O P

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Feb 12, 2024

There is a disconnection between the reading materials and the R exercises. The videos don't add any insights and the math descriptions -particularly when dealing with matrices can be a bit complex-. The topics I already knew were fine, those I didn't, were extremely hard to understand with the materials provided and I had to look for additional resources. The practical examples in R could have been interesting if there was a discussion on how to interpret the results or what are the advantages/disadvantages of each model given the data, but there was nothing like that. The final assignment provides a dataset with around 100 variables with cryptic names and no information about what is they are, which makes it hard to complete the exercise. I would strongly recommend looking for a different course.

By Murray S

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Jun 30, 2022

Very disappointed with this course. It does not appear that anyone is actively monitoring the comments in the Discussion Forum. In Week 4, the labs do not work and no code or data is provided, contrary to the instructions that are given. I have reported the issues associated with the labs, and have received no response whatsoever. The lack of code or data makes it effectively impossible to complete the peer-reviewed assigment (and therefore the course). This is arguably the worst course that I have enrolled in at Coursera. I will be asking for a refund.

By Roxanne W

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Jul 13, 2023

the data file is a mess and no one can finish the last assessment without dictionary. A lot of student has comment that the team should provide a dictionary and everyone is just being ignored.