Eco 5385.701
Predictive Analytics for Economists
Summer 2014TTh 6:00 – 8:50 pm and Sat. 12:00 – 2:50 pm
First Day of Class: Tuesday, June 3
Last Day of Class: Tuesday, July 1
251 Maguire Building
This course is a follow-up to Eco 5350 Introductory Econometrics. Statistical methods used in engineering and computer science are introduced to complement the traditional economist’s toolbox of business and economics decision-making tools.
Purposes of Course:
There are several major purposes of this course. As the result of taking this course, the
student should have an understanding of:
- The basics of supervised learning – prediction and classification
- Prediction models including multiple linear regression, artificial neural networks, regression trees, K-nearest Neighbors
- Classification models including logit/probit models, classification trees,Naïve-Bayes models
- Model validation by means of data partitioning
- Methods of unsupervised learning – exploratory data analysis, principal components, cluster analysis, association rules
- Ensemble modeling
- How to use standard Data Mining Packages including XLMINER and SPSS Modeler
本帖隐藏的内容
Predictive Analytics for Economists.rar
(70.04 MB, 需要: 25 个论坛币)


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