Editing UW Statistics Courses

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CS&SS and 581 cover pretty much all the econometrics useful for applied empirical research. Applied courses in CSSS will be more useful for learning about time series, longitudinal, count data and so on. ECON582 is on nonparametric models and ECON583 and ECON 584 are "Econometric Theory I and II" and will be excellent but only really for folks building new econometric theories. Most students taking 583 and 584 will be PhD students in the ECON department specializing in methods. 580 is great. 581 is good, but CS&SS 503 and 510 should cover the most useful stuff in 581 except you won't do the proofs yourself. If you are seriously considering taking 583 or 584 you might also consider switching to a PhD in economics. :)
CS&SS and 581 cover pretty much all the econometrics useful for applied empirical research. Applied courses in CSSS will be more useful for learning about time series, longitudinal, count data and so on. ECON582 is on nonparametric models and ECON583 and ECON 584 are "Econometric Theory I and II" and will be excellent but only really for folks building new econometric theories. Most students taking 583 and 584 will be PhD students in the ECON department specializing in methods. 580 is great. 581 is good, but CS&SS 503 and 510 should cover the most useful stuff in 581 except you won't do the proofs yourself. If you are seriously considering taking 583 or 584 you might also consider switching to a PhD in economics. :)


== Other Topics ==
'''Machine Learning:'''
 
=== Machine Learning ===
 
Sometimes statistical inference is very hard. Prediction is often easier and sometimes predicting an outcome can be a useful contribution. Prediction and is also useful for constructing variables (e.g. content analysis). Supervised machine learning is essentially giving up on inference and focusing on prediction. "Unsupervised machine learning" (i.e. clustering) can be very useful for operationalization.  
Sometimes statistical inference is very hard. Prediction is often easier and sometimes predicting an outcome can be a useful contribution. Prediction and is also useful for constructing variables (e.g. content analysis). Supervised machine learning is essentially giving up on inference and focusing on prediction. "Unsupervised machine learning" (i.e. clustering) can be very useful for operationalization.  


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