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Meaningful Predictive Modeling

Meaningful Predictive Modeling

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8.5/10 (Our Score)
Product is rated as #128 in category Data Science

This course will help us to evaluate and compare the models we have developed in previous courses. So far we have developed techniques for regression and classification, but how low should the error of a classifier be (for example) before we decide that the classifier is “good enough”? Or how do we decide which of two regression algorithms is better? By the end of this course you will be familiar with diagnostic techniques that allow you to evaluate and compare classifiers, as well as performance measures that can be used in different regression and classification scenarios. We will also study the training/validation/test pipeline, which can be used to ensure that the models you develop will generalize well to new (or “unseen”) data.

Instructor Details

McAuley has been an Assistant Professor in the Computer Science Department at the University of California, San Diego since 2014. Previously he was a postdoctoral scholar at Stanford University after receiving his PhD from the Australian National University in 2011. His research is concerned with developing predictive models of human behavior using large volumes of online activity data.

Specification: Meaningful Predictive Modeling

Duration

10 hours

Year

2019

Level

Intermediate

Certificate

Yes

Quizzes

Yes

3 reviews for Meaningful Predictive Modeling

3.7 out of 5
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  1. Surendar R

    Peer review system HAS TO CHANGE, IT IS VERY POOR currently – As I type this review, I am waiting for my assignment review for around a weeks time now, no luck in getting any feedback no matter how many threads you make or post in discussion forums like mentioned in FAQs. This peer review system of having 3 reviews to complete the course has to change to 1 peer review for completion of the course. There is no point in making a learner wait for 7–10 days time without providing any kind of feedback. I put the same comment for Course 2 & I am iterating the same comment/suggestion once again in course 3.

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  2. Oriol P M

    Great course

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  3. ILYA S

    Excellent content, but presentation is a bit challenging at times.

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