This course will teach you how to start from scratch in understanding and paying attention to what is important in the data and how to answer questions about data
Overview
Syllabus
- Lesson 1 - Intro to the QMV Process
- Lesson 2 - The Questioning Phase
- Lesson 3 - The Modeling Phase
- Lesson 4 - The Validation Phase
- Final Project
Taught by
Rishi Pravahan and Don Dini
Tags
Reviews
2.0 rating, based on 6 Class Central reviews
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Model Building and Validation is an advanced data science course provided by AT&T through the Udacity MOOC platform. The course is listed as "advanced" because it assumes prior knowledge of machine learning, statistics, linear algebra and calculus.…
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The content of this course sometimes is completely inaccurate from the standpoint of probability theory and statistics. In the second lesson the instructor does some very strange curve fitting to get maximum likelihood estimates for the parameters of something he believes to be probability density function. IMHO, nor his fitting attempts had anything to do with maximum likelihood, neither (by the end of the lesson) the fitted curve estimated any kind of probability density function.
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Don Dini seems to be completely clueless in what he does. For example, when in the end of the second lesson he estimates model with k-nearest neighbours, he modifies the problem in a very strange way and generates almost 1.5 million. new datapoints from initial population of several thousand observations . These new datapoints differ from initial only slightly. So KNN works equally great on the test and on the training set, because Don randomly splits them only after generating 1.5 million almost identical datapoints. So it is a kind of regressing sin(x) on cos(x), only somewhat more obscure.
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Dont bother. this course is really more about the authors demoing what they can do rather then actually explaining or teaching anything. very little value for the time invested. you'l find better material for this subject on coursera.
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