Deep understanding of PCA
$8-15 USD / hour
I want to learn PCA in depth, initial questions which I want to address are:
1. What is Eigen Vector, Eigen Values and Eigen Matrix?
2. How we extract Eigen Vector and Values (good examples)
3. How PCA preserve similarities (distances)?
4. How curse of dimensionality affect PCA?
5. How PCA extract High variance in the first PC components?
6. What normalization techniques we use to normalize the data before PCA?
7. What are projections?
8. What are pros and cons of PCA?
9. A small working example of PCA in any good analysis software like excel to elaborate the concepts
10. I also want to know some good applications of PCA.
Project ID: #13607749
About the project
11 freelancers are bidding on average $18/hour for this job
Hi I am a very experienced statistician and academic writer. I have completed several PhD level thesis projects involving advanced statistical analysis of data. I have worked with data from several companies and have d More
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I can teach you and provide you examples about PCA. I am an electrical engineer and have worked in the field of pattern recognition that uses PCA techniques Regards
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