Answered step by step
Verified Expert Solution
Link Copied!

Question

1 Approved Answer

In the course, you learned about different techniques for dimensionality reductions that embed high dimensional data into a low dimensional space. Explain in at most

In the course, you learned about different techniques for dimensionality reductions that embed high dimensional data into a low dimensional space.
Explain in at most 50 words, how PCA and tSNE approach dimensionality reduction respectively. Name one disadvantage for each of the methods, again using a maximum of 50 words.
Why is it important to normalize the data before applying PCA?
Given a dataset of n observations xinRnp and a column wise mean of zero, the first principal component is the direction of maximum variance in the data, i.e.
argmaxwinRp,||w||=11ni=1n(j=1pwjxi,j)2.
Show that the first principal component also corresponds to the eigenvector with the largest eigenvalue of the covariance matrix xTx of the data.
image text in transcribed

Step by Step Solution

There are 3 Steps involved in it

Step: 1

blur-text-image

Get Instant Access to Expert-Tailored Solutions

See step-by-step solutions with expert insights and AI powered tools for academic success

Step: 2

blur-text-image

Step: 3

blur-text-image

Ace Your Homework with AI

Get the answers you need in no time with our AI-driven, step-by-step assistance

Get Started

Recommended Textbook for

Big Data, Mining, And Analytics Components Of Strategic Decision Making

Authors: Stephan Kudyba

1st Edition

1466568704, 9781466568709

More Books

Students also viewed these Databases questions