Difference between revisions of "Dimensional Reduction"

From
Jump to: navigation, search
Line 20: Line 20:
 
To identify the most important [[Feature Exploration/Learning | Features]] to address:
 
To identify the most important [[Feature Exploration/Learning | Features]] to address:
  
* computing  
+
* reduce the amount of computing resources required
 
* 2D & 3D intuition often fails in higher dimensions
 
* 2D & 3D intuition often fails in higher dimensions
 
* distances tend to become relatively the 'same' as the number of dimensions increases
 
* distances tend to become relatively the 'same' as the number of dimensions increases

Revision as of 07:11, 5 April 2020

Youtube search... ...Google search


To identify the most important Features to address:

  • reduce the amount of computing resources required
  • 2D & 3D intuition often fails in higher dimensions
  • distances tend to become relatively the 'same' as the number of dimensions increases



Related:

Some datasets may contain many variables that may cause very hard to handle. Especially nowadays data collecting in systems occur at very detailed level due to the existence of more than enough resources. In such cases, the data sets may contain thousands of variables and most of them can be unnecessary as well. In this case, it is almost impossible to identify the variables which have the most impact on our prediction. Dimensional Reduction Algorithms are used in this kind of situations. It utilizes other algorithms like Random Forest, Decision Tree to identify the most important variables. 10 Machine Learning Algorithms You need to Know | Sidath Asir @ Medium