APPLICATION OF SUPERVISED LEARNING
UNSUPERVISED LEARNING
Question
[CLICK ON ANY CHOICE TO KNOW THE RIGHT ANSWER]
|
____ is not a model in clustering
|
Agglomerative HC
|
|
Divisive HC
|
|
k-Means
|
|
Random Forest
|
Explanation:
Detailed explanation-1: -The Random Forest Classifier In data science speak, the reason that the random forest model works so well is: A large number of relatively uncorrelated models (trees) operating as a committee will outperform any of the individual constituent models. The low correlation between models is the key.
Detailed explanation-2: -Model-based clustering is a statistical approach to data clustering. The observed (multivariate) data is considered to have been created from a finite combination of component models. Each component model is a probability distribution, generally a parametric multivariate distribution.
There is 1 question to complete.