Machine learning quiz questions TRUE or FALSE with answers, important machine learning interview questions for data science, Top 5 machine learning question set
Machine Learning TRUE / FALSE Questions - SET 09
1. Variance of a model typically decreases as the number of features increases.
(a)
TRUE                                                   (b) FALSE
View Answer
Answer: FALSE 
You can reduce
  High variance, by reducing the number of features in the model. There are
  several methods available to check which features don’t add much value to the
  model and which are of importance. Increasing the size of the training set
  can also help the model generalize. Decreasing the degree of the polynomial
  can help decrease the model complexity and fix the problem of high variance. 
 | 
 
2. In stochastic gradient descent, we take steps in the exact direction of the gradient vector.
(a)
TRUE                                                   (b) FALSE
View Answer
Answer: FALSE 
In stochastic
  gradient descent, we take steps in the opposite
  direction of the gradient vector. 
 | 
 
3. In kernelized SVMs, the kernel matrix K has to be positive definite.
(a)
TRUE                                                   (b) FALSE
View Answer
Answer: FALSE 
In kernelized
  SVMs, the kernel matrix K has to be positive
  semi-definite. 
The kernel
  function in a standard SVM produces a similarity kernel matrix over samples,
  which is required to be positive semi-definite (needs to have non-negative
  eigen values). This positive semi-definite property of the kernel matrix
  ensures the SVMs can be efficiently solved using convex quadratic
  programming.  
Asymmetric matrix
  is positive semi-definite, if its eigen values are all non-negative. 
 | 
 
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