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Ensemble Learning
Q.
Top 20 Interview Questions on Ensemble Learning with detailed Answers (All free)
Q.
What does Gradient in Gradient Boosted Trees refer to?
Q.
What is XGBoost? How does it improve upon standard GBM?
Q.
What is the difference between Adaboost and Gradient boost?
Q.
Distinguish between a Weak learner and a Strong Learner
Q.
What are the options for reporting feature importance from a decision-tree based model?
Q.
What are the best ways to safeguard against overfitting a GBM?
Q.
GBM vs Random Forest: which algorithm should be used when?
Q.
How is Gradient Boosting different from Random Forest?
Q.
What are the advantages and disadvantages of a GBM model?
Q.
What are the key hyperparameters for a GBM model?
Q.
What is Gradient Boosting (GBM)? Describe how does the Gradient Boosting algorithm work
Q.
What is the difference between Decision Trees, Bagging and Random Forest?
Q.
Why is Random Forest a non-linear model? Why does it result in non-linear decision boundaries?
Q.
What are the advantages and disadvantages of Random Forest?
Q.
What are the key hyperparameters for a Random Forest model?
Q.
Explain the concept and working of the Random Forest model
Q.
What is Bagging? How do you perform bagging and what are its advantages?
Q.
What are the advantages and disadvantages of Decision Tree model?
Q.
What is CART?
Q.
How does pruning a tree work?
Q.
How does a decision tree create splits from continuous features?
Q.
Explain the difference between Entropy, Gini, and Information Gain
Q.
What is a Decision Tree? Explain the concept and working of a Decision tree model
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Explore Questions by Topics
Computer Vision
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Data Preparation
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Feature Engineering
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Deep Learning
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Feedforward Network / MLP
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Sequence models
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Transformers
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DL Basics
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DL Training and Optimization
(17)
Generative AI
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Machine Learning Basics
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Natural Language Processing
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NLP Data Preparation
(18)
Statistics
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–
Classification
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Classification Evaluations
(9)
Ensemble Learning
(24)
Logistic Regression
(10)
Other Classification Models
(9)
Support Vector Machine
(9)
–
Regression
(41)
Generalized Linear Models
(9)
Linear Regression
(26)
Regularization
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–
Unsupervised Learning
(55)
–
Clustering
(37)
Clustering Evaluations
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Distance Measures
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Gaussian Mixture Models
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Dimensionality Reduction
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Other Questions in Ensemble Learning
What is Within Cluster Sum of Squares (WCSS)?
What are some approaches for modeling non linear relationships?
What is Kernel PCA?
What problems would arise from using a regular linear regression to model a binary outcome?
What is the problem with using a generic list of stop words?
What is Classification?