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Other Classification Models
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What is the difference between Discriminative and Generative models?
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How Does Naive Bayes Work?
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How does discriminant analysis work at a high level?
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What are the Pros/Cons of Naive Bayes?
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What are some pros and cons of Discriminant Analysis?
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How are continuous features incorporated into Naive Bayes?
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What is the difference between QDA and Gaussian Mixture Models (GMM)?
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What differentiates Linear Discriminant Analysis (LDA) from Quadratic Discriminant Analysis (QDA)?
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What happens if a category has a zero frequency within a class, and how is this issue commonly addressed (Naive Bayes)?
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Machine Learning Basics
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Transformers
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Other Questions in Other Classification Models
What are options to calibrate probabilities produced from the output of a classifier that does not produce natural probabilities?
What are the subtypes of Cross Validation?
What is Specificity?
Explain the concept and working of the Random Forest model
How does a learning curve give insight into whether the model is under- or over-fitting?
What is the difference between Discriminative and Generative models?