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Other Classification Models
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What is the difference between Discriminative and Generative models?
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What are some pros and cons of Discriminant Analysis?
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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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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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How are continuous features incorporated into Naive Bayes?
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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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How Does Naive Bayes Work?
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Other Questions in Other Classification Models
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?