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What are the pros and cons of using Support Vector Machines in classification tasks?

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  • Explain advantages and drawbacks of SVM.
  • What are the pros and cons of using Support Vector Machines in classification tasks?
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  • Could you discuss the favorable and less favorable features of Support Vector Machines?
  • In what scenarios are SVMs advantageous, and when do they fall short?
  • What makes SVMs a preferred choice in some cases, and what are their shortcomings?
  • Can you detail the advantages and potential pitfalls of applying SVM in various data scenarios?

Interview question asked to Machine Learning Engineers interviewing at Duolingo, Yelp, StubHub and others: What are the pros and cons of using Support Vector Machines in classification tasks?.