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Home » Quiz » Machine Learning Quiz

Which NLP technique is often employed to extract structured information from unstructured medical notes?

Difficulty level
  • Sentiment Analysis
  • Named Entity Recognition
  • Part-of-Speech Tagging
  • Machine Translation
Named Entity Recognition is an NLP technique used to identify and categorize entities (e.g., drugs, diseases) within unstructured medical text.
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Machine Learning Quiz
Quiz
In Gaussian Mixture Models, the "mixture" refers to the combination of ________ Gaussian distributions.
Which term describes a model that has been trained too closely to the training data and may not perform well on new, unseen data?

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