Questions
Questions

SP2025.B69.DAT.562.24 COMPLETE Quiz #2 AFTER VIDEO 1 - Sentiment Analysis Methods

Single choice

The supervised machine learning approach to sentiment analysis is based on:

Options
A.Online surveys
B.Text classification
C.Topic modeling
D.Lexicons
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The question asks about the supervised machine learning approach to sentiment analysis and what it is based on. Option 1: 'Online surveys' — This option describes a data collection method rather than a modeling approach. Sentiment analysis using supervised......Login to view full explanation

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