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목록NLP (2)
How much am I expressed through the data
stemming
' However, in some cases, the stemming process produces words that are not correct spellings of the root word.' ' ex) happi and sunni. That's because it chooses the most common stem for related words. -- ' 1. In terms of probablities ? (I meant to say observed cases.) #Copyrights:This screenshot is part of the Coursera's Natural Language Processing Specialization by DeepLearning.ai
Internship/UMichigan Research - 2021 Summer
2021. 12. 24. 11:25
NLP idea
Express the level of emotions in either positive or negative through the level of some color feature as following. (i.e) positive : light green -> green -> dark green negative : light red -> red -> dark red #Copyrights:This screenshot is part of the Coursera's Natural Language Processing Specialization by DeepLearning.ai
Data Science/TODOs
2021. 12. 23. 06:12