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목록Learn from mistake (1)
How much am I expressed through the data
Semantic , Sentimental
Before, or when I first started studying about Natural Language Processing, I could see the term 'Semantic', 'Semantic analysis' in many references of the NLP. I initially thought 'semantic' means something heavily related to 'sentimental' which would mean related to people's emotion. And, I NAIVELY thought these two words: 'semantic' and 'sentimental' hold same meanings. I don't think there can..
100-day-challenge/Vocab
2022. 1. 25. 07:54