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synthetic emotion dataset for emotional analysis#369
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davchuks wants to merge 19 commits intoGopher-Industries:masterfrom
Open
synthetic emotion dataset for emotional analysis#369davchuks wants to merge 19 commits intoGopher-Industries:masterfrom
davchuks wants to merge 19 commits intoGopher-Industries:masterfrom
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…re/messaging-system Feature/messaging system
- Added new dataset file for emotion analysis
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Description
This pull request introduces a new synthetic dataset, emotion.csv, for emotion analysis tasks. This dataset was generated locally using a Large Language Model (LLM) to simulate realistic emotional scenarios and associated data points. The data is entirely synthetic and does not contain any real patient information.
The dataset includes columns such as patientid, age, gender, observationStart, observationEnd, nursingNote, medications, various physiological measurements, and emotionTags. This dataset is valuable for a variety of machine learning applications, including emotion detection from clinical notes and sentiment analysis of patient status.