winvoker's picture
Create README.md
dff8640
|
raw
history blame
847 Bytes
---
language:
- "tr"
tags:
- "sentiment-analysis"
license: "CC-BY-SA-4.0"
datasets:
- dataset1
- dataset2
metrics:
- metric1
- metric2
---
# Dataset
This dataset contains positive , negative and notr sentences from several data sources given in the references. In the most sentiment models , there are only two labels; positive and negative. However , user input can be totally notr sentence. For such cases there were no data I could find. Therefore I created this dataset with 3 class. Positive and negative sentences are listed below.
# References
- https://www.kaggle.com/burhanbilenn/duygu-analizi-icin-urun-yorumlari
- https://github.com/fthbrmnby/turkish-text-data
- https://www.kaggle.com/mustfkeskin/turkish-wikipedia-dump
- https://github.com/ezgisubasi/turkish-tweets-sentiment-analysis
- http://humirapps.cs.hacettepe.edu.tr/