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---
language:
- ms
size_categories:
- 1K<n<10K
pretty_name: Cyberbully Dataset for Bahasa Malaysia
---
# Dataset Card for MYBully
MYBully is a manually and HITL-annotated dataset of social media posts in Bahasa Malaysia (with some code-mixed English), designed for multiple text classification tasks including cyberbullying detection, hate speech detection, sentiment analysis, and emotion recognition.
## Uses
- Training and evaluation of classification models for cyberbullying detection.
- Benchmarking multitask NLP models for low-resource languages (Malay).
- Cross-task learning (transfer from sentiment/emotion to bullying-related tasks).
## Dataset Structure
1. Instances: 4,680 tweets
- 2,687 manually annotated
- 1,993 annotated via Human-in-the-Loop (HITL) strategy
2. Tasks:
- Cyberbullying (binary/multi-label)
- Hate Speech (binary)
- Sentiment (positive/neutral/negative)
- Emotion (e.g., anger, joy, sadness, fear, neutral)
3. Each instance includes:
- Tweet
- Sentiment: *Positive, Negative or Neutral*
- Emotion: *Anger, Disgust, Neutral, Sadness, Fear, Surprise, Happiness*
- Bully: *Yes, No*
- Hate: *Yes, No*
- anno_type (To indicate, if record is Manually Annotated or HITL-Based Annotation): *manual, hitl*
*More details will be shared soon* |