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---
language:
- en
- yo
- ha
- ig
- pcm
size_categories:
- 10K<n<100K
task_categories:
- text-classification
---
# Dataset Card for NaijaHate

<!-- Provide a quick summary of the dataset. -->

NaijaHate is a hate speech dataset tailored to the Nigerian context. It contains 35,976 annotated Nigerian tweets, including 29,999 tweets randomly sampled from Nigerian Twitter. For a complete description of the data, please refer to the [reference paper](https://arxiv.org/abs/2403.19260).

## Source Data

This dataset was sourced from a large Twitter dataset of 2.2 billion tweets posted between March 2007 and July 2023 and forming the timelines of 2.8 million Twitter users with a profile location in Nigeria.

## Dataset Structure

<!-- This section provides a description of the dataset fields, and additional information about the dataset structure such as criteria used to create the splits, relationships between data points, etc. -->

The dataset is made of four components detailed in the `dataset` column: two components used for training a hate speech model (`stratified` and `al`) and two components for model evaluation (`eval` and `random`). We detail each component below:
- `stratified`: 1,607 tweets collected through stratified sampling. We use both hate-related and community-related keywords as seeds.
- `al`: 2,405 tweets sampled through active learning
- `eval`: 1,965 tweets from the general Nigerian Twitter dataset and with high likelihood of being hateful according to 10 benchmarked hate speech classifiers
- `random`: 29,999 tweets randomly sampled from the general Nigerian Twitter dataset


## Annotation

We recruited a team of four Nigerian annotators, two female and two male, each of them from one of the four most populated Nigerian ethnic groups -- Hausa, Yoruba, Igbo and Fulani. 
We followed a prescriptive approach by instructing annotators to strictly adhere to extensive annotation guidelines describing our taxonomy of hate speech (see reference paper for full guidelines). 
Tweets are annotated as belonging to one of three classes: 
- hateful (`2` in the `class` column) if it contains an attack on an individual or a group based on the perceived possession of a certain characteristic (e.g., gender, race)
- offensive (`1` in the `class` column), if it contains a personal attack or an insult that does not target an individual based on their identity
- neutral (`0` in the `class` column) if it is neither hateful nor offensive.

If a tweet is labeled as hateful, it is also annotated for the communities being targeted. The possible target communities in our dataset are:
- Christians (`christian` column)
- Muslims (`muslim`)
- Northerners (`northerner`)
- Southerners (`southerner`)
- Hausas (`hausa`)
- Fulanis (`fulani`)
- Yorubas (`yoruba`)
- Igbos (`igbo`)
- Women (`women`)
- LGBTQ+ (`lgbtq+`)
- Herdsmen (`herdsmen`)
- Biafra (`biafra`)

Each tweet was labeled by three annotators. For the three-class annotation task, the 3 annotators agreed on 90\% of labeled tweets, 2 out of 3 agreed in 9.5\% of cases, and all three of them disagreed in 0.5\% of cases (Krippendorff's alpha = 0.7). 


## Language Composition

We further detail the share of each language by dataset component below:

|                                  | Stratified + active learning sets (%) | Random set (%) |
|----------------------------------|-----------------------------------|------------|
| English                          | 74.2                              | 77         |
| English & Nigerian Pidgin        | 11                                | 1.5        |
| English & Yoruba                 | 4.2                               | -          |
| Nigerian Pidgin                  | 3.6                               | 7.3        |
| English & Hausa                  | 2.2                               | -          |
| Hausa                            | 1                                 | 1.2        |
| Yoruba                           | -                                 | 1          |
| URLs                             | -                                 | 6          |
| Emojis                           | -                                 | 2.3        |

## BibTeX entry and citation information

Please cite the [reference paper](https://arxiv.org/abs/2403.19260) if you use this dataset.

```bibtex
@article{tonneau2024naijahate,
  title={NaijaHate: Evaluating Hate Speech Detection on Nigerian Twitter Using Representative Data},
  author={Tonneau, Manuel and de Castro, Pedro Vitor Quinta and Lasri, Karim and Farouq, Ibrahim and Subramanian, Lakshminarayanan and Orozco-Olvera, Victor and Fraiberger, Samuel},
  journal={arXiv preprint arXiv:2403.19260},
  year={2024}
}
```