roman_urdu_hate_speech

Referensi:

Kasar_Berbutir

Gunakan perintah berikut untuk memuat kumpulan data ini di TFDS:

ds = tfds.load('huggingface:roman_urdu_hate_speech/Coarse_Grained')
  • Keterangan :
The Roman Urdu Hate-Speech and Offensive Language Detection (RUHSOLD) dataset is a  Roman Urdu dataset of tweets annotated by experts in the relevant language.  The authors develop the gold-standard for two sub-tasks.  First sub-task is based on binary labels of Hate-Offensive content and Normal content (i.e., inoffensive language).  These labels are self-explanatory.  The authors refer to this sub-task as coarse-grained classification.  Second sub-task defines Hate-Offensive content with  four labels at a granular level.  These labels are the most relevant for the demographic of users who converse in RU and  are defined in related literature. The authors refer to this sub-task as fine-grained classification.  The objective behind creating two gold-standards is to enable the researchers to evaluate the hate speech detection  approaches on both easier (coarse-grained) and challenging (fine-grained) scenarios.
  • Lisensi : Lisensi MIT
  • Versi : 1.1.0
  • Perpecahan :
Membelah Contoh
'test' 2002
'train' 7208
'validation' 800
  • Fitur :
{
    "tweet": {
        "dtype": "string",
        "id": null,
        "_type": "Value"
    },
    "label": {
        "num_classes": 2,
        "names": [
            "Abusive/Offensive",
            "Normal"
        ],
        "id": null,
        "_type": "ClassLabel"
    }
}

Halus_Berbutir

Gunakan perintah berikut untuk memuat kumpulan data ini di TFDS:

ds = tfds.load('huggingface:roman_urdu_hate_speech/Fine_Grained')
  • Keterangan :
The Roman Urdu Hate-Speech and Offensive Language Detection (RUHSOLD) dataset is a  Roman Urdu dataset of tweets annotated by experts in the relevant language.  The authors develop the gold-standard for two sub-tasks.  First sub-task is based on binary labels of Hate-Offensive content and Normal content (i.e., inoffensive language).  These labels are self-explanatory.  The authors refer to this sub-task as coarse-grained classification.  Second sub-task defines Hate-Offensive content with  four labels at a granular level.  These labels are the most relevant for the demographic of users who converse in RU and  are defined in related literature. The authors refer to this sub-task as fine-grained classification.  The objective behind creating two gold-standards is to enable the researchers to evaluate the hate speech detection  approaches on both easier (coarse-grained) and challenging (fine-grained) scenarios.
  • Lisensi : Lisensi MIT
  • Versi : 1.1.0
  • Perpecahan :
Membelah Contoh
'test' 2002
'train' 7208
'validation' 7208
  • Fitur :
{
    "tweet": {
        "dtype": "string",
        "id": null,
        "_type": "Value"
    },
    "label": {
        "num_classes": 5,
        "names": [
            "Abusive/Offensive",
            "Normal",
            "Religious Hate",
            "Sexism",
            "Profane/Untargeted"
        ],
        "id": null,
        "_type": "ClassLabel"
    }
}