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README.md
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license: apache-2.0
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language: en
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tags:
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- hate
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- speech
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widget:
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- text: "RT @ShenikaRoberts: The shit you hear about me might be true or it might be faker than the bitch who told it to ya ᙨ"
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---
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# Dataset Collection:
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* The hatespeech dataset is collected from different open sources like Kaggle ,social media like Twitter.
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* The dataset has the two classes hatespeech and non hatespeech.
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* The class distribution is equal
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* Different strategies have been followed during the data gathering phase.
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* The dataset is collected from relevant sources.
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# distilbert-base-uncased model is fine-tuned for Hate Speech Detection
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* The model is fine-tuned on the dataset.
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* This model can be used to create the labels for academic purposes or for industrial purposes.
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* This model can be used for the inference purpose as well.
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# Data Fields:
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**label**: 0 - it is a hate speech, 1 - not a hate speech
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# Application:
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* This model is useful for the detection of hatespeech in the tweets.
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* There are numerous situations where we have tweet data but no labels, so this approach can be used to create labels.
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* You can fine-tune this model for your particular use cases.
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# Model Implementation
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# !pip install transformers[sentencepiece]
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from transformers import pipeline
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model_name="Sakil/distilbert_lazylearner_hatespeech_detection"
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classifier = pipeline("text-classification",model=model_name)
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classifier("!!! RT @mayasolovely: As a woman you shouldn't complain about cleaning up your house. & as a man you should always take the trash out...")
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# Github: [Sakil Ansari](https://github.com/Sakil786/
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---
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license: apache-2.0
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language: en
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tags:
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+
- hate
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+
- speech
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7 |
+
|
8 |
+
widget:
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+
- text: "RT @ShenikaRoberts: The shit you hear about me might be true or it might be faker than the bitch who told it to ya ᙨ"
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+
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---
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+
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# Dataset Collection:
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* The hatespeech dataset is collected from different open sources like Kaggle ,social media like Twitter.
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15 |
+
* The dataset has the two classes hatespeech and non hatespeech.
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16 |
+
* The class distribution is equal
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17 |
+
* Different strategies have been followed during the data gathering phase.
|
18 |
+
* The dataset is collected from relevant sources.
|
19 |
+
|
20 |
+
# distilbert-base-uncased model is fine-tuned for Hate Speech Detection
|
21 |
+
* The model is fine-tuned on the dataset.
|
22 |
+
* This model can be used to create the labels for academic purposes or for industrial purposes.
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23 |
+
* This model can be used for the inference purpose as well.
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+
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+
# Data Fields:
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+
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**label**: 0 - it is a hate speech, 1 - not a hate speech
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28 |
+
|
29 |
+
# Application:
|
30 |
+
* This model is useful for the detection of hatespeech in the tweets.
|
31 |
+
* There are numerous situations where we have tweet data but no labels, so this approach can be used to create labels.
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+
* You can fine-tune this model for your particular use cases.
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+
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# Model Implementation
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# !pip install transformers[sentencepiece]
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from transformers import pipeline
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model_name="Sakil/distilbert_lazylearner_hatespeech_detection"
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+
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classifier = pipeline("text-classification",model=model_name)
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+
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classifier("!!! RT @mayasolovely: As a woman you shouldn't complain about cleaning up your house. & as a man you should always take the trash out...")
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# Github: [Sakil Ansari](https://github.com/Sakil786/sentence_similarity_semantic_search)
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