toxi-text-3M / README.md
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metadata
license: mit
task_categories:
  - text-classification
  - token-classification
size_categories:
  - 1M<n<10M
datasets:
  - tomekkorbak/pile-toxicity-balanced2
  - datasets/thai_toxicity_tweet

About 11 months ago, I downloaded and preprocessed 2.7M rows of text data, but completely forgot the original source of these datasets... All I know is that I looked everywhere: HuggingFace, research papers, GitHub, Kaggle, and Google search. I even fetched 20K+ tweets using the Twitter API. Today (6/28/2023) I came across three newer HuggingFace datasets, so I added them to this dataset.

The deduplicated training data alone consists of 2,880,230 rows of comments and messages. Among these rows, 416,457 are classified as toxic, while the remaining 2,463,773 are considered neutral. Below is a table to illustrate the data composition:

Toxic Neutral Total
multilingual-train-deduplicated.csv 416,457 2,463,773 2,880,230
multilingual-validation.csv 1,230 6,770 8,000
multilingual-test.csv 14,410 49,402 63,812
Each CSV file has two columns: text and is_toxic.

Have fun modelling!