--- language: - en tags: - Text Classification --- ## This model is part of the Research topic "Bias and Fairness in AI" conducted by Shaina Raza, Deepak John Reji, Chen Ding - Dataset : MBAD Data - datasize : 17775 entries - Label distribution : Biased - 10651, Non-Biased - 7124 - Train-Test split : 90 : 10 - tokenizer : distilbert-base-uncased - model : distilbert-base-uncased - optimizer : adam - Learning rate : 5e-5 - Model parameters : 66,955,010 - epochs : 30 - Train accuracy : 0.7697 - Test accuracy : 0.62 - Train loss : 0.4506 - Test loss : 0.9644 - Carbon emission 0.319355 Kg widget: - text: "Is this review positive or negative? Review: Best cast iron skillet you will every buy." example_title: "Sentiment analysis" - text: "Barack Obama nominated Hilary Clinton as his secretary of state on Monday. He chose her because she had ..." example_title: "Coreference resolution" - text: "On a shelf, there are five books: a gray book, a red book, a purple book, a blue book, and a black book ..." example_title: "Logic puzzles" - text: "The two men running to become New York City's next mayor will face off in their first debate Wednesday night ..." example_title: "Reading comprehension"