--- language: - en thumbnail: https://cogcomp.seas.upenn.edu/images/logo.png tags: - text-classification - bart - xsum license: cc-by-sa-4.0 datasets: - xsum widget: - text: " Ban Ki-moon was elected for a second term in 2007. Ban Ki-Moon was re-elected for a second term by the UN General Assembly, unopposed and unanimously, on 21 June 2011." - text: " Ban Ki-moon was elected for a second term in 2011. Ban Ki-Moon was re-elected for a second term by the UN General Assembly, unopposed and unanimously, on 21 June 2011." --- # bart-faithful-summary-detector ## Model description A BART (base) model trained to classify whether a summary is *faithful* to the original article. See our [paper in NAACL'21](https://www.seas.upenn.edu/~sihaoc/static/pdf/CZSR21.pdf) for details. ## Usage Concatenate a summary and a source document as input (note that the summary needs to be the **first** sentence). Here's an example usage (with PyTorch) ```python from transformers import AutoTokenizer, AutoModelForSequenceClassification tokenizer = AutoTokenizer.from_pretrained("CogComp/bart-faithful-summary-detector") model = AutoModelForSequenceClassification.from_pretrained("CogComp/bart-faithful-summary-detector") article = "Ban Ki-Moon was re-elected for a second term by the UN General Assembly, unopposed and unanimously, on 21 June 2011." bad_summary = "Ban Ki-moon was elected for a second term in 2007." good_summary = "Ban Ki-moon was elected for a second term in 2011." bad_pair = tokenizer(text=bad_summary, text_pair=article, return_tensors='pt') good_pair = tokenizer(text=good_summary, text_pair=article, return_tensors='pt') bad_score = model(**bad_pair) good_score = model(**good_pair) print(good_score[0][:, 1] > bad_score[0][:, 1]) # True, label mapping: "0" -> "Hallucinated" "1" -> "Faithful" ``` ### BibTeX entry and citation info ```bibtex @inproceedings{CZSR21, author = {Sihao Chen and Fan Zhang and Kazoo Sone and Dan Roth}, title = {{Improving Faithfulness in Abstractive Summarization with Contrast Candidate Generation and Selection}}, booktitle = {NAACL}, year = {2021} } ```