--- pretty_name: '`nfcorpus/dev/video`' viewer: false source_datasets: ['irds/nfcorpus'] task_categories: - text-retrieval --- # Dataset Card for `nfcorpus/dev/video` The `nfcorpus/dev/video` dataset, provided by the [ir-datasets](https://ir-datasets.com/) package. For more information about the dataset, see the [documentation](https://ir-datasets.com/nfcorpus#nfcorpus/dev/video). # Data This dataset provides: - `queries` (i.e., topics); count=102 - `qrels`: (relevance assessments); count=3,068 - For `docs`, use [`irds/nfcorpus`](https://huggingface.co/datasets/irds/nfcorpus) ## Usage ```python from datasets import load_dataset queries = load_dataset('irds/nfcorpus_dev_video', 'queries') for record in queries: record # {'query_id': ..., 'title': ..., 'desc': ...} qrels = load_dataset('irds/nfcorpus_dev_video', 'qrels') for record in qrels: record # {'query_id': ..., 'doc_id': ..., 'relevance': ...} ``` Note that calling `load_dataset` will download the dataset (or provide access instructions when it's not public) and make a copy of the data in 🤗 Dataset format. ## Citation Information ``` @inproceedings{Boteva2016Nfcorpus, title="A Full-Text Learning to Rank Dataset for Medical Information Retrieval", author = "Vera Boteva and Demian Gholipour and Artem Sokolov and Stefan Riezler", booktitle = "Proceedings of the European Conference on Information Retrieval ({ECIR})", location = "Padova, Italy", publisher = "Springer", year = 2016 } ```