--- base_model: FacebookAI/roberta-large language: en license: apache-2.0 model_name: gender-marker-classifier pipeline_tag: text-classification tags: - CRS - OECD CRS - text-classification - lora - transformers funded_by: DEval - Deutsches Evaluierungsinstitut der Entwicklungszusammenarbeit gGmbH tasks: - text-classification shared_by: DEval - Deutsches Evaluierungsinstitut der Entwicklungszusammenarbeit gGmbH --- This model identifies the relevance of CRS projects to feminist development policy. It is trained on manually annotated CRS data and uses the Gender Marker classification. Labels 0, 1, and 2 represent whether a project has no, significant, or primary focus on feminist policy objectives, such as strengthening rights, resources, and representation (“3R”), advancing gender-transformative and intersectional approaches, or supporting the broader goals of feminist development policy. (CRS Gender Marker) ### Evaluation metrics | |precision|recall|f1-score|support| |--|--|--|--|--| |0|0.93|0.95|0.94|234| |1|0.82|0.68|0.74|34| |2|0.88|0.95|0.91|55| |3|0.70|0.62|0.66|34| |--|--|--|--|--| |accuracy| | |0.89|357| |macro|avg|0.83|0.80|0.81|357| |weighted|avg|0.89|0.89|0.89|357| ### Usage ```python## How to Use ```python from transformers import AutoModelForSequenceClassification, AutoTokenizer model = AutoModelForSequenceClassification.from_pretrained("namespace/my-model") tokenizer = AutoTokenizer.from_pretrained("namespace/my-model") inputs = tokenizer("hello world", return_tensors="pt") outputs = model(**inputs) print(outputs)" ``` or ```python from transformers import TextClassificationPipeline model = TextClassificationPipeline("namespace/my-model") outputs = model("Hello World!") print(outputs)" ``` ```