--- title: SEScore datasets: - tags: - evaluate - metric description: "SEScore: a text generation evaluation metric" sdk: gradio sdk_version: 3.0.2 app_file: app.py pinned: false --- # Metric Card for SEScore ![alt text](https://huggingface.co/spaces/xu1998hz/sescore/blob/main/img/logo_sescore.png) ## Metric Description *SEScore is an unsupervised learned evaluation metric trained on synthesized dataset* ## How to Use *Provide simplest possible example for using the metric* ### Inputs *SEScore takes input of predictions (a list of candidate translations) and references (a list of reference translations).* ### Output Values *Output value is between 0 to -25* #### Values from Popular Papers ### Examples *Give code examples of the metric being used. Try to include examples that clear up any potential ambiguity left from the metric description above. If possible, provide a range of examples that show both typical and atypical results, as well as examples where a variety of input parameters are passed.* ## Limitations and Bias *Note any known limitations or biases that the metric has, with links and references if possible.* ## Citation *Cite the source where this metric was introduced.* ## Further References *Add any useful further references.*