Datasets documentation

Evaluate predictions

You are viewing main version, which requires installation from source. If you'd like regular pip install, checkout the latest stable version (v2.18.0).
Hugging Face's logo
Join the Hugging Face community

and get access to the augmented documentation experience

to get started

Evaluate predictions

Metrics is deprecated in 🤗 Datasets. To learn more about how to use metrics, take a look at the library 🤗 Evaluate! In addition to metrics, you can find more tools for evaluating models and datasets.

🤗 Datasets provides various common and NLP-specific metrics for you to measure your models performance. In this section of the tutorials, you will load a metric and use it to evaluate your models predictions.

You can see what metrics are available with list_metrics():

>>> from datasets import list_metrics
>>> metrics_list = list_metrics()
>>> len(metrics_list)
28
>>> print(metrics_list)
['accuracy', 'bertscore', 'bleu', 'bleurt', 'cer', 'comet', 'coval', 'cuad', 'f1', 'gleu', 'glue', 'indic_glue', 'matthews_correlation', 'meteor', 'pearsonr', 'precision', 'recall', 'rouge', 'sacrebleu', 'sari', 'seqeval', 'spearmanr', 'squad', 'squad_v2', 'super_glue', 'wer', 'wiki_split', 'xnli']

Load metric

It is very easy to load a metric with 🤗 Datasets. In fact, you will notice that it is very similar to loading a dataset! Load a metric from the Hub with load_metric():

>>> from datasets import load_metric
>>> metric = load_metric('glue', 'mrpc')

This will load the metric associated with the MRPC dataset from the GLUE benchmark.

Select a configuration

If you are using a benchmark dataset, you need to select a metric that is associated with the configuration you are using. Select a metric configuration by providing the configuration name:

>>> metric = load_metric('glue', 'mrpc')

Metrics object

Before you begin using a Metric object, you should get to know it a little better. As with a dataset, you can return some basic information about a metric. For example, access the inputs_description parameter in datasets.MetricInfo to get more information about a metrics expected input format and some usage examples:

>>> print(metric.inputs_description)
Compute GLUE evaluation metric associated to each GLUE dataset.
Args:
    predictions: list of predictions to score.
        Each translation should be tokenized into a list of tokens.
    references: list of lists of references for each translation.
        Each reference should be tokenized into a list of tokens.
Returns: depending on the GLUE subset, one or several of:
    "accuracy": Accuracy
    "f1": F1 score
    "pearson": Pearson Correlation
    "spearmanr": Spearman Correlation
    "matthews_correlation": Matthew Correlation
Examples:
    >>> glue_metric = datasets.load_metric('glue', 'sst2')  # 'sst2' or any of ["mnli", "mnli_mismatched", "mnli_matched", "qnli", "rte", "wnli", "hans"]
    >>> references = [0, 1]
    >>> predictions = [0, 1]
    >>> results = glue_metric.compute(predictions=predictions, references=references)
    >>> print(results)
    {'accuracy': 1.0}
    ...
    >>> glue_metric = datasets.load_metric('glue', 'mrpc')  # 'mrpc' or 'qqp'
    >>> references = [0, 1]
    >>> predictions = [0, 1]
    >>> results = glue_metric.compute(predictions=predictions, references=references)
    >>> print(results)
    {'accuracy': 1.0, 'f1': 1.0}
    ...

Notice for the MRPC configuration, the metric expects the input format to be zero or one. For a complete list of attributes you can return with your metric, take a look at MetricInfo.

Compute metric

Once you have loaded a metric, you are ready to use it to evaluate a models predictions. Provide the model predictions and references to compute():

>>> model_predictions = model(model_inputs)
>>> final_score = metric.compute(predictions=model_predictions, references=gold_references)