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"""TODO: Add a description here.""" |
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import evaluate |
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import datasets |
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from Levenshtein import distance as lev |
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_CITATION = """\ |
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@InProceedings{huggingface:module, |
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title = {A great new module}, |
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authors={huggingface, Inc.}, |
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year={2020} |
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} |
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""" |
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_DESCRIPTION = """\ |
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This new module is designed to solve this great ML task and is crafted with a lot of care. |
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""" |
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_KWARGS_DESCRIPTION = """ |
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Calculates how good are predictions given some references, using certain scores |
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Args: |
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predictions: list of predictions to score. Each predictions |
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should be a string with tokens separated by spaces. |
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references: list of reference for each prediction. Each |
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reference should be a string with tokens separated by spaces. |
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Returns: |
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accuracy: description of the first score, |
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another_score: description of the second score, |
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Examples: |
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Examples should be written in doctest format, and should illustrate how |
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to use the function. |
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>>> my_new_module = evaluate.load("my_new_module") |
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>>> results = my_new_module.compute(references=[0, 1], predictions=[0, 1]) |
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>>> print(results) |
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{'accuracy': 1.0} |
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""" |
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BAD_WORDS_URL = "http://url/to/external/resource/bad_words.txt" |
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@evaluate.utils.file_utils.add_start_docstrings(_DESCRIPTION, _KWARGS_DESCRIPTION) |
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class charmatch(evaluate.Metric): |
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"""TODO: Short description of my evaluation module.""" |
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def _info(self): |
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return evaluate.MetricInfo( |
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module_type="metric", |
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description="Charmatch", |
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citation="", |
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inputs_description="input expected output", |
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features=datasets.Features({ |
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'inputs': datasets.Value('string'), |
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'expected': datasets.Value('string'), |
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'outputs': datasets.Value('string') |
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}), |
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homepage="http://module.homepage", |
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codebase_urls=["http://github.com/path/to/codebase/of/new_module"], |
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reference_urls=["http://path.to.reference.url/new_module"] |
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) |
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def _download_and_prepare(self, dl_manager): |
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"""Optional: download external resources useful to compute the scores""" |
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pass |
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def _compute(self, inputs, expected, outputs): |
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def calculate_metric(t, dl_sh, dl_sg): |
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precision = sum(t) / sum(dl_sh) |
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recall = sum(t) / sum(dl_sg) |
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f_05 = (1 + 0.5**2) * ((precision * recall) / (0.5**2 * precision + recall)) |
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return f_05 |
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def get_score(input, expected, output): |
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expected_corrections = lev(input, expected) |
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distance_to_input = lev(input, output) |
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distance_to_expected = lev(output, expected) |
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true_positives = min(expected_corrections, max(0, (expected_corrections + distance_to_input - distance_to_expected)) / 2) |
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return true_positives, distance_to_input, expected_corrections |
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t_list = [] |
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dl_sh_list = [] |
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dl_sg_list = [] |
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for row in zip(inputs, expected, outputs): |
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score = get_score(*row) |
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t_list.append(score[0]) |
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dl_sh_list.append(score[1]) |
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dl_sg_list.append(score[2]) |
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avg = calculate_metric(t_list, dl_sh_list, dl_sg_list) |
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return { |
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"charmatch": avg |
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} |
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