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import copy |
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import pytest |
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@pytest.mark.parametrize('model', [('kmeans_pca_topic_model'), |
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('base_topic_model'), |
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('custom_topic_model'), |
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('merged_topic_model'), |
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('reduced_topic_model'), |
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('online_topic_model')]) |
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def test_topics(model, request): |
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topic_model = copy.deepcopy(request.getfixturevalue(model)) |
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fig = topic_model.visualize_topics() |
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for slider in fig.to_dict()["layout"]["sliders"]: |
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for step in slider["steps"]: |
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assert int(step["label"].split(" ")[-1]) != -1 |
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fig = topic_model.visualize_topics(top_n_topics=5) |
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for slider in fig.to_dict()["layout"]["sliders"]: |
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for step in slider["steps"]: |
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assert int(step["label"].split(" ")[-1]) != -1 |
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@pytest.mark.parametrize('model', [('kmeans_pca_topic_model'), |
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('base_topic_model'), |
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('custom_topic_model'), |
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('merged_topic_model'), |
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('reduced_topic_model'), |
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('online_topic_model')]) |
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def test_topics_outlier(model, request): |
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topic_model = copy.deepcopy(request.getfixturevalue(model)) |
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topic_model.topic_sizes_[-1] = 4 |
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fig = topic_model.visualize_topics() |
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for slider in fig.to_dict()["layout"]["sliders"]: |
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for step in slider["steps"]: |
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assert int(step["label"].split(" ")[-1]) != -1 |
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fig = topic_model.visualize_topics(top_n_topics=5) |
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for slider in fig.to_dict()["layout"]["sliders"]: |
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for step in slider["steps"]: |
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assert int(step["label"].split(" ")[-1]) != -1 |
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