| import numpy as np |
| import pandas as pd |
|
|
| try: |
| from pandas.io.formats.style import Styler |
| HAS_JINJA = True |
| except (ModuleNotFoundError, ImportError): |
| HAS_JINJA = False |
|
|
|
|
| def visualize_approximate_distribution(topic_model, |
| document: str, |
| topic_token_distribution: np.ndarray, |
| normalize: bool = False): |
| """ Visualize the topic distribution calculated by `.approximate_topic_distribution` |
| on a token level. Thereby indicating the extend to which a certain word or phrases belong |
| to a specific topic. The assumption here is that a single word can belong to multiple |
| similar topics and as such give information about the broader set of topics within |
| a single document. |
| |
| NOTE: |
| This fuction will return a stylized pandas dataframe if Jinja2 is installed. If not, |
| it will only return a pandas dataframe without color highlighting. To install jinja: |
| |
| `pip install jinja2` |
| |
| Arguments: |
| topic_model: A fitted BERTopic instance. |
| document: The document for which you want to visualize |
| the approximated topic distribution. |
| topic_token_distribution: The topic-token distribution of the document as |
| extracted by `.approximate_topic_distribution` |
| normalize: Whether to normalize, between 0 and 1 (summing to 1), the |
| topic distribution values. |
| |
| Returns: |
| df: A stylized dataframe indicating the best fitting topics |
| for each token. |
| |
| Examples: |
| |
| ```python |
| # Calculate the topic distributions on a token level |
| # Note that we need to have `calculate_token_level=True` |
| topic_distr, topic_token_distr = topic_model.approximate_distribution( |
| docs, calculate_token_level=True |
| ) |
| |
| # Visualize the approximated topic distributions |
| df = topic_model.visualize_approximate_distribution(docs[0], topic_token_distr[0]) |
| df |
| ``` |
| |
| To revert this stylized dataframe back to a regular dataframe, |
| you can run the following: |
| |
| ```python |
| df.data.columns = [column.strip() for column in df.data.columns] |
| df = df.data |
| ``` |
| """ |
| |
| analyzer = topic_model.vectorizer_model.build_tokenizer() |
| tokens = analyzer(document) |
|
|
| if len(tokens) == 0: |
| raise ValueError("Make sure that your document contains at least 1 token.") |
| |
| |
| if normalize: |
| df = pd.DataFrame(topic_token_distribution / topic_token_distribution.sum()).T |
| else: |
| df = pd.DataFrame(topic_token_distribution).T |
| |
| df.columns = [f"{token}_{i}" for i, token in enumerate(tokens)] |
| df.columns = [f"{token}{' '*i}" for i, token in enumerate(tokens)] |
| df.index = list(topic_model.topic_labels_.values())[topic_model._outliers:] |
| df = df.loc[(df.sum(axis=1) != 0), :] |
| |
| |
| def text_color(val): |
| color = 'white' if val == 0 else 'black' |
| return 'color: %s' % color |
|
|
| def highligh_color(data, color='white'): |
| attr = 'background-color: {}'.format(color) |
| return pd.DataFrame(np.where(data == 0, attr, ''), index=data.index, columns=data.columns) |
| |
| if len(df) == 0: |
| return df |
| elif HAS_JINJA: |
| df = ( |
| df.style |
| .format("{:.3f}") |
| .background_gradient(cmap='Blues', axis=None) |
| .applymap(lambda x: text_color(x)) |
| .apply(highligh_color, axis=None) |
| ) |
| return df |
|
|