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import numpy as np |
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import pandas as pd |
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import plotly.graph_objects as go |
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import math |
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from umap import UMAP |
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from typing import List, Union |
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def visualize_hierarchical_documents(topic_model, |
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docs: List[str], |
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hierarchical_topics: pd.DataFrame, |
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topics: List[int] = None, |
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embeddings: np.ndarray = None, |
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reduced_embeddings: np.ndarray = None, |
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sample: Union[float, int] = None, |
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hide_annotations: bool = False, |
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hide_document_hover: bool = True, |
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nr_levels: int = 10, |
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level_scale: str = 'linear', |
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custom_labels: Union[bool, str] = False, |
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title: str = "<b>Hierarchical Documents and Topics</b>", |
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width: int = 1200, |
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height: int = 750) -> go.Figure: |
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""" Visualize documents and their topics in 2D at different levels of hierarchy |
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Arguments: |
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docs: The documents you used when calling either `fit` or `fit_transform` |
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hierarchical_topics: A dataframe that contains a hierarchy of topics |
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represented by their parents and their children |
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topics: A selection of topics to visualize. |
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Not to be confused with the topics that you get from `.fit_transform`. |
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For example, if you want to visualize only topics 1 through 5: |
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`topics = [1, 2, 3, 4, 5]`. |
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embeddings: The embeddings of all documents in `docs`. |
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reduced_embeddings: The 2D reduced embeddings of all documents in `docs`. |
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sample: The percentage of documents in each topic that you would like to keep. |
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Value can be between 0 and 1. Setting this value to, for example, |
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0.1 (10% of documents in each topic) makes it easier to visualize |
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millions of documents as a subset is chosen. |
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hide_annotations: Hide the names of the traces on top of each cluster. |
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hide_document_hover: Hide the content of the documents when hovering over |
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specific points. Helps to speed up generation of visualizations. |
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nr_levels: The number of levels to be visualized in the hierarchy. First, the distances |
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in `hierarchical_topics.Distance` are split in `nr_levels` lists of distances. |
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Then, for each list of distances, the merged topics are selected that have a |
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distance less or equal to the maximum distance of the selected list of distances. |
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NOTE: To get all possible merged steps, make sure that `nr_levels` is equal to |
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the length of `hierarchical_topics`. |
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level_scale: Whether to apply a linear or logarithmic (log) scale levels of the distance |
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vector. Linear scaling will perform an equal number of merges at each level |
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while logarithmic scaling will perform more mergers in earlier levels to |
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provide more resolution at higher levels (this can be used for when the number |
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of topics is large). |
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custom_labels: If bool, whether to use custom topic labels that were defined using |
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`topic_model.set_topic_labels`. |
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If `str`, it uses labels from other aspects, e.g., "Aspect1". |
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NOTE: Custom labels are only generated for the original |
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un-merged topics. |
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title: Title of the plot. |
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width: The width of the figure. |
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height: The height of the figure. |
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Examples: |
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To visualize the topics simply run: |
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```python |
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topic_model.visualize_hierarchical_documents(docs, hierarchical_topics) |
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``` |
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Do note that this re-calculates the embeddings and reduces them to 2D. |
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The advised and preferred pipeline for using this function is as follows: |
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```python |
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from sklearn.datasets import fetch_20newsgroups |
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from sentence_transformers import SentenceTransformer |
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from bertopic import BERTopic |
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from umap import UMAP |
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# Prepare embeddings |
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docs = fetch_20newsgroups(subset='all', remove=('headers', 'footers', 'quotes'))['data'] |
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sentence_model = SentenceTransformer("all-MiniLM-L6-v2") |
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embeddings = sentence_model.encode(docs, show_progress_bar=False) |
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# Train BERTopic and extract hierarchical topics |
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topic_model = BERTopic().fit(docs, embeddings) |
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hierarchical_topics = topic_model.hierarchical_topics(docs) |
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# Reduce dimensionality of embeddings, this step is optional |
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# reduced_embeddings = UMAP(n_neighbors=10, n_components=2, min_dist=0.0, metric='cosine').fit_transform(embeddings) |
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# Run the visualization with the original embeddings |
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topic_model.visualize_hierarchical_documents(docs, hierarchical_topics, embeddings=embeddings) |
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# Or, if you have reduced the original embeddings already: |
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topic_model.visualize_hierarchical_documents(docs, hierarchical_topics, reduced_embeddings=reduced_embeddings) |
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``` |
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Or if you want to save the resulting figure: |
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```python |
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fig = topic_model.visualize_hierarchical_documents(docs, hierarchical_topics, reduced_embeddings=reduced_embeddings) |
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fig.write_html("path/to/file.html") |
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``` |
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NOTE: |
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This visualization was inspired by the scatter plot representation of Doc2Map: |
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https://github.com/louisgeisler/Doc2Map |
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<iframe src="../../getting_started/visualization/hierarchical_documents.html" |
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style="width:1000px; height: 770px; border: 0px;""></iframe> |
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""" |
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topic_per_doc = topic_model.topics_ |
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if sample is None or sample > 1: |
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sample = 1 |
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indices = [] |
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for topic in set(topic_per_doc): |
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s = np.where(np.array(topic_per_doc) == topic)[0] |
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size = len(s) if len(s) < 100 else int(len(s)*sample) |
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indices.extend(np.random.choice(s, size=size, replace=False)) |
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indices = np.array(indices) |
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df = pd.DataFrame({"topic": np.array(topic_per_doc)[indices]}) |
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df["doc"] = [docs[index] for index in indices] |
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df["topic"] = [topic_per_doc[index] for index in indices] |
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if sample is None: |
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if embeddings is None and reduced_embeddings is None: |
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embeddings_to_reduce = topic_model._extract_embeddings(df.doc.to_list(), method="document") |
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else: |
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embeddings_to_reduce = embeddings |
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else: |
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if embeddings is not None: |
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embeddings_to_reduce = embeddings[indices] |
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elif embeddings is None and reduced_embeddings is None: |
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embeddings_to_reduce = topic_model._extract_embeddings(df.doc.to_list(), method="document") |
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if reduced_embeddings is None: |
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umap_model = UMAP(n_neighbors=10, n_components=2, min_dist=0.0, metric='cosine').fit(embeddings_to_reduce) |
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embeddings_2d = umap_model.embedding_ |
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elif sample is not None and reduced_embeddings is not None: |
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embeddings_2d = reduced_embeddings[indices] |
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elif sample is None and reduced_embeddings is not None: |
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embeddings_2d = reduced_embeddings |
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df["x"] = embeddings_2d[:, 0] |
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df["y"] = embeddings_2d[:, 1] |
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distances = hierarchical_topics.Distance.to_list() |
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if level_scale == 'log' or level_scale == 'logarithmic': |
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log_indices = np.round(np.logspace(start=math.log(1,10), stop=math.log(len(distances)-1,10), num=nr_levels)).astype(int).tolist() |
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log_indices.reverse() |
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max_distances = [distances[i] for i in log_indices] |
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elif level_scale == 'lin' or level_scale == 'linear': |
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max_distances = [distances[indices[-1]] for indices in np.array_split(range(len(hierarchical_topics)), nr_levels)][::-1] |
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else: |
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raise ValueError("level_scale needs to be one of 'log' or 'linear'") |
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for index, max_distance in enumerate(max_distances): |
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mapping = {topic: topic for topic in df.topic.unique()} |
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selection = hierarchical_topics.loc[hierarchical_topics.Distance <= max_distance, :] |
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selection.Parent_ID = selection.Parent_ID.astype(int) |
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selection = selection.sort_values("Parent_ID") |
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for row in selection.iterrows(): |
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for topic in row[1].Topics: |
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mapping[topic] = row[1].Parent_ID |
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mappings = [True for _ in mapping] |
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while any(mappings): |
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for i, (key, value) in enumerate(mapping.items()): |
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if value in mapping.keys() and key != value: |
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mapping[key] = mapping[value] |
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else: |
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mappings[i] = False |
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df[f"level_{index+1}"] = df.topic.map(mapping) |
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df[f"level_{index+1}"] = df[f"level_{index+1}"].astype(int) |
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trace_names = [] |
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topic_names = {} |
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for topic in range(hierarchical_topics.Parent_ID.astype(int).max()): |
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if topic < hierarchical_topics.Parent_ID.astype(int).min(): |
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if topic_model.get_topic(topic): |
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if isinstance(custom_labels, str): |
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trace_name = f"{topic}_" + "_".join(list(zip(*topic_model.topic_aspects_[custom_labels][topic]))[0][:3]) |
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elif topic_model.custom_labels_ is not None and custom_labels: |
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trace_name = topic_model.custom_labels_[topic + topic_model._outliers] |
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else: |
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trace_name = f"{topic}_" + "_".join([word[:20] for word, _ in topic_model.get_topic(topic)][:3]) |
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topic_names[topic] = {"trace_name": trace_name[:40], "plot_text": trace_name[:40]} |
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trace_names.append(trace_name) |
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else: |
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trace_name = f"{topic}_" + hierarchical_topics.loc[hierarchical_topics.Parent_ID == str(topic), "Parent_Name"].values[0] |
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plot_text = "_".join([name[:20] for name in trace_name.split("_")[:3]]) |
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topic_names[topic] = {"trace_name": trace_name[:40], "plot_text": plot_text[:40]} |
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trace_names.append(trace_name) |
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all_traces = [] |
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for level in range(len(max_distances)): |
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traces = [] |
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if topic_model._outliers: |
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traces.append( |
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go.Scattergl( |
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x=df.loc[(df[f"level_{level+1}"] == -1), "x"], |
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y=df.loc[df[f"level_{level+1}"] == -1, "y"], |
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mode='markers+text', |
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name="other", |
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hoverinfo="text", |
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hovertext=df.loc[(df[f"level_{level+1}"] == -1), "doc"] if not hide_document_hover else None, |
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showlegend=False, |
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marker=dict(color='#CFD8DC', size=5, opacity=0.5) |
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) |
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) |
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if topics: |
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selection = df.loc[(df.topic.isin(topics)), :] |
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unique_topics = sorted([int(topic) for topic in selection[f"level_{level+1}"].unique()]) |
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else: |
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unique_topics = sorted([int(topic) for topic in df[f"level_{level+1}"].unique()]) |
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for topic in unique_topics: |
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if topic != -1: |
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if topics: |
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selection = df.loc[(df[f"level_{level+1}"] == topic) & |
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(df.topic.isin(topics)), :] |
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else: |
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selection = df.loc[df[f"level_{level+1}"] == topic, :] |
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if not hide_annotations: |
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selection.loc[len(selection), :] = None |
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selection["text"] = "" |
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selection.loc[len(selection) - 1, "x"] = selection.x.mean() |
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selection.loc[len(selection) - 1, "y"] = selection.y.mean() |
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selection.loc[len(selection) - 1, "text"] = topic_names[int(topic)]["plot_text"] |
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traces.append( |
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go.Scattergl( |
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x=selection.x, |
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y=selection.y, |
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text=selection.text if not hide_annotations else None, |
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hovertext=selection.doc if not hide_document_hover else None, |
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hoverinfo="text", |
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name=topic_names[int(topic)]["trace_name"], |
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mode='markers+text', |
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marker=dict(size=5, opacity=0.5) |
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) |
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) |
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all_traces.append(traces) |
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nr_traces_per_set = [len(traces) for traces in all_traces] |
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trace_indices = [(0, nr_traces_per_set[0])] |
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for index, nr_traces in enumerate(nr_traces_per_set[1:]): |
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start = trace_indices[index][1] |
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end = nr_traces + start |
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trace_indices.append((start, end)) |
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fig = go.Figure() |
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for traces in all_traces: |
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for trace in traces: |
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fig.add_trace(trace) |
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for index in range(len(fig.data)): |
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if index >= nr_traces_per_set[0]: |
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fig.data[index].visible = False |
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steps = [] |
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for index, indices in enumerate(trace_indices): |
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step = dict( |
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method="update", |
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label=str(index), |
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args=[{"visible": [False] * len(fig.data)}] |
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) |
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for index in range(indices[1]-indices[0]): |
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step["args"][0]["visible"][index+indices[0]] = True |
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steps.append(step) |
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sliders = [dict( |
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currentvalue={"prefix": "Level: "}, |
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pad={"t": 20}, |
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steps=steps |
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)] |
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x_range = (df.x.min() - abs((df.x.min()) * .15), df.x.max() + abs((df.x.max()) * .15)) |
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y_range = (df.y.min() - abs((df.y.min()) * .15), df.y.max() + abs((df.y.max()) * .15)) |
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fig.add_shape(type="line", |
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x0=sum(x_range) / 2, y0=y_range[0], x1=sum(x_range) / 2, y1=y_range[1], |
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line=dict(color="#CFD8DC", width=2)) |
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fig.add_shape(type="line", |
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x0=x_range[0], y0=sum(y_range) / 2, x1=x_range[1], y1=sum(y_range) / 2, |
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line=dict(color="#9E9E9E", width=2)) |
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fig.add_annotation(x=x_range[0], y=sum(y_range) / 2, text="D1", showarrow=False, yshift=10) |
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fig.add_annotation(y=y_range[1], x=sum(x_range) / 2, text="D2", showarrow=False, xshift=10) |
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fig.update_layout( |
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sliders=sliders, |
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template="simple_white", |
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title={ |
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'text': f"{title}", |
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'x': 0.5, |
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'xanchor': 'center', |
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'yanchor': 'top', |
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'font': dict( |
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size=22, |
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color="Black") |
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}, |
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width=width, |
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height=height, |
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) |
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fig.update_xaxes(visible=False) |
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fig.update_yaxes(visible=False) |
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return fig |
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