Skip to content

Leveraging BERT and c-TF-IDF to create easily interpretable topics.

License

Notifications You must be signed in to change notification settings

leifericf/BERTopic

 
 

Repository files navigation

PyPI - Python Build docs PyPI - PyPi PyPI - License arXiv

BERTopic

BERTopic is a topic modeling technique that leverages 🤗 transformers and c-TF-IDF to create dense clusters allowing for easily interpretable topics whilst keeping important words in the topic descriptions.

BERTopic supports guided, (semi-) supervised, and dynamic topic modeling. It even supports visualizations similar to LDAvis!

Corresponding medium posts can be found here and here. For a more detailed overview, you can read the paper.

Installation

Installation, with sentence-transformers, can be done using pypi:

pip install bertopic

You may want to install more depending on the transformers and language backends that you will be using. The possible installations are:

pip install bertopic[flair]
pip install bertopic[gensim]
pip install bertopic[spacy]
pip install bertopic[use]

Getting Started

For an in-depth overview of the features of BERTopic you can check the full documentation here or you can follow along with one of the examples below:

Name Link
Topic Modeling with BERTopic Open In Colab
(Custom) Embedding Models in BERTopic Open In Colab
Advanced Customization in BERTopic Open In Colab
(semi-)Supervised Topic Modeling with BERTopic Open In Colab
Dynamic Topic Modeling with Trump's Tweets Open In Colab
Topic Modeling arXiv Abstracts Kaggle

Quick Start

We start by extracting topics from the well-known 20 newsgroups dataset containing English documents:

from bertopic import BERTopic
from sklearn.datasets import fetch_20newsgroups
 
docs = fetch_20newsgroups(subset='all',  remove=('headers', 'footers', 'quotes'))['data']

topic_model = BERTopic()
topics, probs = topic_model.fit_transform(docs)

After generating topics and their probabilities, we can access the frequent topics that were generated:

>>> topic_model.get_topic_info()

Topic	Count	Name
-1	4630	-1_can_your_will_any
0	693	49_windows_drive_dos_file
1	466	32_jesus_bible_christian_faith
2	441	2_space_launch_orbit_lunar
3	381	22_key_encryption_keys_encrypted

-1 refers to all outliers and should typically be ignored. Next, let's take a look at the most frequent topic that was generated, topic 0:

>>> topic_model.get_topic(0)

[('windows', 0.006152228076250982),
 ('drive', 0.004982897610645755),
 ('dos', 0.004845038866360651),
 ('file', 0.004140142872194834),
 ('disk', 0.004131678774810884),
 ('mac', 0.003624848635985097),
 ('memory', 0.0034840976976789903),
 ('software', 0.0034415334250699077),
 ('email', 0.0034239554442333257),
 ('pc', 0.003047105930670237)]

NOTE: Use BERTopic(language="multilingual") to select a model that supports 50+ languages.

Visualize Topics

After having trained our BERTopic model, we can iteratively go through hundreds of topics to get a good understanding of the topics that were extracted. However, that takes quite some time and lacks a global representation. Instead, we can visualize the topics that were generated in a way very similar to LDAvis:

topic_model.visualize_topics()

We can create an overview of the most frequent topics in a way that they are easily interpretable. Horizontal barcharts typically convey information rather well and allow for an intuitive representation of the topics:

topic_model.visualize_barchart()

Find all possible visualizations with interactive examples in the documentation here.

Embedding Models

BERTopic supports many embedding models that can be used to embed the documents and words:

  • Sentence-Transformers
  • Flair
  • Spacy
  • Gensim
  • USE

Sentence-Transformers is typically used as it has shown great results embedding documents meant for semantic similarity. Simply select any from their documentation here and pass it to BERTopic:

topic_model = BERTopic(embedding_model="all-MiniLM-L6-v2")

Flair allows you to choose almost any 🤗 transformers model. Simply select any from here and pass it to BERTopic:

from flair.embeddings import TransformerDocumentEmbeddings

roberta = TransformerDocumentEmbeddings('roberta-base')
topic_model = BERTopic(embedding_model=roberta)

Click here for a full overview of all supported embedding models.

Dynamic Topic Modeling

Dynamic topic modeling (DTM) is a collection of techniques aimed at analyzing the evolution of topics over time. These methods allow you to understand how a topic is represented over time. Here, we will be using all of Donald Trump's tweet to see how he talked over certain topics over time:

import re
import pandas as pd

trump = pd.read_csv('https://drive.google.com/uc?export=download&id=1xRKHaP-QwACMydlDnyFPEaFdtskJuBa6')
trump.text = trump.apply(lambda row: re.sub(r"http\S+", "", row.text).lower(), 1)
trump.text = trump.apply(lambda row: " ".join(filter(lambda x:x[0]!="@", row.text.split())), 1)
trump.text = trump.apply(lambda row: " ".join(re.sub("[^a-zA-Z]+", " ", row.text).split()), 1)
trump = trump.loc[(trump.isRetweet == "f") & (trump.text != ""), :]
timestamps = trump.date.to_list()
tweets = trump.text.to_list()

Then, we need to extract the global topic representations by simply creating and training a BERTopic model:

topic_model = BERTopic(verbose=True)
topics, probs = topic_model.fit_transform(tweets)

From these topics, we are going to generate the topic representations at each timestamp for each topic. We do this by simply calling topics_over_time and pass in his tweets, the corresponding timestamps, and the related topics:

topics_over_time = topic_model.topics_over_time(tweets, topics, timestamps, nr_bins=20)

Finally, we can visualize the topics by simply calling visualize_topics_over_time():

topic_model.visualize_topics_over_time(topics_over_time, top_n_topics=6)

Overview

For quick access to common functions, here is an overview of BERTopic's main methods:

Method Code
Fit the model .fit(docs)
Fit the model and predict documents .fit_transform(docs)
Predict new documents .transform([new_doc])
Access single topic .get_topic(topic=12)
Access all topics .get_topics()
Get topic freq .get_topic_freq()
Get all topic information .get_topic_info()
Get representative docs per topic .get_representative_docs()
Get topics per class .topics_per_class(docs, topics, classes)
Dynamic Topic Modeling .topics_over_time(docs, topics, timestamps)
Update topic representation .update_topics(docs, topics, n_gram_range=(1, 3))
Reduce nr of topics .reduce_topics(docs, topics, nr_topics=30)
Find topics .find_topics("vehicle")
Save model .save("my_model")
Load model BERTopic.load("my_model")
Get parameters .get_params()

For an overview of BERTopic's visualization methods:

Method Code
Visualize Topics .visualize_topics()
Visualize Topic Hierarchy .visualize_hierarchy()
Visualize Topic Terms .visualize_barchart()
Visualize Topic Similarity .visualize_heatmap()
Visualize Term Score Decline .visualize_term_rank()
Visualize Topic Probability Distribution .visualize_distribution(probs[0])
Visualize Topics over Time .visualize_topics_over_time(topics_over_time)
Visualize Topics per Class .visualize_topics_per_class(topics_per_class)

Citation

To cite the BERTopic paper, please use the following bibtex reference:

@article{grootendorst2022bertopic,
  title={BERTopic: Neural topic modeling with a class-based TF-IDF procedure},
  author={Grootendorst, Maarten},
  journal={arXiv preprint arXiv:2203.05794},
  year={2022}
}

About

Leveraging BERT and c-TF-IDF to create easily interpretable topics.

Resources

License

Stars

Watchers

Forks

Packages

No packages published

Languages

  • Python 99.8%
  • Makefile 0.2%