bertopic_sim70_10topics_larger_embed_raw
This is a BERTopic model. BERTopic is a flexible and modular topic modeling framework that allows for the generation of easily interpretable topics from large datasets.
Usage
To use this model, please install BERTopic:
pip install -U bertopic
You can use the model as follows:
from bertopic import BERTopic
topic_model = BERTopic.load("DobreMihai/bertopic_sim70_10topics_larger_embed_raw")
topic_model.get_topic_info()
Topic overview
- Number of topics: 16
- Number of training documents: 56774
Click here for an overview of all topics.
| Topic ID | Topic Keywords | Topic Frequency | Label |
|---|---|---|---|
| 0 | loud - very - not - super - definitely | Topic Count | |
| 6 7 20334 | |||
| 15 6 17927 | |||
| 8 8 11505 | |||
| 7 9 3067 | |||
| 10 10 1362 | |||
| 9 11 1333 | |||
| 14 12 619 | |||
| 11 13 302 | |||
| 12 14 138 | |||
| 13 15 120 | |||
| 0 0 50 | |||
| 1 1 6 | |||
| 4 2 4 | |||
| 2 3 3 | |||
| 3 4 2 | |||
| 5 5 2 | loud | ||
| 1 | subscription - be - but - joke - high | Topic Count | |
| 6 7 20334 | |||
| 15 6 17927 | |||
| 8 8 11505 | |||
| 7 9 3067 | |||
| 10 10 1362 | |||
| 9 11 1333 | |||
| 14 12 619 | |||
| 11 13 302 | |||
| 12 14 138 | |||
| 13 15 120 | |||
| 0 0 50 | |||
| 1 1 6 | |||
| 4 2 4 | |||
| 2 3 3 | |||
| 3 4 2 | |||
| 5 5 2 | subscription | ||
| 2 | ad - bs - - - | Topic Count | |
| 6 7 20334 | |||
| 15 6 17927 | |||
| 8 8 11505 | |||
| 7 9 3067 | |||
| 10 10 1362 | |||
| 9 11 1333 | |||
| 14 12 619 | |||
| 11 13 302 | |||
| 12 14 138 | |||
| 13 15 120 | |||
| 0 0 50 | |||
| 1 1 6 | |||
| 4 2 4 | |||
| 2 3 3 | |||
| 3 4 2 | |||
| 5 5 2 | ads | ||
| 3 | snooze - snoozing - never - what - no | Topic Count | |
| 6 7 20334 | |||
| 15 6 17927 | |||
| 8 8 11505 | |||
| 7 9 3067 | |||
| 10 10 1362 | |||
| 9 11 1333 | |||
| 14 12 619 | |||
| 11 13 302 | |||
| 12 14 138 | |||
| 13 15 120 | |||
| 0 0 50 | |||
| 1 1 6 | |||
| 4 2 4 | |||
| 2 3 3 | |||
| 3 4 2 | |||
| 5 5 2 | snooze | ||
| 4 | premium - why - - - | Topic Count | |
| 6 7 20334 | |||
| 15 6 17927 | |||
| 8 8 11505 | |||
| 7 9 3067 | |||
| 10 10 1362 | |||
| 9 11 1333 | |||
| 14 12 619 | |||
| 11 13 302 | |||
| 12 14 138 | |||
| 13 15 120 | |||
| 0 0 50 | |||
| 1 1 6 | |||
| 4 2 4 | |||
| 2 3 3 | |||
| 3 4 2 | |||
| 5 5 2 | premium* | ||
| 5 | math - need - the - more - | Topic Count | |
| 6 7 20334 | |||
| 15 6 17927 | |||
| 8 8 11505 | |||
| 7 9 3067 | |||
| 10 10 1362 | |||
| 9 11 1333 | |||
| 14 12 619 | |||
| 11 13 302 | |||
| 12 14 138 | |||
| 13 15 120 | |||
| 0 0 50 | |||
| 1 1 6 | |||
| 4 2 4 | |||
| 2 3 3 | |||
| 3 4 2 | |||
| 5 5 2 | math | ||
| 6 | be - it - the - to - and | Topic Count | |
| 6 7 20334 | |||
| 15 6 17927 | |||
| 8 8 11505 | |||
| 7 9 3067 | |||
| 10 10 1362 | |||
| 9 11 1333 | |||
| 14 12 619 | |||
| 11 13 302 | |||
| 12 14 138 | |||
| 13 15 120 | |||
| 0 0 50 | |||
| 1 1 6 | |||
| 4 2 4 | |||
| 2 3 3 | |||
| 3 4 2 | |||
| 5 5 2 | -1_be_it_the_to | ||
| 7 | app - be - the - it - to | Topic Count | |
| 6 7 20334 | |||
| 15 6 17927 | |||
| 8 8 11505 | |||
| 7 9 3067 | |||
| 10 10 1362 | |||
| 9 11 1333 | |||
| 14 12 619 | |||
| 11 13 302 | |||
| 12 14 138 | |||
| 13 15 120 | |||
| 0 0 50 | |||
| 1 1 6 | |||
| 4 2 4 | |||
| 2 3 3 | |||
| 3 4 2 | |||
| 5 5 2 | 0_app_be_the_it | ||
| 8 | good - nice - very - excellent - awesome | Topic Count | |
| 6 7 20334 | |||
| 15 6 17927 | |||
| 8 8 11505 | |||
| 7 9 3067 | |||
| 10 10 1362 | |||
| 9 11 1333 | |||
| 14 12 619 | |||
| 11 13 302 | |||
| 12 14 138 | |||
| 13 15 120 | |||
| 0 0 50 | |||
| 1 1 6 | |||
| 4 2 4 | |||
| 2 3 3 | |||
| 3 4 2 | |||
| 5 5 2 | 1_good_nice_very_excellent | ||
| 9 | work - easy - very - use - helpful | Topic Count | |
| 6 7 20334 | |||
| 15 6 17927 | |||
| 8 8 11505 | |||
| 7 9 3067 | |||
| 10 10 1362 | |||
| 9 11 1333 | |||
| 14 12 619 | |||
| 11 13 302 | |||
| 12 14 138 | |||
| 13 15 120 | |||
| 0 0 50 | |||
| 1 1 6 | |||
| 4 2 4 | |||
| 2 3 3 | |||
| 3 4 2 | |||
| 5 5 2 | 2_work_easy_very_use | ||
| 10 | hai - que - de - la - se | Topic Count | |
| 6 7 20334 | |||
| 15 6 17927 | |||
| 8 8 11505 | |||
| 7 9 3067 | |||
| 10 10 1362 | |||
| 9 11 1333 | |||
| 14 12 619 | |||
| 11 13 302 | |||
| 12 14 138 | |||
| 13 15 120 | |||
| 0 0 50 | |||
| 1 1 6 | |||
| 4 2 4 | |||
| 2 3 3 | |||
| 3 4 2 | |||
| 5 5 2 | 3_hai_que_de_la | ||
| 11 | ok - well - be - good - it | Topic Count | |
| 6 7 20334 | |||
| 15 6 17927 | |||
| 8 8 11505 | |||
| 7 9 3067 | |||
| 10 10 1362 | |||
| 9 11 1333 | |||
| 14 12 619 | |||
| 11 13 302 | |||
| 12 14 138 | |||
| 13 15 120 | |||
| 0 0 50 | |||
| 1 1 6 | |||
| 4 2 4 | |||
| 2 3 3 | |||
| 3 4 2 | |||
| 5 5 2 | 4_ok_well_be_good | ||
| 12 | super - epic - noice - top - excelent | Topic Count | |
| 6 7 20334 | |||
| 15 6 17927 | |||
| 8 8 11505 | |||
| 7 9 3067 | |||
| 10 10 1362 | |||
| 9 11 1333 | |||
| 14 12 619 | |||
| 11 13 302 | |||
| 12 14 138 | |||
| 13 15 120 | |||
| 0 0 50 | |||
| 1 1 6 | |||
| 4 2 4 | |||
| 2 3 3 | |||
| 3 4 2 | |||
| 5 5 2 | 5_super_epic_noice_top | ||
| 13 | life - annoying - change - save - it | Topic Count | |
| 6 7 20334 | |||
| 15 6 17927 | |||
| 8 8 11505 | |||
| 7 9 3067 | |||
| 10 10 1362 | |||
| 9 11 1333 | |||
| 14 12 619 | |||
| 11 13 302 | |||
| 12 14 138 | |||
| 13 15 120 | |||
| 0 0 50 | |||
| 1 1 6 | |||
| 4 2 4 | |||
| 2 3 3 | |||
| 3 4 2 | |||
| 5 5 2 | 6_life_annoying_change_save | ||
| 14 | never - reliable - fail - clock - dependable | Topic Count | |
| 6 7 20334 | |||
| 15 6 17927 | |||
| 8 8 11505 | |||
| 7 9 3067 | |||
| 10 10 1362 | |||
| 9 11 1333 | |||
| 14 12 619 | |||
| 11 13 302 | |||
| 12 14 138 | |||
| 13 15 120 | |||
| 0 0 50 | |||
| 1 1 6 | |||
| 4 2 4 | |||
| 2 3 3 | |||
| 3 4 2 | |||
| 5 5 2 | 7_never_reliable_fail_clock | ||
| 15 | step - math - squat - the - count | Topic Count | |
| 6 7 20334 | |||
| 15 6 17927 | |||
| 8 8 11505 | |||
| 7 9 3067 | |||
| 10 10 1362 | |||
| 9 11 1333 | |||
| 14 12 619 | |||
| 11 13 302 | |||
| 12 14 138 | |||
| 13 15 120 | |||
| 0 0 50 | |||
| 1 1 6 | |||
| 4 2 4 | |||
| 2 3 3 | |||
| 3 4 2 | |||
| 5 5 2 | 8_step_math_squat_the |
Training hyperparameters
- calculate_probabilities: False
- language: None
- low_memory: False
- min_topic_size: 10
- n_gram_range: (1, 1)
- nr_topics: None
- seed_topic_list: None
- top_n_words: 10
- verbose: False
- zeroshot_min_similarity: 0.7
- zeroshot_topic_list: None
Framework versions
- Numpy: 1.26.4
- HDBSCAN: 0.8.38.post1
- UMAP: 0.5.6
- Pandas: 2.2.1
- Scikit-Learn: 1.5.2
- Sentence-transformers: 3.1.0
- Transformers: 4.44.2
- Numba: 0.60.0
- Plotly: 5.24.1
- Python: 3.10.15
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