MMSA is a unified framework for Multimodal Sentiment Analysis.
- Train, test and compare multiple MSA models in a unified framework.
- Supports 15 MSA models, including recent works.
- Supports 3 MSA datasets: MOSI, MOSEI, and CH-SIMS.
- Easy to use, provides Python APIs and commandline tools.
- Experiment with fully customized multimodal features extracted by MMSA-FET toolkit.
Note: From version 2.0, we packaged the project and uploaded it to PyPI in the hope of making it easier to use. If you don't like the new structure, you can always switch back to
v_1.0
branch.
-
Run
pip install MMSA
in your python virtual environment. -
Import and use in any python file:
from MMSA import MMSA_run # run LMF on MOSI with default hyper parameters MMSA_run('lmf', 'mosi', seeds=[1111, 1112, 1113], gpu_ids=[0]) # tune Self_mm on MOSEI with default hyper parameter range MMSA_run('self_mm', 'mosei', seeds=[1111], gpu_ids=[1]) # run TFN on SIMS with altered config config = get_config_regression('tfn', 'mosi') config['post_fusion_dim'] = 32 config['featurePath'] = '~/feature.pkl' MMSA_run('tfn', 'mosi', config=config, seeds=[1111]) # run MTFN on SIMS with custom config file MMSA_run('mtfn', 'sims', config_file='./config.json')
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For more detailed usage, please refer to APIs.
-
Run
pip install MMSA
in your python virtual environment. -
Use from command line:
# show usage $ python -m MMSA -h # train & test LMF on MOSI with default parameters $ python -m MMSA -d mosi -m lmf -s 1111 -s 1112 # tune 50 times of TFN on MOSEI with custom config file & custom save dir $ python -m MMSA -d mosei -m tfn -t -tt 30 --model-save-dir ./models --res-save-dir ./results # train & test self_mm on SIMS with custom audio features & use gpu2 $ python -m MMSA -d sims -m self_mm -Fa ./Features/Feature-A.pkl --gpu-ids 2
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For more detailed usage, please refer to Commandline Arguments.
- Clone this repo and install requirements.
$ git clone https://github.com/thuiar/MMSA
- Edit the codes to your needs. See Code Structure for a basic review of our code structure.
- After editing, run the following commands:
$ cd MMSA-master # make sure you're in the top directory $ pip install .
- Then run the code like above sections.
- To further change the code, you need to re-install the package:
$ pip uninstall MMSA $ pip install .
- If you'd rather run the code without installation(like in v_1.0), please refer to Run Code without Installation.
MMSA currently supports MOSI, MOSEI, and CH-SIMS dataset. Use the following links to download raw videos, feature files and label files. You don't need to download raw videos if you're not planning to run end-to-end tasks.
- BaiduYun Disk
code: mfet
- Google Drive
SHA-256 for feature files:
`MOSI/Processed/unaligned_50.pkl`: `78e0f8b5ef8ff71558e7307848fc1fa929ecb078203f565ab22b9daab2e02524`
`MOSI/Processed/aligned_50.pkl`: `d3994fd25681f9c7ad6e9c6596a6fe9b4beb85ff7d478ba978b124139002e5f9`
`MOSEI/Processed/unaligned_50.pkl`: `ad8b23d50557045e7d47959ce6c5b955d8d983f2979c7d9b7b9226f6dd6fec1f`
`MOSEI/Processed/aligned_50.pkl`: `45eccfb748a87c80ecab9bfac29582e7b1466bf6605ff29d3b338a75120bf791`
`SIMS/Processed/unaligned_39.pkl`: `c9e20c13ec0454d98bb9c1e520e490c75146bfa2dfeeea78d84de047dbdd442f`
MMSA uses feature files that are organized as follows:
{
"train": {
"raw_text": [], # raw text
"audio": [], # audio feature
"vision": [], # video feature
"id": [], # [video_id$_$clip_id, ..., ...]
"text": [], # bert feature
"text_bert": [], # word ids for bert
"audio_lengths": [], # audio feature lenth(over time) for every sample
"vision_lengths": [], # same as audio_lengths
"annotations": [], # strings
"classification_labels": [], # Negative(0), Neutral(1), Positive(2). Deprecated in v_2.0
"regression_labels": [] # Negative(<0), Neutral(0), Positive(>0)
},
"valid": {***}, # same as "train"
"test": {***}, # same as "train"
}
Note: For MOSI and MOSEI, the pre-extracted text features are from BERT, different from the original glove features in the CMU-Multimodal-SDK.
Note: If you wish to extract customized multimodal features, please try out our MMSA-FET
Type | Model Name | From | Published |
---|---|---|---|
Single-Task | TFN | Tensor-Fusion-Network | EMNLP 2017 |
Single-Task | EF_LSTM | MultimodalDNN | ACL 2018 Workshop |
Single-Task | LF_DNN | MultimodalDNN | ACL 2018 Workshop |
Single-Task | LMF | Low-rank-Multimodal-Fusion | ACL 2018 |
Single-Task | MFN | Memory-Fusion-Network | AAAI 2018 |
Single-Task | Graph-MFN | Graph-Memory-Fusion-Network | ACL 2018 |
Single-Task | MulT(without CTC) | Multimodal-Transformer | ACL 2019 |
Single-Task | MFM | MFM | ICRL 2019 |
Multi-Task | MLF_DNN | MMSA | ACL 2020 |
Multi-Task | MTFN | MMSA | ACL 2020 |
Multi-Task | MLMF | MMSA | ACL 2020 |
Multi-Task | SELF_MM | Self-MM | AAAI 2021 |
Single-Task | BERT-MAG | MAG-BERT | ACL 2020 |
Single-Task | MISA | MISA | ACMMM 2020 |
Single-Task | MMIM | MMIM | EMNLP 2021 |
Single-Task | BBFN (Work in Progress) | BBFN | ICMI 2021 |
Single-Task | CENET | CENET | TMM 2022 |
Multi-Task | TETFN | TETFN | PR 2023 |
Single-Task | ALMT | ALMT | EMNLP 2023 |
Baseline results are reported in results/result-stat.md
- CH-SIMS: A Chinese Multimodal Sentiment Analysis Dataset with Fine-grained Annotations of Modality
- Learning Modality-Specific Representations with Self-Supervised Multi-Task Learning for Multimodal Sentiment Analysis
- M-SENA: An Integrated Platform for Multimodal Sentiment Analysis
Please cite our paper if you find our work useful for your research:
@inproceedings{yu2020ch,
title={CH-SIMS: A Chinese Multimodal Sentiment Analysis Dataset with Fine-grained Annotation of Modality},
author={Yu, Wenmeng and Xu, Hua and Meng, Fanyang and Zhu, Yilin and Ma, Yixiao and Wu, Jiele and Zou, Jiyun and Yang, Kaicheng},
booktitle={Proceedings of the 58th Annual Meeting of the Association for Computational Linguistics},
pages={3718--3727},
year={2020}
}
@inproceedings{yu2021learning,
title={Learning Modality-Specific Representations with Self-Supervised Multi-Task Learning for Multimodal Sentiment Analysis},
author={Yu, Wenmeng and Xu, Hua and Yuan, Ziqi and Wu, Jiele},
booktitle={Proceedings of the AAAI Conference on Artificial Intelligence},
volume={35},
number={12},
pages={10790--10797},
year={2021}
}