Multi-Label-Text-Classification
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About Muti-Label Text Classification Based on Neural Network.
Deep Learning for Multi-Label Text Classification
This repository is my research project, and it is also a study of TensorFlow, Deep Learning (Fasttext, CNN, LSTM, etc.).
The main objective of the project is to solve the multi-label text classification problem based on Deep Neural Networks. Thus, the format of the data label is like [0, 1, 0, ..., 1, 1] according to the characteristics of such a problem.
Requirements
- Python 3.6
- Tensorflow 1.15.0
- Tensorboard 1.15.0
- Sklearn 0.19.1
- Numpy 1.16.2
- Gensim 3.8.3
- Tqdm 4.49.0
Project
The project structure is below:
.
├── Model
│ ├── test_model.py
│ ├── text_model.py
│ └── train_model.py
├── data
│ ├── word2vec_100.model.* [Need Download]
│ ├── Test_sample.json
│ ├── Train_sample.json
│ └── Validation_sample.json
└── utils
│ ├── checkmate.py
│ ├── data_helpers.py
│ └── param_parser.py
├── LICENSE
├── README.md
└── requirements.txt
Innovation
Data part
- Make the data support Chinese and English (Can use
jieba
ornltk
). - Can use your pre-trained word vectors (Can use
gensim
). - Add embedding visualization based on the tensorboard (Need to create
metadata.tsv
first).
Model part
- Add the correct L2 loss calculation operation.
- Add gradients clip operation to prevent gradient explosion.
- Add learning rate decay with exponential decay.
- Add a new Highway Layer (Which is useful according to the model performance).
- Add Batch Normalization Layer.
Code part
- Can choose to train the model directly or restore the model from the checkpoint in
train.py
. - Can predict the labels via threshold and top-K in
train.py
andtest.py
. - Can calculate the evaluation metrics --- AUC & AUPRC.
- Can create the prediction file which including the predicted values and predicted labels of the Testset data in
test.py
. - Add other useful data preprocess functions in
data_helpers.py
. - Use
logging
for helping to record the whole info (including parameters display, model training info, etc.). - Provide the ability to save the best n checkpoints in
checkmate.py
, whereas thetf.train.Saver
can only save the last n checkpoints.
Data
See data format in /data
folder which including the data sample files. For example:
{"testid": "3935745", "features_content": ["pore", "water", "pressure", "metering", "device", "incorporating", "pressure", "meter", "force", "meter", "influenced", "pressure", "meter", "device", "includes", "power", "member", "arranged", "control", "pressure", "exerted", "pressure", "meter", "force", "meter", "applying", "overriding", "force", "pressure", "meter", "stop", "influence", "force", "meter", "removing", "overriding", "force", "pressure", "meter", "influence", "force", "meter", "resumed"], "labels_index": [526, 534, 411], "labels_num": 3}
- "testid": just the id.
- "features_content": the word segment (after removing the stopwords)
- "labels_index": The label index of the data records.
- "labels_num": The number of labels.
Text Segment
-
You can use
nltk
package if you are going to deal with the English text data. -
You can use
jieba
package if you are going to deal with the Chinese text data.
Data Format
This repository can be used in other datasets (text classification) in two ways:
- Modify your datasets into the same format of the sample.
- Modify the data preprocessing code in
data_helpers.py
.
Anyway, it should depend on what your data and task are.
🤔Before you open the new issue about the data format, please check the data_sample.json
and read the other open issues first, because someone maybe ask me the same question already. For example:
- 输入文件的格式是什么样子的?
- Where is the dataset for training?
- 在 data_helpers.py 中的 content.txt 与 metadata.tsv 是什么,具体格式是什么,能否提供一个样例?
Pre-trained Word Vectors
You can download the Word2vec model file (dim=100). Make sure they are unzipped and under the /data
folder.
You can pre-training your word vectors (based on your corpus) in many ways:
- Use
gensim
package to pre-train data. - Use
glove
tools to pre-train data. - Even can use a fasttext network to pre-train data.
Usage
See Usage.
Network Structure
FastText
References:
TextANN
References:
- Personal ideas 🙃
TextCNN
References:
- Convolutional Neural Networks for Sentence Classification
- A Sensitivity Analysis of (and Practitioners' Guide to) Convolutional Neural Networks for Sentence Classification
TextRNN
Warning: Model can use but not finished yet 🤪!
TODO
- Add BN-LSTM cell unit.
- Add attention.
References:
TextCRNN
References:
- Personal ideas 🙃
TextRCNN
References:
- Personal ideas 🙃
TextHAN
References:
TextSANN
Warning: Model can use but not finished yet 🤪!
TODO
- Add attention penalization loss.
- Add visualization.
References:
About Me
黄威,Randolph
SCU SE Bachelor; USTC CS Ph.D.
Email: [email protected]
My Blog: randolph.pro
LinkedIn: randolph's linkedin