Awesome
SubTab:
Author: Talip Ucar (ucabtuc@gmail.com)
The unofficial implementation of the paper.
:fire: NEW :fire: This repo includes codes and pre-processed data to reproduce the results for Adult Income and BlogFeedback datasets in addition to MNIST implementation from the official Github repo. Please note that Income dataset is under the "./data" folder while BlogFeedback dataset is attached as a zip file in the release due to its file size.
SubTab: Subsetting Features of Tabular Data for Self-Supervised Representation Learning
Table of Contents:
- Model
- Environment
- Data
- Configuration
- Training and Evaluation
- Adding New Datasets
- Results
- Experiment tracking
- Citing the paper
- Citing this repo
NeurIPS 2021 slides | NeurIPS 2021 poster |
---|---|
Model
<details> <summary>Click for a slower version of the animation</summary> </details>Environment
We used Python 3.7 for our experiments. The environment can be set up by following three steps:
pip install pipenv # To install pipenv if you don't have it already
pipenv install --skip-lock # To install required packages.
pipenv shell # To activate virtual env
If the second step results in issues, you can install packages in Pipfile individually by using pip i.e. "pip install package_name".
Data
MNIST dataset is already provided to demo the framework. For your own dataset, follow the instructions in Adding New Datasets.
Configuration
There are two types of configuration files:
1. runtime.yaml
2. mnist.yaml
-
runtime.yaml
is a high-level configuration file used by all datasets to:- define the random seed
- turn on/off mlflow (Default: False)
- turn on/off python profiler (Default: False)
- set data directory
- set results directory
-
Second configuration file is dataset-specific and is used to configure the architecture of the model, loss functions, and so on.
- For example, we set up a configuration file for MNIST dataset with the same name. Please note that the name of the configuration file should be same as name of the dataset with all letters in lowercase.
- We can have configuration files for other datasets such as tcga.yaml and income.yaml for tcga and income datasets respectively.
Training and Evaluation
You can train and evaluate the model by using:
python train.py # For training.
python eval.py # For evaluation
train.py
will also run evaluation at the end of the training.- You can also run evaluation separately by using
eval.py
. - For a list of arguments, please see
./utils/arguments.py
- Use
-h
argument to get help when running scripts. - Use
-d dataset_name
to run scripts on new datasets
- Use
Adding New Datasets
For each new dataset, you can use the following steps:
-
Provide a
_load_dataset_name()
function, similar to MNIST load function- For example, you can add
_load_tcga()
for tcga dataset, or_load_income()
for income dataset. - The function should return (x_train, y_train, x_test, y_test)
- For example, you can add
-
Add a separate
elif
condition in this section within_load_data()
method ofTabularDataset()
class inutils/load_data.py
-
Create a new config file with the same name as dataset name.
-
For example,
tcga.yaml
for tcga dataset, orincome.yaml
for income dataset. -
You can also duplicate one of the existing configuration files (e.g. mnist.yaml), and re-name it.
-
Make sure that the new config file is under
config/
directory.
-
-
Provide data folder with pre-processed training and test set, and place it under
./data/
directory. You can also do train-test split and pre-processing within your custom_load_dataset_name()
function. -
(Optional) If you want to place the new dataset under a different directory than the local "./data/", then:
-
Place the dataset folder anywhere, and define the root directory to it in this line of
/config/runtime.yaml
. -
For example, if the path to tcga dataset is
/home/.../data/tcga/
, you only need to include/home/.../data/
inruntime.yaml
. The code will fill intcga
folder name from the name given in the command line argument (e.g.-d dataset_name
. In this case, dataset_name would be tcga).
-
Structure of the repo
<pre> - train.py - eval.py - src |-model.py - config |-runtime.yaml |-mnist.yaml - utils |-load_data.py |-arguments.py |-model_utils.py |-loss_functions.py ... - data |-mnist ... - results | ... </pre>Results
Results at the end of training is saved under ./results
directory. Results directory structure is as following:
You can save results of evaluations under "evaluation" folder.
Experiment tracking
MLFlow is used to track experiments. It is turned off by default, but can be turned on by changing option on this line in
runtime config file in ./config/runtime.yaml
Citing the paper
@article{ucar2021subtab,
title={SubTab: Subsetting Features of Tabular Data for Self-Supervised Representation Learning},
author={Ucar, Talip and Hajiramezanali, Ehsan and Edwards, Lindsay},
journal={arXiv preprint arXiv:2110.04361},
year={2021}
}
Citing this repo
If you use SubTab framework in your own studies, and work, please cite it by using the following:
@Misc{talip_ucar_2021_SubTab,
author = {Talip Ucar},
title = {{SubTab: Subsetting Features of Tabular Data for Self-Supervised Representation Learning}},
howpublished = {\url{https://github.com/AstraZeneca/SubTab}},
month = June,
year = {since 2021}
}