To SMOTE, or not to SMOTE?

Overview

To SMOTE, or not to SMOTE?

This package includes the code required to repeat the experiments in the paper and to analyze the results.

To SMOTE, or not to SMOTE?

Yotam Elor and Hadar Averbuch-Elor

Installation

# Create a new conda environment and activate it
conda create --name to-SMOTE-or-not -y python=3.7
conda activate to-SMOTE-or-not
# Install dependencies
pip install -r requirements.txt

Running experiments

The data is not included with this package. See an example of running a single experiment with a dataset from imblanaced-learn

# Load the data
import pandas as pd
import numpy as np
from imblearn.datasets import fetch_datasets
data = fetch_datasets()["mammography"]
x = pd.DataFrame(data["data"])
y = np.array(data["target"]).reshape((-1, 1))

# Run the experiment
from experiment import experiment
from classifiers import CLASSIFIER_HPS
from oversamplers import OVERSAMPLER_HPS
results = experiment(
    x=x,
    y=y,
    oversampler={
        "type": "smote",
        "ratio": 0.4,
        "params": OVERSAMPLER_HPS["smote"][0],
    },
    classifier={
        "type": "cat",  # Catboost
        "params": CLASSIFIER_HPS["cat"][0]
    },
    seed=0,
    normalize=False,
    clean_early_stopping=False,
    consistent=True,
    repeats=1
)

# Print the results nicely
import json
print(json.dumps(results, indent=4))

To run all the experiments in our study, wrap the above in loops, for example

for dataset in datasets:
    x, y = load_dataset(dataset)  # this functionality is not provided
    for seed in range(7):
        for classifier, classifier_hp_configs in CLASSIFIER_HPS.items():
            for classifier_hp in classifier_hp_configs:
                for oversampler, oversampler_hp_configs in OVERSAMPLER_HPS.items():
                    for oversampler_hp in oversampler_hp_configs:
                        for ratio in [0.1, 0.2, 0.3, 0.4, 0.5]:
                            results = experiment(
                                x=x,
                                y=y,
                                oversampler={
                                    "type": oversampler,
                                    "ratio": ratio,
                                    "params": oversampler_hp,
                                },
                                classifier={
                                    "type": classifier,
                                    "params": classifier_hp
                                },
                                seed=seed,
                                normalize=...,
                                clean_early_stopping=...,
                                consistent=...,
                                repeats=...
                            )

Analyze

Read the results from the compressed csv file. As the results file is large, it is tracked using git-lfs. You might need to download it manually or install git-lfs.

import os
import pandas as pd
data_path = os.path.join(os.path.dirname(__file__), "../data/results.gz")
df = pd.read_csv(data_path)

Drop nans and filter experiments with consistent classifiers, no normalization and a single validation fold

df = df.dropna()
df = df[
    (df["consistent"] == True)
    & (df["normalize"] == False)
    & (df["clean_early_stopping"] == False)
    & (df["repeats"] == 1)
]

Select the best HP configurations according to AUC validation scores. opt_metric is the key used to select the best configuration. For example, for a-priori HPs use opt_metric="test.roc_auc" and for validation-HPs use opt_metric="validation.roc_auc". Additionaly calculate average score and rank

from analyze import filter_optimal_hps
df = filter_optimal_hps(
    df, opt_metric="validation.roc_auc", output_metrics=["test.roc_auc"]
)
print(df)

Plot the results

from analyze import avg_plots
avg_plots(df, "test.roc_auc")

Citation

@misc{elor2022smote,
    title={To SMOTE, or not to SMOTE?}, 
    author={Yotam Elor and Hadar Averbuch-Elor},
    year={2022},
    eprint={2201.08528},
    archivePrefix={arXiv},
    primaryClass={cs.LG}
}

Security

See CONTRIBUTING for more information.

License

This library is licensed under the MIT-0 License. See the LICENSE file.

Owner
Amazon Web Services
Amazon Web Services
This is the official PyTorch implementation of the paper "TransFG: A Transformer Architecture for Fine-grained Recognition" (Ju He, Jie-Neng Chen, Shuai Liu, Adam Kortylewski, Cheng Yang, Yutong Bai, Changhu Wang, Alan Yuille).

TransFG: A Transformer Architecture for Fine-grained Recognition Official PyTorch code for the paper: TransFG: A Transformer Architecture for Fine-gra

Ju He 307 Jan 03, 2023
[ICCV '21] In this repository you find the code to our paper Keypoint Communities

Keypoint Communities In this repository you will find the code to our ICCV '21 paper: Keypoint Communities Duncan Zauss, Sven Kreiss, Alexandre Alahi,

Duncan Zauss 262 Dec 13, 2022
Official implementation of "Membership Inference Attacks Against Self-supervised Speech Models"

Introduction Official implementation of "Membership Inference Attacks Against Self-supervised Speech Models". In this work, we demonstrate that existi

Wei-Cheng Tseng 7 Nov 01, 2022
Official PyTorch implementation of UACANet: Uncertainty Aware Context Attention for Polyp Segmentation

UACANet: Uncertainty Aware Context Attention for Polyp Segmentation Official pytorch implementation of UACANet: Uncertainty Aware Context Attention fo

Taehun Kim 85 Dec 14, 2022
Official PyTorch Implementation of "Self-supervised Auxiliary Learning with Meta-paths for Heterogeneous Graphs". NeurIPS 2020.

Self-supervised Auxiliary Learning with Meta-paths for Heterogeneous Graphs This repository is the implementation of SELAR. Dasol Hwang* , Jinyoung Pa

MLV Lab (Machine Learning and Vision Lab at Korea University) 48 Nov 09, 2022
Human Detection - Pedestrian Detection using OpenCV Python

Pedestrian Detection using OpenCV Python Follow us on Instagram for Machine Lear

Hrishikesh Dutta 1 Jan 23, 2022
Trading environnement for RL agents, backtesting and training.

TradzQAI Trading environnement for RL agents, backtesting and training. Live session with coinbasepro-python is finaly arrived ! Available sessions: L

Tony Denion 164 Oct 30, 2022
PyTorch implementation of 'Gen-LaneNet: a generalized and scalable approach for 3D lane detection'

(pytorch) Gen-LaneNet: a generalized and scalable approach for 3D lane detection Introduction This is a pytorch implementation of Gen-LaneNet, which p

Yuliang Guo 233 Jan 06, 2023
A simple log parser and summariser for IIS web server logs

IISLogFileParser A basic parser tool for IIS Logs which summarises findings from the log file. Inspired by the Gist https://gist.github.com/wh13371/e7

2 Mar 26, 2022
A PyTorch implementation of "TokenLearner: What Can 8 Learned Tokens Do for Images and Videos?"

TokenLearner: What Can 8 Learned Tokens Do for Images and Videos? Source: Improving Vision Transformer Efficiency and Accuracy by Learning to Tokenize

Caiyong Wang 14 Sep 20, 2022
A way to store images in YAML.

YAMLImg A way to store images in YAML. I made this after seeing Roadcrosser's JSON-G because it was too inspiring to ignore this opportunity. Installa

5 Mar 14, 2022
PyTorch code for the paper: FeatMatch: Feature-Based Augmentation for Semi-Supervised Learning

FeatMatch: Feature-Based Augmentation for Semi-Supervised Learning This is the PyTorch implementation of our paper: FeatMatch: Feature-Based Augmentat

43 Nov 19, 2022
Anonymize BLM Protest Images

Anonymize BLM Protest Images This repository automates @BLMPrivacyBot, a Twitter bot that shows the anonymized images to help keep protesters safe. Us

Stanford Machine Learning Group 40 Oct 13, 2022
Multi Task RL Baselines

MTRL Multi Task RL Algorithms Contents Introduction Setup Usage Documentation Contributing to MTRL Community Acknowledgements Introduction M

Facebook Research 171 Jan 09, 2023
Convert ONNX model graph to Keras model format.

Convert ONNX model graph to Keras model format.

Grigory Malivenko 175 Dec 28, 2022
Second-order Attention Network for Single Image Super-resolution (CVPR-2019)

Second-order Attention Network for Single Image Super-resolution (CVPR-2019) "Second-order Attention Network for Single Image Super-resolution" is pub

516 Dec 28, 2022
Implementation for the "Surface Reconstruction from 3D Line Segments" paper.

Surface Reconstruction from 3D Line Segments Surface reconstruction from 3d line segments. Langlois, P. A., Boulch, A., & Marlet, R. In 2019 Internati

85 Jan 04, 2023
An image classification app boilerplate to serve your deep learning models asap!

Image 🖼 Classification App Boilerplate Have you been puzzled by tons of videos, blogs and other resources on the internet and don't know where and ho

Smaranjit Ghose 27 Oct 06, 2022
Dynamic Neural Representational Decoders for High-Resolution Semantic Segmentation

Dynamic Neural Representational Decoders for High-Resolution Semantic Segmentation Requirements This repository needs mmsegmentation Training To train

20 May 28, 2022
CAR-API: Cityscapes Attributes Recognition API

CAR-API: Cityscapes Attributes Recognition API This is the official api to download and fetch attributes annotations for Cityscapes Dataset. Content I

Kareem Metwaly 5 Dec 22, 2022