Fast and customizable framework for automatic ML model creation (AutoML)
-
Updated
Nov 2, 2024 - Python
Fast and customizable framework for automatic ML model creation (AutoML)
A multi-platform GUI for bit-based analysis, processing, and visualization
Binary and Categorical Focal loss implementation in Keras.
Credit risk analysis for credit card applicants
Code for Java Deep Learning Cookbook
autosklearn-zeroconf is a fully automated binary classifier. It is based on the AutoML challenge winner auto-sklearn. Give it a dataset with known outcomes (labels) and it returns a list of predicted outcomes for your new data. It even estimates the precision for you! The engine is tuning massively parallel ensemble of machine learning pipelines…
Text classification with Convolution Neural Networks on Yelp, IMDB & sentence polarity dataset v1.0
Detecting Autism Spectrum Disorder in Children With Computer Vision - Adapting facial recognition models to detect Autism Spectrum Disorder
2017-CCF-BDCI-企业经营退出风险预测:9th/569 (Top 1.58%)
🧹 Formerly for binary classification with noisy labels. Replaced by cleanlab.
1st place solution of RSNA Screening Mammography Breast Cancer Detection competition on Kaggle: https://www.kaggle.com/competitions/rsna-breast-cancer-detection
The binclass-tools package contains a set of Python wrappers and interactive plots that facilitate the analysis of binary classification problems.
2018 - Kaggle - TalkingData AdTracking Fraud Detection Challenge: Silver medal (银牌)
Simple Transparent End-To-End Automated Machine Learning Pipeline for Supervised Learning in Tabular Binary Classification Data
A memory efficient GBDT on adaptive distributions. Much faster than LightGBM with higher accuracy. Implicit merge operation.
[ICMLSC 2018] On Breast Cancer Detection: An Application of Machine Learning Algorithms on the Wisconsin Diagnostic Dataset
2018-腾讯广告算法大赛-相似人群拓展(初赛):10th/1563 (Top 0.64%)
Fully supervised binary classification of skin lesions from dermatoscopic images using an ensemble of diverse CNN architectures (EfficientNet-B6, Inception-V3, SEResNeXt-101, SENet-154, DenseNet-169) with multi-scale input.
A set of deep learning models for FRB/RFI binary classification.
Add a description, image, and links to the binary-classification topic page so that developers can more easily learn about it.
To associate your repository with the binary-classification topic, visit your repo's landing page and select "manage topics."