PyTorch-Based Evaluation Tool for Co-Saliency Detection
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Updated
Dec 12, 2020 - Python
PyTorch-Based Evaluation Tool for Co-Saliency Detection
run a multitude of classifiers on you data and get an AUC report
Three fast ROC AUC calculation implementations for python
Evaluation of supervised predictions for two-class and multi-class classifiers
Test comparison of two VAD models with English and multilingual speech datasets
Get performance metrics and graphs of a scorecard
Evaluating machine learning methods for detecting sleep arousal, bachelor thesis by Jacob Stachowicz and Anton Ivarsson (2019)
Ambulatory glucose profile analysis tool
A hyperopt wrapper - simplifying hyperparameter tuning with Scikit-learn style estimators.
calculate ROC curve and find threshold for given accuracy
An end-to-end Machine Learning web app that visualizes actual data vs future predictions using Logistic Regression, all wrapped in an interactive Streamlit dashboard.
Synthetic Minority Over-sampling Technique Implementation
Solution to Hackerearth Machine Learning Challenge 3
Python and sklearn, KNN, logistic and linear regression, cross-validation
A collection of statistical methods
😉实现链路预测局部算法,并有AUC,精确度,时间三个指标,使用node2vec发现社区
EC60091-Machine Intelligence & Expertise Systems Course,Autumn-2019
Kaggle Competition - Analysis and prediction of PUBG players' finishing placement based on their final stats
Python code to obtain metrics like receiver operating characteristics (ROC) curve and area under the curve (AUC) from scratch without using in-built functions.
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