Active Learning Project
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Updated
Jan 30, 2017 - MATLAB
Active Learning Project
ALPUD: Active Learning from Positive and Unlabeled Data
Domain Adaptation by Transferring Model-Complexity Priors Across Tasks Paper Experiments
Active Learning combining Online Semi-Supervised Dictionary Learning
Active versus Passive exploration
This repository contains the code to reproduce all of the results in our paper: Nuclear discrepancy for single-shot batch active learning, Tom J Viering, Jesse H Krijthe, Marco Loog, in Machine Learning 2019.
The code of ''Single Shot Active Learning using Pseudo Annotators"
The Matlab code of "A Variance Maximization Criterion for Active Learning"
Matlab source code of the paper: D. Wu, "Pool-based sequential active learning for regression," IEEE Trans. on Neural Networks and Learning Systems, 30(5), pp. 1348-1359, 2019.
Matlab source code of the paper: D. Wu*, C-T Lin and J. Huang*, "Active Learning for Regression Using Greedy Sampling," Information Sciences, vol. 474, pp. 90-105, 2019.
Matlab code of the IRD algorithm in the paper: 刘子昂, 蒋雪, 伍冬睿, "基于池的无监督线性回归主动学习," 自动化学报, 2020. Or the English version here: https://arxiv.org/pdf/2001.05028.pdf
Gaussian Processes for Cyclic Voltammetry
Project source code and data for risk estimation with an imperfect Machine learning model
Matlab source code of the iRDM algorithm in the paper: Z. Liu, X. Jiang, H. Luo, W. Fang, J. Liu and D. Wu*, "Pool-Based Unsupervised Active Learning for Regression Using Iterative Representativeness-Diversity Maximization (iRDM)," Pattern Recognition Letters, 142:11-19, 2021.
A toolbox for Weighted Sparse Simplex Representation (WSSR).
The demo partially associated with the following papers: "Spatial Prior Fuzziness Pool-Based Interactive Classification of Hyperspectral Images" and "Multiclass Non-Randomized Spectral–Spatial Active Learning for Hyperspectral Image Classification".
Language Agnostic Syllabification with Active Learning
Active learning-guided exploration of parameter space of air plasmas to enhance the energy efficiency of NO x production
This is a repository associated with the paper "Near-optimal sampling strategies for multivariate function on general domains" by Ben Adcock and Juan M. Cardenas available at https://epubs.siam.org/doi/10.1137/19M1279459 and https://arxiv.org/abs/1908.01249
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