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semi-supervized-learning
- A PhD thesis on Semi-supervised learning with Graphs by Xiaojin Zhu. Focuses on creating graphs, based on a mixture of labeled and unlabeled data (as per the semi-supervised learning paradigm) and using processes on these graphs to propagate in rigo
image-study
- 多示例学习是与监督学习、非监督学习和强化学习并列的第四类学习框架,目前已广泛应用于药物设计、图像搜索等领域,并已获得很好的效果。在多示例学习中,训练样本是由多个示例组成的包,包是有概念标记的,但示例本身却没有概念标记,学习的目的是预测新包的类别。-Multi-instance learning and supervised learning, unsupervised learning and reinforcement learning tied for the fourth-class le
Classificationofhyper_magebasedonBEMD
- Abstract : As a powerful tool for image processing ,bi-dimensional empirical mode decomposition ( BEMD) covers a wide range of applications. In this paper ,we explore a novel hyperspectral classification algorithm which integrates BEMD and s
output.pdf.tar
- supervised versus unsupervised method
Graves2008c
- Supervised Sequence Labelling with Recurrent Neural Networks
AL-MULTICLASS
- Documentation for active learning and Semi supervised Learning two important machine learning algorithm
