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2016 | OriginalPaper | Buchkapitel

Efficient and Robust Semi-supervised Learning Over a Sparse-Regularized Graph

verfasst von : Hang Su, Jun Zhu, Zhaozheng Yin, Yinpeng Dong, Bo Zhang

Erschienen in: Computer Vision – ECCV 2016

Verlag: Springer International Publishing

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Abstract

Graph-based Semi-Supervised Learning (GSSL) has limitations in widespread applicability due to its computationally prohibitive large-scale inference, sensitivity to data incompleteness, and incapability on handling time-evolving characteristics in an open set. To address these issues, we propose a novel GSSL based on a batch of informative beacons with sparsity appropriately harnessed, rather than constructing the pairwise affinity graph between the entire original samples. Specifically, (1) beacons are placed automatically by unifying the consistence of both data features and labels, which subsequentially act as indicators during the inference; (2) leveraging the information carried by beacons, the sample labels are interpreted as the weighted combination of a subset of characteristics-specified beacons; (3) if unfamiliar samples are encountered in an open set, we seek to expand the beacon set incrementally and update their parameters by incorporating additional human interventions if necessary. Experimental results on real datasets validate that our algorithm is effective and efficient to implement scalable inference, robust to sample corruptions, and capable to boost the performance incrementally in an open set by updating the beacon-related parameters.

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Fußnoten
1
MNIST consists of 70,000 handwritten digits sized 28 \(\times \) 28 with 60,000 training ones, http://​yann.​lecun.​com/​exdb/​mnist/​.
 
2
CIFAR consists of 60,000 32 \(\times \) 32 color images in 10 classes, with 6000 images per class, http://​www.​cs.​toronto.​edu/​~kriz/​cifar.​html.
 
3
CELL contains different types of muscle stem cells of a progeroid mouse in time-lapse microscopy sequences, in which each frame contains 50\(\sim \)800 cells, http://​www.​celltracking.​ri.​cmu.​edu/​downloads.​html.
 
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Metadaten
Titel
Efficient and Robust Semi-supervised Learning Over a Sparse-Regularized Graph
verfasst von
Hang Su
Jun Zhu
Zhaozheng Yin
Yinpeng Dong
Bo Zhang
Copyright-Jahr
2016
DOI
https://doi.org/10.1007/978-3-319-46484-8_35