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AgreementBased Semi-supervised Learning for Skull Stripping

by Juan Eugenio Iglesias , Cheng-Yi Liu , Paul Thompson , Zhuowen Tu - in MICCAI , 2010
"... Abstract. Learning-based approaches have become increasingly practical in medical imaging. For a supervised learning strategy, the quality of the trained algorithm (usually a classifier) is heavily dependent on the amount, as well as quality, of the available training data. It is often very time-co ..."
Abstract - Cited by 1 (0 self) - Add to MetaCart
-consuming to obtain the ground truth manual delineations. In this paper, we propose a semi-supervised learning algorithm and show its application to skull stripping in brain MRI. The resulting method takes advantage of existing state-of-the-art systems, such as BET and FreeSurfer, to sample unlabeled data

A co-regularized approach to semi-supervised learning with multiple views

by Vikas Sindhwani, Partha Niyogi - Proceedings of the ICML Workshop on Learning with Multiple Views , 2005
"... The Co-Training algorithm uses unlabeled examples in multiple views to bootstrap classifiers in each view, typically in a greedy manner, and operating under assumptions of view-independence and compatibility. In this paper, we propose a Co-Regularization framework where classifiers are learnt in eac ..."
Abstract - Cited by 98 (4 self) - Add to MetaCart
) and Regularized Least squares (RLS) for multi-view semi-supervised learning, and inherit their benefits and applicability to high-dimensional classification problems. An empirical investigation is presented that confirms the promise of this approach. 1.

Semi-supervised Learning for Automatic Prosodic Event Detection Using Co-training Algorithm

by Je Hun Jeon, Yang Liu
"... Most of previous approaches to automatic prosodic event detection are based on supervised learning, relying on the availability of a corpus that is annotated with the prosodic labels of interest in order to train the classification models. However, creating such resources is an expensive and time-co ..."
Abstract - Cited by 7 (1 self) - Add to MetaCart
-consuming task. In this paper, we exploit semi-supervised learning with the co-training algorithm for automatic detection of coarse level representation of prosodic events such as pitch accents, intonational phrase boundaries, and break indices. We propose a confidence-based method to assign labels to unlabeled

Complexity versus Agreement for Many Views Co-regularization for Multi-view Semi-supervised Learning

by Odalric-ambrym Maillard, Nicolas Vayatis
"... Abstract. The paper considers the problem of semi-supervised multiview classification, where each view corresponds to a Reproducing Kernel Hilbert Space. An algorithm based on co-regularization methods with extra penalty terms reflecting smoothness and general agreement properties is proposed. We fi ..."
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Abstract. The paper considers the problem of semi-supervised multiview classification, where each view corresponds to a Reproducing Kernel Hilbert Space. An algorithm based on co-regularization methods with extra penalty terms reflecting smoothness and general agreement properties is proposed. We

Co-regularizing character-based and word-based models for semi-supervised Chinese word segmentation

by Xiaodong Zeng, Derek F. Wong, Lidia S. Chao, Isabel Trancoso
"... This paper presents a semi-supervised Chinese word segmentation (CWS) approach that co-regularizes character-based and word-based models. Similarly to multi-view learning, the “segmentation agreements ” between the two different types of view are used to overcome the scarcity of the label informatio ..."
Abstract - Cited by 1 (0 self) - Add to MetaCart
This paper presents a semi-supervised Chinese word segmentation (CWS) approach that co-regularizes character-based and word-based models. Similarly to multi-view learning, the “segmentation agreements ” between the two different types of view are used to overcome the scarcity of the label

Semisupervised learning for part-of-speech tagging of Mandarin transcribed speech

by Wen Wang, Zhongqiang Huang, Mary Harper - In ICASSP , 2007
"... In this paper, we investigate bootstrapping part-of-speech (POS) taggers for Mandarin broadcast news (BN) transcripts using co-training, by iteratively retraining two competitive POS taggers from a small set of labeled training data and a large set of unlabeled data. We compare co-training with self ..."
Abstract - Cited by 9 (3 self) - Add to MetaCart
-training with self-training and our results show that the performance using co-training is significantly better than that from selftraining and these semi-supervised learning methods significantly improve tagging accuracy over training only on the small labeled seed corpus. We also investigate a variety of example

Learning Trading Negotiations Using Manually and Automatically Labelled Data

by Simon Keizer, Oliver Lemon
"... Abstract—Strategic conversational agents often need to trade resources with their opponent conversants—and trading strate-gically can lead to better results. While rule-based or super-vised agents can be used for such a purpose, here we explore a learning approach based on automatically labelled exa ..."
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, and (b) winning more games. Keywords-strategic interaction; supervised learning; semi-supervised learning; automatic labelling; board games; I.

Combining Coregularization and Consensus-based Self-Training for Multilingual Text Categorization

by Massih-reza Amini, Cyril Goutte, Nicolas Usunier , 2010
"... We investigate the problem of learning document classifiers in a multilingual setting, from collections where labels are only partially available. We address this problem in the framework of multiview learning, where different languages correspond to different views of the same document, combined wi ..."
Abstract - Cited by 2 (1 self) - Add to MetaCart
with semi-supervised learning in order to benefit from unlabeled documents. We rely on two techniques, coregularization and consensus-based self-training, that combine multiview and semi-supervised learning in different ways. Our approach trains different monolingual classifiers on each of the views

Deformable Organisms and Error Learning for Brain Segmentation

by Gautam Prasad, A. Joshi, Albert Feng, Marina Barysheva, Katie L. Mcmahon, Greig I. De Zubicaray, Nicholas G. Martin, Margaret J. Wright, Arthur W. Toga, Demetri Terzopoulos, Paul M. Thompson , 2011
"... Abstract. Segmentation methods for medical images may not generalize well to different data sets or tasks, hampering their utility. We attempt to remedy these issues using deformable organisms to create an easily customizable segmentation plan. This plan is developed by borrowing ideas from artifici ..."
Abstract - Cited by 1 (0 self) - Add to MetaCart
validate this framework by creating a plan to locate the brain in 3D magnetic resonance images of the head (skull-stripping). This is important for surgical planning, understanding how diseases affect the brain, conducting longitudinal studies, registering brain data, and creating cortical surface models

Co-training with Noisy Perceptual Observations

by C. Mario Christoudias, Raquel Urtasun, Ashish Kapoor, Trevor Darrell
"... Many perception problems involve datasets that are naturally comprised of multiple streams or modalities for which supervised training data is only sparsely available. In cases where there is a degree of conditional independence between such views, a class of semisupervised learning techniques that ..."
Abstract - Cited by 8 (1 self) - Add to MetaCart
Many perception problems involve datasets that are naturally comprised of multiple streams or modalities for which supervised training data is only sparsely available. In cases where there is a degree of conditional independence between such views, a class of semisupervised learning techniques
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