Open AccessProceedings Article
A Topographic Support Vector Machine: Classification Using Local Label Configurations
Johannes Mohr,Klaus Obermayer +1 more
- 01 Dec 2004
- Vol. 17, pp 929-936
TL;DR: A new method called 'Topographic Support Vector Machine' (TSVM), which is based on a topographic kernel and a self-consistent solution to the label assignment shown to be equivalent to a recurrent neural network is proposed.
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Abstract: The standard approach to the classification of objects is to consider the examples as independent and identically distributed (iid). In many real world settings, however, this assumption is not valid, because a topographical relationship exists between the objects. In this contribution we consider the special case of image segmentation, where the objects are pixels and where the underlying topography is a 2D regular rectangular grid. We introduce a classification method which not only uses measured vectorial feature information but also the label configuration within a topographic neighborhood. Due to the resulting dependence between the labels of neighboring pixels, a collective classification of a set of pixels becomes necessary. We propose a new method called 'Topographic Support Vector Machine' (TSVM), which is based on a topographic kernel and a self-consistent solution to the label assignment shown to be equivalent to a recurrent neural network. The performance of the algorithm is compared to a conventional SVM on a cell image segmentation task.
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Citations
•Posted Content
Scaling Up Sparse Support Vector Machines by Simultaneous Feature and Sample Reduction
TL;DR: This work proposes a novel approach, which is based on accurate estimations of the primal and dual optima of sparse SVMs, to simultaneously identify the inactive features and samples that are guaranteed to be irrelevant to the outputs, and can remove the identified inactive samples and features from the training phase, leading to substantial savings in the computational cost.
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•Journal Article
A fast and efficient segmentation scheme for cell microscopic image.
TL;DR: In this paper, a new decision function quality criterion is defined to select good trade-off between recognition rate and processing time of pixel decision function, which is used for cell segmentation.
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Exploiting multi-context Analysis in Semantic Image Classification
TL;DR: This paper proposes a new collective classification model called relational support vector classifier (RSVC) based on the well-known Support Vector Machines (SVMs) and the link-based correlation model and shows that the proposed approach significantly improved classification accuracy over that of SVM classifiers using visual and/or textual features.
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Intelligible machine learning with malibu
Robert Langlois,Hui Lu +1 more
- 14 Oct 2008
TL;DR: This workbench handles several well-studied supervised machine learning problems including classification, regression, importance-weighted classification and multiple-instance learning.
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References
Statistical learning theory
Vladimir Vapnik
- 01 Jan 1998
TL;DR: Presenting a method for determining the necessary and sufficient conditions for consistency of learning process, the author covers function estimates from small data pools, applying these estimations to real-life problems, and much more.
30.4K
A logical calculus of the ideas immanent in nervous activity
Warren S. McCulloch,Walter Pitts +1 more
TL;DR: In this article, it is shown that many particular choices among possible neurophysiological assumptions are equivalent, in the sense that for every net behaving under one assumption, there exists another net which behaves under another and gives the same results, although perhaps not in the same time.
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•Proceedings Article
Conditional Random Fields: Probabilistic Models for Segmenting and Labeling Sequence Data
John Lafferty,Andrew McCallum,Fernando Pereira +2 more
- 28 Jun 2001
TL;DR: This work presents iterative parameter estimation algorithms for conditional random fields and compares the performance of the resulting models to HMMs and MEMMs on synthetic and natural-language data.
Learning with Kernels: Support Vector Machines, Regularization, Optimization, and Beyond
Bernhard Schölkopf,Alexander J. Smola +1 more
- 01 Dec 2001
TL;DR: Learning with Kernels provides an introduction to SVMs and related kernel methods that provide all of the concepts necessary to enable a reader equipped with some basic mathematical knowledge to enter the world of machine learning using theoretically well-founded yet easy-to-use kernel algorithms.
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