We consider the general problem of learning from labeled and unlabeled data, which is often called semi-supervised learning or transductive inference. A principled approach to semi-supervised learning is to design a classifying function which is sufficiently smooth with respect to the intrinsic structure collectively revealed by known labeled and unlabeled points. We present a simple algorithm to obtain such a smooth solution. Our method yields encouraging experimental results on a number of classification problems and demonstrates effective use of unlabeled data
We propose a unified perspective of a large family of semi-supervised learning algorithms, which sel...
We propose a unified perspective of a large family of semi-supervised learning algorithms, which sel...
This thesis focuses on how unlabeled data can improve supervised learning classi-fiers in all contex...
We consider the general problem of learning from labeled and unlabeled data, which is often called s...
We consider the general problem of learning from labeled and unlabeled data, which is often called s...
We consider the general problem of learning from labeled and unlabeled data, which is often called s...
We consider the general problem of learning from labeled and unlabeled data, which is often called s...
We consider the general problem of learning from labeled and unlabeled data, which is often called s...
We consider the general problem of learning from labeled and unlabeled data, which is often called s...
We consider the learning problem in the transductive setting. Given a set of points of which only so...
We consider the learning problem in the transductive setting. Given a set of points of which only so...
We consider the general problem of learning from labeled and unlabeled data, which is often called s...
Due to its occurrence in engineering domains and implications for natural learning, the problem of u...
Classification of partially labeled data requires linking the unlabeled input distribution P (x) wit...
Abstract. Semi-supervised learning and active learning are important techniques to solve the shortag...
We propose a unified perspective of a large family of semi-supervised learning algorithms, which sel...
We propose a unified perspective of a large family of semi-supervised learning algorithms, which sel...
This thesis focuses on how unlabeled data can improve supervised learning classi-fiers in all contex...
We consider the general problem of learning from labeled and unlabeled data, which is often called s...
We consider the general problem of learning from labeled and unlabeled data, which is often called s...
We consider the general problem of learning from labeled and unlabeled data, which is often called s...
We consider the general problem of learning from labeled and unlabeled data, which is often called s...
We consider the general problem of learning from labeled and unlabeled data, which is often called s...
We consider the general problem of learning from labeled and unlabeled data, which is often called s...
We consider the learning problem in the transductive setting. Given a set of points of which only so...
We consider the learning problem in the transductive setting. Given a set of points of which only so...
We consider the general problem of learning from labeled and unlabeled data, which is often called s...
Due to its occurrence in engineering domains and implications for natural learning, the problem of u...
Classification of partially labeled data requires linking the unlabeled input distribution P (x) wit...
Abstract. Semi-supervised learning and active learning are important techniques to solve the shortag...
We propose a unified perspective of a large family of semi-supervised learning algorithms, which sel...
We propose a unified perspective of a large family of semi-supervised learning algorithms, which sel...
This thesis focuses on how unlabeled data can improve supervised learning classi-fiers in all contex...