This paper proposes a novel semi-supervised dimensionality reduction learning algorithm for the ranking problem. Generally, we do not make the assumption of existence of classes and do not want to find the classification boundaries. Instead, we only assume that the data point cloud can construct a graph which describes the manifold structure, and there are multiple concepts on different parts of the manifold. By maximizing the distance between different concepts and simultaneously preserving the local structure on the manifold, the learned metric can indeed give good ranking results. Moreover, based on the theoretical analysis of the relationship between graph Laplacian and manifold Laplace-Beltrami operator, we develop an online learning a...
Learning to rank has been demonstrated as a powerful tool for image ranking, but the issue of the “c...
We propose a unified manifold learning framework for semi-supervised and unsupervised dimension redu...
Abstract — Understanding the structure of multidimensional patterns, especially in unsupervised case...
In this paper, we propose a nonlinear dimensionality reduction method aimed at extracting lower-dime...
Manifold Ranking is a graph-based ranking algorithm be-ing successfully applied to retrieve images f...
Manifold ranking (MR), as a powerful semi-supervised learning algorithm, plays an important role to ...
Constructing a powerful graph that can effectively depict the intrinsic connection of data points is...
One of the challenges in image search is to learn with few labeled examples. Existing solutions main...
A new general dimension reduction framework based on similar and dissimilar metric learning is propo...
Abstract. Inmanymachine learningproblems,high-dimensionaldatasets often lie on or near manifolds of ...
Image feature space is typically complex due to the high dimensionality of data. Effective handling ...
International audienceSupervised manifold learning methods learn data representations by preserving ...
Many real life applications involve the ranking of objects instead of their classification. For exam...
In a typical content-based image retrieval (CBIR) system, images are represented as vectors and simi...
Learning-to-rank techniques have shown promising results in the domain of image ranking recently, wh...
Learning to rank has been demonstrated as a powerful tool for image ranking, but the issue of the “c...
We propose a unified manifold learning framework for semi-supervised and unsupervised dimension redu...
Abstract — Understanding the structure of multidimensional patterns, especially in unsupervised case...
In this paper, we propose a nonlinear dimensionality reduction method aimed at extracting lower-dime...
Manifold Ranking is a graph-based ranking algorithm be-ing successfully applied to retrieve images f...
Manifold ranking (MR), as a powerful semi-supervised learning algorithm, plays an important role to ...
Constructing a powerful graph that can effectively depict the intrinsic connection of data points is...
One of the challenges in image search is to learn with few labeled examples. Existing solutions main...
A new general dimension reduction framework based on similar and dissimilar metric learning is propo...
Abstract. Inmanymachine learningproblems,high-dimensionaldatasets often lie on or near manifolds of ...
Image feature space is typically complex due to the high dimensionality of data. Effective handling ...
International audienceSupervised manifold learning methods learn data representations by preserving ...
Many real life applications involve the ranking of objects instead of their classification. For exam...
In a typical content-based image retrieval (CBIR) system, images are represented as vectors and simi...
Learning-to-rank techniques have shown promising results in the domain of image ranking recently, wh...
Learning to rank has been demonstrated as a powerful tool for image ranking, but the issue of the “c...
We propose a unified manifold learning framework for semi-supervised and unsupervised dimension redu...
Abstract — Understanding the structure of multidimensional patterns, especially in unsupervised case...