نتایج جستجو برای: label graphoidal graph
تعداد نتایج: 258357 فیلتر نتایج به سال:
Multi-label classification aims to recognize multiple objects or attributes from images. The key solving this issue relies on effectively characterizing the inter-label correlations dependencies, which bring prevailing graph neural network. However, current methods often use co-occurrence probability of labels based training set as adjacency matrix model correlation, is greatly limited by datas...
As a major family of semi-supervised learning (SSL), graph-based SSL has recently attracted considerable interest in the machine learning community along with application areas such as video semantic analysis. In this paper, we analyze the connections between graph-based SSL and partial differential equation(PDE) based diffusion. From the viewpoint of PDE-based diffusion, the label propagation ...
In the literature, most existing graph-based semisupervised learning (SSL) methods only use the label information of observed samples in the label propagation stage, while ignoring such valuable information when learning the graph. In this paper, we argue that it is beneficial to consider the label information in the graph learning stage. Specifically, by enforcing the weight of edges between l...
We address a largely open problem of multilabel classification over graphs. Unlike traditional vector input, graph has rich variable-size structures, that suggests complex relationships between labels and subgraphs. Uncovering these relations might hold the keys of classification performance and explainability. To this end, we design GAML (Graph Attentional Multi-Label learning), a graph neural...
We consider the problem of inferring node labels in a partially labeled graph where each node in the graph has multiple label types and each label type has a large number of possible labels. Our primary example, and the focus of this paper, is the joint inference of label types such as hometown, current city, and employers for people connected by a social network; by predicting these user profi...
We tackle the problem of inferring node labels in a partially labeled graph where each node in the graph has multiple label types and each label type has a large number of possible labels. Our primary example, and the focus of this paper, is the joint inference of label types such as hometown, current city, and employers, for users connected by a social network. Standard label propagation fails...
In many real applications of text mining, information retrieval and natural language processing, large-scale features are frequently used, which often make the employed machine learning algorithms intractable, leading to the well-known problem “curse of dimensionality”. Aiming at not only removing the redundant information from the original features but also improving their discriminating abili...
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