Links among objects contain rich semantics that can be very helpful in classifying the objects. However, many irrelevant links can be found in real-world link data such as Web pages. Often, these noisy and irrelevant links do not provide useful and predictive information for categorization. It is thus important to automatically identify which links are most relevant for categorization. In this paper, we present a contextual dependency network (CDN) model for classifying linked objects in the presence of noisy and irrelevant links. The CDN model makes use of a dependency function that characterizes the contextual dependencies among linked objects. In this way, CDNs can differentiate the impacts of the related objects on the classification an...
In this paper, we tackle the challenges of multi-label classification by developing a general condit...
Following the approach described by Heckerman et al. (Following the approach described by Heckerman...
Recent work on graphical models for relational data has demonstrated significant improvements in cla...
In order to exploit the dependencies in relational data to improve predictions, relational classific...
Generally, links among objects demonstrate certain patterns and contain rich semantic clues. These i...
This paper is about using multiple types of information for classification of networked data in a se...
A large majority of approaches have been proposed to leverage the dependency tree in the relation cl...
In this paper, we propose a novel framework for model-ing image-dependent contextual relationships u...
Abstract—Many information tasks involve objects that are explicitly or implicitly connected in a net...
Abstract. Data describing networks such as social networks, citation graphs, hypertext systems, and ...
The current state-of-the-art in feature learning relies on the supervised learning of large-scale da...
Abstract—Many information tasks involve objects that are explicitly or implicitly connected in a net...
The current state-of-the-art in feature learning relies on the supervised learning of large-scale da...
International audienceDeep Learning is more and more used in NLP tasks, such as in relation classifi...
Instance independence is a critical assumption of tra-ditional machine learning methods contradicted...
In this paper, we tackle the challenges of multi-label classification by developing a general condit...
Following the approach described by Heckerman et al. (Following the approach described by Heckerman...
Recent work on graphical models for relational data has demonstrated significant improvements in cla...
In order to exploit the dependencies in relational data to improve predictions, relational classific...
Generally, links among objects demonstrate certain patterns and contain rich semantic clues. These i...
This paper is about using multiple types of information for classification of networked data in a se...
A large majority of approaches have been proposed to leverage the dependency tree in the relation cl...
In this paper, we propose a novel framework for model-ing image-dependent contextual relationships u...
Abstract—Many information tasks involve objects that are explicitly or implicitly connected in a net...
Abstract. Data describing networks such as social networks, citation graphs, hypertext systems, and ...
The current state-of-the-art in feature learning relies on the supervised learning of large-scale da...
Abstract—Many information tasks involve objects that are explicitly or implicitly connected in a net...
The current state-of-the-art in feature learning relies on the supervised learning of large-scale da...
International audienceDeep Learning is more and more used in NLP tasks, such as in relation classifi...
Instance independence is a critical assumption of tra-ditional machine learning methods contradicted...
In this paper, we tackle the challenges of multi-label classification by developing a general condit...
Following the approach described by Heckerman et al. (Following the approach described by Heckerman...
Recent work on graphical models for relational data has demonstrated significant improvements in cla...