Context-aware citation recommendation aims to automatically predict suitable citations for a given citation context, which is essentially helpful for researchers when writing scientific papers. In existing neural network-based approaches, overcorrelation in the weight matrix influences semantic similarity, which is a difficult problem to solve. In this paper, we propose a novel context-aware citation recommendation approach that can essentially improve the orthogonality of the weight matrix and explore more accurate citation patterns. We quantitatively show that the various reference patterns in the paper have interactional features that can significantly affect link prediction. We conduct experiments on the CiteSeer datasets. The results s...
Citation recommendation (CR) is able to intelligently generate a paper list related to a query paper...
Citation recommendation is an effective and efficient way to facilitate authors finding desired refe...
Recent advancements in information retrieval systems significantly rely on the context-based feature...
Automatic citation recommendation can be very useful for authoring a paper and is an AI-complete pro...
Citation relationship between scientific publications has been successfully used for scholarly bibli...
In the recent decade, the citation recommendation has emerged as an important research topic due to ...
Citation recommendation is a task that aims to automatically select suitable references for a workin...
Context-aware recommendation (CR) is the task of recommending relevant items by exploring the contex...
The increased pressure of publications makes it more and more difficult for researchers to find appr...
Citation recommendation plays an important role in the context of scholarly big data, where finding ...
When you write papers, how many times do you want to make some citations at a place but you are not ...
© 2017, Springer-Verlag Berlin Heidelberg. Citation recommendation is the task of suggesting a list ...
This work demonstrates how neural network models (NNs) can be exploited toward resolving citation li...
Scientists continue to find challenges in the ever increasing amount of information that has been pr...
Information retrieval systems for scholarly literature rely heavily not only on text matching but on...
Citation recommendation (CR) is able to intelligently generate a paper list related to a query paper...
Citation recommendation is an effective and efficient way to facilitate authors finding desired refe...
Recent advancements in information retrieval systems significantly rely on the context-based feature...
Automatic citation recommendation can be very useful for authoring a paper and is an AI-complete pro...
Citation relationship between scientific publications has been successfully used for scholarly bibli...
In the recent decade, the citation recommendation has emerged as an important research topic due to ...
Citation recommendation is a task that aims to automatically select suitable references for a workin...
Context-aware recommendation (CR) is the task of recommending relevant items by exploring the contex...
The increased pressure of publications makes it more and more difficult for researchers to find appr...
Citation recommendation plays an important role in the context of scholarly big data, where finding ...
When you write papers, how many times do you want to make some citations at a place but you are not ...
© 2017, Springer-Verlag Berlin Heidelberg. Citation recommendation is the task of suggesting a list ...
This work demonstrates how neural network models (NNs) can be exploited toward resolving citation li...
Scientists continue to find challenges in the ever increasing amount of information that has been pr...
Information retrieval systems for scholarly literature rely heavily not only on text matching but on...
Citation recommendation (CR) is able to intelligently generate a paper list related to a query paper...
Citation recommendation is an effective and efficient way to facilitate authors finding desired refe...
Recent advancements in information retrieval systems significantly rely on the context-based feature...