Prior arts stay at the foundation for future work in academic research. However the increasingly large amount of publications make it difficult for researchers to effectively discover the most important previous works to the topic of their research. In this paper, we study the automatic discovery of the core papers for a research area. We propose a collective topic model on three types of objects: papers, authors and published venues. We model any of these objects as bags of citations. Based on Probabilistic latent semantic analysis (PLSA), authorship, published venues and citation relations are used for quantifying paper importance. Our method discusses milestone paper discovery in different cases of input objects. Experiments on the ACL A...
An essential part of an expert-finding task, such as matching reviewers to submitted papers, is the ...
Topic modeling is a type of statistical model for discovering the latent "topics" that occur in a co...
This paper addresses the problem of scientific research analysis. We use the topic model Latent Diri...
Prior arts stay at the foundation for future work in aca-demic research. However the increasingly la...
Much of scientific progress stems from previously published findings, but searching through the vast...
Measurements of the impact and history of research literature provide a useful complement to scienti...
Understanding how research themes evolve over time in a research community is useful in many ways (e...
Citation analysis does not tell the whole story about the innovativeness of scientific papers. Works...
Bibliographic analysis considers the author’s research areas, the citation network and the paper con...
It is estimated that the world’s data will increase to roughly 160 billion terabytes by 2025, with m...
Topic models are a well known clustering approach for textual data, which provides promising applica...
International audienceKnowledge mining is a young and rapidly growing discipline aiming at automatic...
Abstract—Knowledge discovery from scientific articles has received increasing attentions recently si...
An essential part of an expert-finding task, such as matching reviewers to submitted papers, is the ...
In this paper, we investigate an interpretable definition of promising research topics, complimented...
An essential part of an expert-finding task, such as matching reviewers to submitted papers, is the ...
Topic modeling is a type of statistical model for discovering the latent "topics" that occur in a co...
This paper addresses the problem of scientific research analysis. We use the topic model Latent Diri...
Prior arts stay at the foundation for future work in aca-demic research. However the increasingly la...
Much of scientific progress stems from previously published findings, but searching through the vast...
Measurements of the impact and history of research literature provide a useful complement to scienti...
Understanding how research themes evolve over time in a research community is useful in many ways (e...
Citation analysis does not tell the whole story about the innovativeness of scientific papers. Works...
Bibliographic analysis considers the author’s research areas, the citation network and the paper con...
It is estimated that the world’s data will increase to roughly 160 billion terabytes by 2025, with m...
Topic models are a well known clustering approach for textual data, which provides promising applica...
International audienceKnowledge mining is a young and rapidly growing discipline aiming at automatic...
Abstract—Knowledge discovery from scientific articles has received increasing attentions recently si...
An essential part of an expert-finding task, such as matching reviewers to submitted papers, is the ...
In this paper, we investigate an interpretable definition of promising research topics, complimented...
An essential part of an expert-finding task, such as matching reviewers to submitted papers, is the ...
Topic modeling is a type of statistical model for discovering the latent "topics" that occur in a co...
This paper addresses the problem of scientific research analysis. We use the topic model Latent Diri...