Paper2vec: Combining Graph and Text Information for Scientific Paper Representation

We present Paper2vec, a novel neural network embedding based approach for creating scientific paper representations which make use of both textual and graph-based information. An academic citation network can be viewed as a graph where individual nodes contain rich textual information. With the current trend of open-access to most scientific literature, we presume that this full text of a scientific article contain vital source of information which aids in various recommendation and prediction tasks concerning this domain. To this end, we propose an approach, Paper2vec, which comprises of information from both the modalities and results in a rich representation for scientific papers. Over the recent past representation learning techniques have been studied extensively using neural networks. However, they are modeled independently for text and graph data. Paper2vec leverages recent research in the broader field of unsupervised feature learning from both graphs and text documents. We demonstrate the efficacy of our representations on three real world academic datasets in two tasks - node classification and link prediction where Paper2vec is able to outperform state-of-the-art by a considerable margin.

[1]  Min-Yen Kan,et al.  Exploiting potential citation papers in scholarly paper recommendation , 2013, JCDL '13.

[2]  Yi Zhang,et al.  Classifying Computer Science Papers , 2016 .

[3]  Ramesh Nallapati,et al.  Link-PLSA-LDA: A New Unsupervised Model for Topics and Influence of Blogs , 2021, ICWSM.

[4]  Thorsten Joachims,et al.  A Probabilistic Analysis of the Rocchio Algorithm with TFIDF for Text Categorization , 1997, ICML.

[5]  Lise Getoor,et al.  Collective Classification in Network Data , 2008, AI Mag..

[6]  Stefan Carlsson,et al.  CNN Features Off-the-Shelf: An Astounding Baseline for Recognition , 2014, 2014 IEEE Conference on Computer Vision and Pattern Recognition Workshops.

[7]  Jason Weston,et al.  Natural Language Processing (Almost) from Scratch , 2011, J. Mach. Learn. Res..

[8]  Quoc V. Le,et al.  Distributed Representations of Sentences and Documents , 2014, ICML.

[9]  Jure Leskovec,et al.  node2vec: Scalable Feature Learning for Networks , 2016, KDD.

[10]  Mingzhe Wang,et al.  LINE: Large-scale Information Network Embedding , 2015, WWW.

[11]  Jeffrey Dean,et al.  Distributed Representations of Words and Phrases and their Compositionality , 2013, NIPS.

[12]  Steven Skiena,et al.  DeepWalk: online learning of social representations , 2014, KDD.

[13]  Niloy Ganguly,et al.  Computer science fields as ground-truth communities: Their impact, rise and fall , 2013, 2013 IEEE/ACM International Conference on Advances in Social Networks Analysis and Mining (ASONAM 2013).

[14]  Deli Zhao,et al.  Network Representation Learning with Rich Text Information , 2015, IJCAI.