Abstract

With a tremendous growth in the number of scientific papers, researchers have to spend too much time and struggle to find the appropriate papers they are looking for. Local citation recommendation that provides a list of references based on a text segment could alleviate the problem. Most existing local citation recommendation approaches concentrate on how to narrow the semantic difference between the scientific papers' and citation context's text content, completely neglecting other information. Inspired by the successful use of the encoder-decoder framework in machine translation, we develop an attention-based encoder-decoder (AED) model for local citation recommendation. The proposed AED model integrates venue information and author information in attention mechanism and learns relations between variable-length texts of the two text objects, i.e., citation contexts and scientific papers. Specifically, we first construct an encoder to represent a citation context as a vector in a low-dimensional space; after that, we construct an attention mechanism integrating venue information and author information and use RNN to construct a decoder, then we map the decoder's output into a softmax layer, and score the scientific papers. Finally, we select papers which have high scores and generate a recommended reference paper list. We conduct experiments on the DBLP and ACL Anthology Network (AAN) datasets, and the results illustrate that the performance of the proposed approach is better than the other three state-of-the-art approaches.

Highlights

  • With a tremendous growth in the number of scientific papers, researchers have to spend too much time and struggle to find the appropriate papers they are looking for

  • Inspired by the successful use of the encoder-decoder framework in machine translation, we develop an attention-based encoder-decoder (AED) model for local citation recommendation. e proposed AED model integrates venue information and author information in attention mechanism and learns relations between variable-length texts of the two text objects, i.e., citation contexts and scientific papers

  • Citation recommendation approaches are categorized into two major types: local citation recommendation, which recommends relevant papers based on a citation context [9,10,11], and global citation recommendation, which recommends relevant papers based on a given manuscript [12,13,14,15]. is study focuses on local citation recommendation

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Summary

Introduction

With a tremendous growth in the number of scientific papers, researchers have to spend too much time and struggle to find the appropriate papers they are looking for. Each author has his own word usage, grammar structure, writing style, and personal citation preference, while each venue has its own topic, and it only publishes papers related to that topic Such information which has been neglected by researchers may have direct influence on the local citation recommendation task’s performance, helping researchers find more appropriate references for the given citation context and yielding better performance. In AED model, we first construct an encoder which utilizes TDNN [7] to represent a citation context as a vector in a low-dimensional space, we construct an attention mechanism integrating venue information and author information, and apply RNN to construct a decoder; we map the decoder’s output into a softmax layer and get the score value of scientific papers. (1) An attention mechanism is introduced in the encoder-decoder framework; the attention mechanism combines author and venue information

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