Tencent AI Lab 官网
hyperdoc2vec: Distributed Representations of Hypertext Documents
Abstract
Hypertext documents, such as web pages and academic papers, are of great importance in delivering information in our daily life. Although being effective on plain documents, conventional text embedding methods suffer from information loss if directly adapted to hyper-documents. In this paper, we propose a general embedding approach for hyper-documents, namely, hyperdoc2vec, along with four criteria characterizing necessary information that hyper-document embedding models should preserve. Systematic comparisons are conducted between hyperdoc2vec and several competitors on two tasks, i.e., paper classification and citation recommendation, in the academic paper domain. Analyses and experiments both validate the superiority of hyperdoc2vec to other models w.r.t. the four criteria.
Venue
2018 ACL
Publication Time
2018
Authors
Jialong Han, Yan Song, Wayne Xin Zhao, Shuming Shi, Haisong Zhang