English

Expert Recommendation via Tensor Factorization with Regularizing Hierarchical Topical Relationships

Information Retrieval 2018-08-08 v2

Abstract

Knowledge acquisition and exchange are generally crucial yet costly for both businesses and individuals, especially when the knowledge concerns various areas. Question Answering Communities offer an opportunity for sharing knowledge at a low cost, where communities users, many of whom are domain experts, can potentially provide high-quality solutions to a given problem. In this paper, we propose a framework for finding experts across multiple collaborative networks. We employ the recent techniques of tree-guided learning (via tensor decomposition), and matrix factorization to explore user expertise from past voted posts. Tensor decomposition enables to leverage the latent expertise of users, and the posts and related tags help identify the related areas. The final result is an expertise score for every user on every knowledge area. We experiment on Stack Exchange Networks, a set of question answering websites on different topics with a huge group of users and posts. Experiments show our proposed approach produces steady and premium outputs.

Keywords

Cite

@article{arxiv.1808.01092,
  title  = {Expert Recommendation via Tensor Factorization with Regularizing Hierarchical Topical Relationships},
  author = {Chaoran Huang and Lina Yao and Xianzhi Wang and Boualem Benatallah and Shuai Zhang and Manqing Dong},
  journal= {arXiv preprint arXiv:1808.01092},
  year   = {2018}
}

Comments

16th International Conference on Service Oriented Computing (ICSOC 2018). Hanzhou, China, Nov 12 - Nov. 15, 2018

R2 v1 2026-06-23T03:23:32.034Z