Two-layered Blogger identification model integrating profile and instance-based methods
作者:Haytham Mohtasseb, Amr Ahmed
摘要
This paper introduces a two-layered framework that improves the result of authorship identification within larger sample numbers of bloggers as compared with earlier work. Previous studies are mainly divided into two categories: profile-based and instance-based methods. Each of these approaches has its advantages and limitations. The two-layered framework presented here integrates the two previous approaches and presents a new solution to a key problem in authorship identification, namely the drop in accuracy experienced as the number of authors increases. The paper begins by illustrating the regular instance-based core model and the investigated features. It then introduces a new psycholinguistic profile representation of authors, presents similarity grouping extraction over profiles, and applies blogger identification utilizing the two-layered approach. The results confirm the improvement introduced by the proposed two-layered approach against our regular classifier, as well as a selected baseline, for an extended number of users.
论文关键词:Blog mining, Authorship identification, User representation, Group extraction, Profile modeling
论文评审过程:
论文官网地址:https://doi.org/10.1007/s10115-011-0398-0