A Multi-User Perspective for Personalized Email Communities
Waqas Nawaz, Kifayat-Ullah Khan, Young-Koo Lee

TL;DR
This paper introduces a multi-user personalized email community detection method that leverages structural and semantic data to improve email filtering, contact suggestion, and community understanding.
Contribution
It extends email community detection by considering subsets of users incrementally, combining structural and semantic analysis for enhanced personalization.
Findings
Achieved 80% interaction coverage among email users.
Reduced search space by 14%.
Improved clustering coefficient by 25%.
Abstract
Email classification and prioritization expert systems have the potential to automatically group emails and users as communities based on their communication patterns, which is one of the most tedious tasks. The exchange of emails among users along with the time and content information determine the pattern of communication. The intelligent systems extract these patterns from an email corpus of single or all users and are limited to statistical analysis. However, the email information revealed in those methods is either constricted or widespread, i.e. single or all users respectively, which limits the usability of the resultant communities. In contrast to extreme views of the email information, we relax the aforementioned restrictions by considering a subset of all users as multi-user information in an incremental way to extend the personalization concept. Accordingly, we propose a…
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