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Open AccessJournal ArticleDOI

CPSFS: A Credible Personalized Spam Filtering Scheme by Crowdsourcing

TLDR
The experimental results show that the proposed CPSFS can improve the accuracy rate of distinguishing spam from legitimate emails compared with that of Bayesian filter alone.
Abstract
Email spam consumes a lot of network resources and threatens many systems because of its unwanted or malicious content. Most existing spam filters only target complete-spam but ignore semispam. This paper proposes a novel and comprehensive CPSFS scheme: Credible Personalized Spam Filtering Scheme, which classifies spam into two categories: complete-spam and semispam, and targets filtering both kinds of spam. Complete-spam is always spam for all users; semispam is an email identified as spam by some users and as regular email by other users. Most existing spam filters target complete-spam but ignore semispam. In CPSFS, Bayesian filtering is deployed at email servers to identify complete-spam, while semispam is identified at client side by crowdsourcing. An email user client can distinguish junk from legitimate emails according to spam reports from credible contacts with the similar interests. Social trust and interest similarity between users and their contacts are calculated so that spam reports are more accurately targeted to similar users. The experimental results show that the proposed CPSFS can improve the accuracy rate of distinguishing spam from legitimate emails compared with that of Bayesian filter alone.

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Citations
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Journal ArticleDOI

A lifelong spam emails classification model

TL;DR: An enhanced model is proposed for ensuring lifelong spam classification model and the overall performance of the suggested model is contrasted against various other stream mining classification techniques to prove the success of the proposed model as a lifelong spam emails classification method.
Journal ArticleDOI

Blockchain-Based Crowdsourcing Makes Training Dataset of Machine Learning No Longer Be in Short Supply

TL;DR: This paper reviews studies applying mobile crowdsourcing to training dataset collection and annotation and proposes a new possible combination of machine learning and crowdsourcing systems.
Journal ArticleDOI

SentiFilter: A Personalized Filtering Model for Arabic Semi-Spam Content based on Sentimental and Behavioral Analysis

TL;DR: The proposed SentiFilter model is a hybrid model that combines both sentimental and behavioral factors to detect unwanted content for each user towards pre-defined topics and is expected to provide an effective automated solution for filtering semi-spam content in favor of personalized preferences.
Journal ArticleDOI

Hyperparameter Optimization of Ensemble Models for Spam Email Detection

TL;DR: In this paper , the authors developed baseline models of random forest and extreme gradient boost (XGBoost) ensemble algorithms for the detection and classification of spam emails using the Enron1 dataset.
References
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Journal ArticleDOI

On robust image spam filtering via comprehensive visual modeling

TL;DR: A novel system called RoBoTs (Robust BoosTrap based spam detector) is reported to support accurate and robust image spam filtering and achieves substantial performance improvement on spam detection in terms of effectiveness and robustness.
Journal ArticleDOI

Knowledge Sharing in the Online Social Network of Yahoo! Answers and Its Implications

TL;DR: This paper analyzes the online social network (OSN) in Yahoo! Answers and proposes a friendship-knowledge oriented Q&A framework that synergistically combines current OSN-basedQ&A and web Q& a.
Journal ArticleDOI

Social Network Analysis: A Survey

TL;DR: A comprehensive review of social network analysis state of the art research and practice is provided and the authors discuss future directions and the emerging approaches in social networkAnalysis research, notably semantic social networks and social interaction analysis.
Proceedings ArticleDOI

LENS: Leveraging social networking and trust to prevent spam transmission

TL;DR: LENS is a novel spam protection system based on the recipient's social network, which allows correspondence within the social circle to directly pass to the mailbox and further mitigates spam beyond social circles and scales efficiently with increasing community size and GKs.
Journal ArticleDOI

A social network-based trust-aware propagation model for P2P systems

TL;DR: The results show that the trust-aware propagation model can effectively enhance the security and stability of P2P network, and improve the availability of the peer's resources.
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