Abstract

Internet telephony permit callers to manage self-asserted profiles without any subscription contract nor identification proof. These cost-free services have attracted many telemarketers and spammers who generate unsolicited nuisance calls. Upon detection, they simply rejoin the network with a new identity to continue their malicious activities. Nuisance calls are highly disruptive when compared to email and social spam. They not only include annoying telemarketing calls but also contain scam and voice phishing which involves security risk for subscribers. Therefore, it remains a major challenge for Internet telephony providers to detect and avoid nuisance calls efficiently. In this paper, we present a new approach that uses caller reputation to detect different kinds of nuisance calls generated in the network. The reputation is computed in a hybrid manner by extracting information from call data records and using recommendations from reliable communicating participants. The behavior of the caller is assessed by extracting call features such as call-rate, call duration, and call density. Long term and short term reputations are computed to quickly detect the changing behavior of callers. Furthermore, our approach involves an efficient mechanism to combat whitewashing attacks performed by malicious callers to continue generating nuisance calls in the network. We conduct simulations to compute the performance of our proposed model. The experiments conclude that the proposed reputation model is an effective method to detect different types of nuisance calls while avoiding false detection of legitimate calls.

Highlights

  • Internet Telephony has revolutionized our communication way

  • We provide a reputation model to detect malicious callers in the network that generate nuisance calls

  • With 25% distinct callers the False Positive Rate is above 0.5. This leads to a high number of legitimate calls falsely detected as nuisance calls which are damaging to the reputation of the service provider

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Summary

Introduction

Internet Telephony has revolutionized our communication way. Solutions like Skype, Whatsapp, and Viber offer globally accessible, cost-effective, flexible, and convenient communication services. It focuses on the manipulation of the social context between communication parties to attack the victim These threats are realized over Internet telephony by generating nuisance calls. Behavioral-based mechanisms [11,12,13,14,15] are the most effective in identifying spammers, but they generate a high false-negative rate as certain legitimate callers are falsely detected as spammers All these solutions are subject to whitewashing attacks, as they assume that a spammer will spend a considerable duration in the network without changing its identity.

Related Work
Nuisance Call
Classification
Characteristics
Caller Reputation Model
Feature Module
Recommendation System
Reputation Evaluation
Status Module
Decision Module
Experimentation and Results
Simulation Setup
Performance Evaluation
Exp 1: Impact of Recommendation
Exp 2: Computing Detection Accuracy
Exp 3: Efficiency Against Whitewashing Attacks
Exp 4: Performance Comparison with PMG and DEVS
Conclusions
Full Text
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