On the feasibility of crawling-based attacks against recommender systems

2021 ◽  
pp. 1-23
Author(s):  
Fabio Aiolli ◽  
Mauro Conti ◽  
Stjepan Picek ◽  
Mirko Polato

Nowadays, online services, like e-commerce or streaming services, provide a personalized user experience through recommender systems. Recommender systems are built upon a vast amount of data about users/items acquired by the services. Such knowledge represents an invaluable resource. However, commonly, part of this knowledge is public and can be easily accessed via the Internet. Unfortunately, that same knowledge can be leveraged by competitors or malicious users. The literature offers a large number of works concerning attacks on recommender systems, but most of them assume that the attacker can easily access the full rating matrix. In practice, this is never the case. The only way to access the rating matrix is by gathering the ratings (e.g., reviews) by crawling the service’s website. Crawling a website has a cost in terms of time and resources. What is more, the targeted website can employ defensive measures to detect automatic scraping. In this paper, we assess the impact of a series of attacks on recommender systems. Our analysis aims to set up the most realistic scenarios considering both the possibilities and the potential attacker’s limitations. In particular, we assess the impact of different crawling approaches when attacking a recommendation service. From the collected information, we mount various profile injection attacks. We measure the value of the collected knowledge through the identification of the most similar user/item. Our empirical results show that while crawling can indeed bring knowledge to the attacker (up to 65% of neighborhood reconstruction on a mid-size dataset and up to 90% on a small-size dataset), this will not be enough to mount a successful shilling attack in practice.

2016 ◽  
Vol 2016 ◽  
pp. 1-18 ◽  
Author(s):  
Wei Yan ◽  
Youwei Li ◽  
Ying Wu ◽  
Mark Palmer

Organizing and managing channels of distribution is an important marketing task. Due to the emergence of electronic commerce on the Internet, e-channel distribution systems have been adopted by many manufacturers. However, academic and anecdotal evidence both point to the pressures arising from this new e-channel manufacturing environment. Question marks therefore remain on how the addition of this e-channel affects the traditional marketing strategies of leasing and selling. We set up several two-period dual-channel models in which a manufacturer sells a durable product through both a manufacturer-owned e-channel and an independent reseller (leaser) who adopts selling (leasing) to consumers. Our main results indicate that, direct selling cost aside, product durability plays an important role in shaping the strategies of all members. With either marketing strategy, the additional expansion of an e-channel territory may secure Pareto gains, in which all members benefit.


Author(s):  
Li Yang ◽  
Xinxin Niu

AbstractShilling attacks have been a significant vulnerability of collaborative filtering (CF) recommender systems, and trust in CF recommender algorithms has been proven to be helpful for improving the accuracy of system recommendations. As a few studies have been devoted to trust in this area, we explore the benefits of using trust to resist shilling attacks. Rather than simply using user-generated trust values, we propose the genre trust degree, which differ in terms of the genres of items and take both trust value and user credibility into consideration. This paper introduces different types of shilling attack methods in an attempt to study the impact of users’ trust values and behavior features on defending against shilling attacks. Meanwhile, it improves the approach used to calculate user similarities to form a recommendation model based on genre trust degrees. The performance of the genre trust-based recommender system is evaluated on the Ciao dataset. Experimental results demonstrated the superior and comparable genre trust degrees recommended for defending against different types of shilling attacks.


2021 ◽  
Vol 5 (3) ◽  
pp. 2-12
Author(s):  
Alisher Rustamov ◽  
◽  
Fayzi Bekkamov

Background. In this article, we look at the key advances in collaborative filtering recommender systems, focusing on the evolution from research focused solely on algorithms to research focused on the broad set of issues surrounding user experience with the recommender. The Internet provides a huge a


2011 ◽  
Vol 121-126 ◽  
pp. 3719-3725
Author(s):  
Yan Jin ◽  
Kee Wook Rim ◽  
Kee Cheon Kim ◽  
Min Wei

The duplicate address detection (DAD) has been a time-costly and a bottleneck in IP address configuration. The dynamic host configuration protocol (DHCP) was proposed and adopted to effectively assign unique address to a host. However, DHCP is not suitable for networks with a large number of nodes, and address renumbering under DHCP would be much more complicated than that under stateless auto-configuration. In vehicular networks, moving vehicles get connected to the Internet through the access point set up by the road. The handoff operation is supposed to happen frequently due to the fast moving of vehicles. Therefore, the performance of handoff becomes one of the most important issues to maintain seamlessly connection to the Internet in vehicular environment. In this paper, we propose a multi-hop group assisted handoff algorithm to effectively reduce handoff latency for avoiding the impact of time-consuming from IP configuration operation.


2018 ◽  
Vol 45 (3) ◽  
pp. 387-397 ◽  
Author(s):  
Elias Pimenidis ◽  
Nikolaos Polatidis ◽  
Haralambos Mouratidis

This article identifies the factors that have an impact on mobile recommender systems. Recommender systems have become a technology that has been widely used by various online applications in situations where there is an information overload problem. Numerous applications such as e-Commerce, video platforms and social networks provide personalised recommendations to their users and this has improved the user experience and vendor revenues. The development of recommender systems has been focused mostly on the proposal of new algorithms that provide more accurate recommendations. However, the use of mobile devices and the rapid growth of the Internet and networking infrastructure have brought the necessity of using mobile recommender systems. The links between web and mobile recommender systems are described along with how the recommendations in mobile environments can be improved. This work is focused on identifying the links between web and mobile recommender systems and to provide solid future directions that aim to lead in a more integrated mobile recommendation domain.


Author(s):  
Mohammad Mubarak Al-hjouj

The study aimed to identify the effects faced by radio from new technologies and applications that have been able to attract a lot of audience traditional media, especially radio. To achieve this goal descriptive approach used methods, a tactic survey the public media, using the tool questionnaire, and then applied on a random sample of the Jordanian public in order to stand on their attitudes towards the Internet and its applications on the effects of listening to the radio. The study proved that the Internet and its applications impacted adversely on listening to the radio, where the ratio came from listening to the Jordanian public 39% versus 61% for to the radio. The study showed that the most important reasons for the Jordanian public to listen to radio stations is to satisfy recreational, cultural and scientific desires, and love of the Jordanian public to some of the broadcasters who provide programs and radio stations will help to know what is going on from the events. The study showed that there is dissatisfaction by the Jordanian public about the programs offered by the radio, where he said that 55% of the study sample who listen to the radio. From these results will be achieved hypotheses and the study of the theory relied on by the study and followed the approach uses the theory. The study recommends the importance of working to improve the quality of programs offered by the radio and to the satisfaction of listeners, and to increase the broadcast hours of programs that attract public radio institutions. Reconnaissance work ray studies to the public periodically to learn about their needs and desires. Supplying radio institutions modern techniques that would maintain the audience, and supplement her human cadres qualified and capable of using communication technology and increased awareness among workers about the concept of communication technology to the technique of active impact on the performance of radio stations, and set up special centers set the media production enterprise quality media. The study recommends researchers to conduct further research and studies for the radio service and support for its survival in the media arena.


2021 ◽  
Vol 9 (1) ◽  
pp. 472-478
Author(s):  
M Ashish Kumar, Yudhvir Singh, Vikas Siwach, Harkesh Sehrawat

Recommender systems are the backbone of all the prediction-based service platforms e.g. Facebook, Amazon, LinkedIn etc. Even companies now a days are using the recommender systems to show users personalized ads. These service providers capture the right audience for their services/ products and hence, improve overall sales. Social networking platforms are using recommender systems for connecting people of similar interests which is almost impossible without recommender systems.  Collaborative filtering-based recommender system is most widely used recommender system. It is used in this research to predict the rating for a specific movie. Accuracy of the prediction define the performance of the overall system. The quality of predictions is degraded by the attackers by injection of fake profiles. In this paper, the various types of profile injection attacks are explained and the attack scenario gets extended to measure the performance of these attacks. Empirical results on the real world publicly available data set shows that these attacks are highly vulnerable. The impact of these attacks in several conditions has been measured and it is tried to find the scenarios where these attacks are more powerful.


Author(s):  
Panagiotis Zaharias ◽  
Ioanna Chatzeparaskevaidou ◽  
Fani Karaoli

Serious games have gained momentum during last and current decade and research findings indicate they can be fertile and effective learning tools. While there are several studies dealing with 2-dimensional and 3-dimensional serious games in education, there is a dearth of relevant empirical research in formal educational settings that compares their effectiveness. In this study, two versions (2-dimensional and 3-dimensional) of a serious educational game on geography, were developed and offered in eight elementary schools. An experimental process was set up and the investigation was focused on the impact of using the two game versions, regarding motivation to learn and user experience. Both versions had a positive impact on learning, confirming thus the advantages of serious games in education. 2D version had a greater impact comparing to 3D, regarding learning, while 3D version had a greater impact on motivation to learn and user experience.


Crisis ◽  
2017 ◽  
Vol 38 (3) ◽  
pp. 207-209 ◽  
Author(s):  
Florian Arendt ◽  
Sebastian Scherr

Abstract. Background: Research has already acknowledged the importance of the Internet in suicide prevention as search engines such as Google are increasingly used in seeking both helpful and harmful suicide-related information. Aims: We aimed to assess the impact of a highly publicized suicide by a Hollywood actor on suicide-related online information seeking. Method: We tested the impact of the highly publicized suicide of Robin Williams on volumes of suicide-related search queries. Results: Both harmful and helpful search terms increased immediately after the actor's suicide, with a substantial jump of harmful queries. Limitations: The study has limitations (e.g., possible validity threats of the query share measure, use of ambiguous search terms). Conclusion: Online suicide prevention efforts should try to increase online users' awareness of and motivation to seek help, for which Google's own helpline box could play an even more crucial role in the future.


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