A novel item anomaly detection approach against
shilling attacks in collaborative recommendation systems using the dynamic time
interval segmentation technique
Various types of web applications have gained both higher
customer satisfaction and more benefits since being successfully armed with
personalized recommendation. However, the increasingly rampant shilling
attackers apply biased rating profiles
to systems to manipulate item recommendations, which not just lower the
recommending precision and user satisfaction but also damage the
trustworthiness of intermediated transaction platforms and participants. Many
studies have offered methods against shilling attacks, especially user profile
based-detection. However, this detection suffers from the extraction of the
universal feature of attackers, which directly results in poor performance when
facing the improved shilling attack types. This paper presents a novel dynamic
time interval segmentation technique based item anomaly detection approach to
address these problems. In particular, this study is inspired by the common
attack features from the standpoint of the item profile, and can detect attacks
regardless of the specific attack types. The proposed segmentation technique
could confirm the size of the time interval dynamically to group as many
consecutive attack ratings together as possible. In addition, apart from
effectiveness metrics, little attention has been paid to the robustness of
detection methods, which includes measuring both the accuracy and the stability
of results. Hence, we introduced a stability metric as a complement for
estimating the robustness. Thorough experiments on the MovieLens dataset
illustrate the performance of the proposed approach, and justify the value of
the proposed approach for online applications.
Application : Web, Data Mining
Front End:
HTML5, CSS3, Bootstrap, Java Script
Back End:
PHP, My SQL
Existing Definition
Many studies
have offered methods against shilling attacks, especially user profile
based-detection. However, this detection suffers from the extraction of the
universal feature of attackers, which directly results in poor performance when
facing the improved shilling attack types.
This paper
presents a novel dynamic time interval segmentation technique based item
anomaly detection approach to address these problems. In particular, this study
is inspired by the common attack features from the standpoint of the item
profile, and can detect attacks regardless of the specific attack types.
Proposed
Solution:
The proposed segmentation
technique could confirm the size of the time interval dynamically to group as many
consecutive attack ratings together as possible. In addition, apart from
effectiveness metrics, little attention has been paid to the robustness of
detection methods, which includes measuring both the accuracy and the stability
of results. Hence, we introduced stability metric as a complement for
estimating the robustness. Thorough experiments on the Movie Lens dataset
illustrate the performance of the proposed approach, and justify the value of
the proposed approach for online applications.
project-center-salem-erode-namakal-tiruchengode-karur-gandhipuram
project-center-mannargudi-pattukkottai
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project-center-bangalore-chennai-trivandrum
project-center-bhubaneswar-belgum-bhopal
project-center-chidambaram-mayiladuthurai-nagapattinam-cuddalore
project-center-coimbatore-chennai-salem-madurai-erode-trichy-tirunelveli-pondicherry
project-center-delhi-mumbai-hyderabad-visakhapatnam
project-center-dharmapuri-hosur-krishnagiri
project-center-dindigul-palani-rasipuram
project-center-tirunelveli-tiruchendur-nagercoil-virudhunagar-rajapalayam
project-center-tnagar-tambaram-nungambakkam-velachery
project-center-trivandrum-ernakulam
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