Application of Machine Learning for Online Reputation Systems
Ahmad Alqwadri, Mohammad Azzeh, Fadi Almasalha

TL;DR
This paper introduces a machine learning-based reputation system that predicts consumer reliability using profile data, improving rating aggregation accuracy for online recommendations.
Contribution
A novel reputation system leveraging machine learning to assess consumer reliability from profile data, enhancing aggregation accuracy over traditional methods.
Findings
The proposed model outperforms previous rating aggregation methods.
Machine learning predictions improve reputation score accuracy.
Evaluation over MovieLens datasets shows promising results.
Abstract
Users on the internet usually require venues to provide better purchasing recommendations. This can be provided by a reputation system that processes ratings to provide recommendations. The rating aggregation process is a main part of reputation system to produce global opinion about the product quality. Naive methods that are frequently used do not consider consumer profiles in its calculation and cannot discover unfair ratings and trends emerging in new ratings. Other sophisticated rating aggregation methods that use weighted average technique focus on one or a few aspects of consumers profile data. This paper proposes a new reputation system using machine learning to predict reliability of consumers from consumer profile. In particular, we construct a new consumer profile dataset by extracting a set of factors that have great impact on consumer reliability, which serve as an input to…
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Taxonomy
TopicsRecommender Systems and Techniques · Digital Marketing and Social Media · Spam and Phishing Detection
