Online detection and infographic explanation of spam reviews with data drift adaptation
It addresses spam detection for online platforms, offering an incremental solution with transparency.
The paper tackled the problem of detecting and explaining spam reviews in online data streams with data drift, achieving up to 87% spam F-measure.
Spam reviews are a pervasive problem on online platforms due to its significant impact on reputation. However, research into spam detection in data streams is scarce. Another concern lies in their need for transparency. Consequently, this paper addresses those problems by proposing an online solution for identifying and explaining spam reviews, incorporating data drift adaptation. It integrates (i) incremental profiling, (ii) data drift detection & adaptation, and (iii) identification of spam reviews employing Machine Learning. The explainable mechanism displays a visual and textual prediction explanation in a dashboard. The best results obtained reached up to 87 % spam F-measure.