ALTBI: Constructing Improved Outlier Detection Models via Optimization of Inlier-Memorization Effect
Seoyoung Cho, Jaesung Hwang, Kwan-Young Bak, Dongha Kim

TL;DR
ALTBI is a novel outlier detection method that enhances the inlier-memorization effect by adaptive loss truncation and batch increment, achieving state-of-the-art results with lower computational costs.
Contribution
The paper introduces ALTBI, a new outlier detection approach that maximizes the inlier-memorization effect through adaptive loss truncation and batch size strategies, with theoretical justification and ensemble techniques.
Findings
ALTBI outperforms recent methods in outlier detection accuracy.
ALTBI maintains robust performance with lower computational costs.
The method is effective even when combined with privacy-preserving algorithms.
Abstract
Outlier detection (OD) is the task of identifying unusual observations (or outliers) from a given or upcoming data by learning unique patterns of normal observations (or inliers). Recently, a study introduced a powerful unsupervised OD (UOD) solver based on a new observation of deep generative models, called inlier-memorization (IM) effect, which suggests that generative models memorize inliers before outliers in early learning stages. In this study, we aim to develop a theoretically principled method to address UOD tasks by maximally utilizing the IM effect. We begin by observing that the IM effect is observed more clearly when the given training data contain fewer outliers. This finding indicates a potential for enhancing the IM effect in UOD regimes if we can effectively exclude outliers from mini-batches when designing the loss function. To this end, we introduce two main…
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Taxonomy
TopicsFault Detection and Control Systems · Anomaly Detection Techniques and Applications
MethodsAdaptive Robust Loss
