cs.AI updates on arXiv.org 07月09日 12:02
Unsupervised Anomaly Detection through Mass Repulsing Optimal Transport
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本文提出了一种名为Mass Repulsing Optimal Transport(MROT)的新算法,通过强制样本移动质量,实现最小化运输成本,用于数据集异常检测,实验表明其优于现有方法。

arXiv:2502.12793v2 Announce Type: replace-cross Abstract: Detecting anomalies in datasets is a longstanding problem in machine learning. In this context, anomalies are defined as a sample that significantly deviates from the remaining data. Meanwhile, optimal transport (OT) is a field of mathematics concerned with the transportation, between two probability measures, at least effort. In classical OT, the optimal transportation strategy of a measure to itself is the identity. In this paper, we tackle anomaly detection by forcing samples to displace its mass, while keeping the least effort objective. We call this new transportation problem Mass Repulsing Optimal Transport (MROT). Naturally, samples lying in low density regions of space will be forced to displace mass very far, incurring a higher transportation cost. We use these concepts to design a new anomaly score. Through a series of experiments in existing benchmarks, and fault detection problems, we show that our algorithm improves over existing methods.

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异常检测 最优传输 数据挖掘
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