Skip to main content

Robust Subspace Recovery Layer for Unsupervised Anomaly Detection

Publication ,  Conference
Lai, C-H; Zou, D; Lerman, G
May 1, 2020

We propose a neural network for unsupervised anomaly detection with a novel robust subspace recovery layer (RSR layer). This layer seeks to extract the underlying subspace from a latent representation of the given data and removes outliers that lie away from this subspace. It is used within an autoencoder. The encoder maps the data into a latent space, from which the RSR layer extracts the subspace. The decoder then smoothly maps back the underlying subspace to a ``manifold" close to the original inliers. Inliers and outliers are distinguished according to the distances between the original and mapped positions (small for inliers and large for outliers). Extensive numerical experiments with both image and document datasets demonstrate state-of-the-art precision and recall.

Duke Scholars

Publication Date

May 1, 2020

Location

Addis Ababa, Ethiopia

Conference Name

International Conference on Learning Representations
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Lai, C.-H., Zou, D., & Lerman, G. (2020). Robust Subspace Recovery Layer for Unsupervised Anomaly Detection. Presented at the International Conference on Learning Representations, Addis Ababa, Ethiopia.
Lai, Chieh-Hsin, Dongmian Zou, and Gilad Lerman. “Robust Subspace Recovery Layer for Unsupervised Anomaly Detection,” 2020.

Publication Date

May 1, 2020

Location

Addis Ababa, Ethiopia

Conference Name

International Conference on Learning Representations