LEAN-DMKDE: Quantum Latent Density Estimation for Anomaly Detection

11/15/2022
by   Joseph Gallego-Mejia, et al.
0

This paper presents an anomaly detection model that combines the strong statistical foundation of density-estimation-based anomaly detection methods with the representation-learning ability of deep-learning models. The method combines an autoencoder, for learning a low-dimensional representation of the data, with a density-estimation model based on random Fourier features and density matrices in an end-to-end architecture that can be trained using gradient-based optimization techniques. The method predicts a degree of normality for new samples based on the estimated density. A systematic experimental evaluation was performed on different benchmark datasets. The experimental results show that the method performs on par with or outperforms other state-of-the-art methods.

READ FULL TEXT
research
10/26/2022

AD-DMKDE: Anomaly Detection through Density Matrices and Fourier Features

This paper presents a novel density estimation method for anomaly detect...
research
10/11/2022

InQMAD: Incremental Quantum Measurement Anomaly Detection

Streaming anomaly detection refers to the problem of detecting anomalous...
research
04/13/2018

Scalable and Interpretable One-class SVMs with Deep Learning and Random Fourier features

One-class Support Vector Machine (OC-SVM) for a long time has been one o...
research
06/15/2020

Dissimilarity Mixture Autoencoder for Deep Clustering

In this paper, we introduce the Dissimilarity Mixture Autoencoder (DMAE)...
research
07/04/2018

AND: Autoregressive Novelty Detectors

We propose an unsupervised model for novelty detection. The subject is t...
research
10/29/2021

PEDENet: Image Anomaly Localization via Patch Embedding and Density Estimation

A neural network targeting at unsupervised image anomaly localization, c...
research
06/06/2023

High-dimensional and Permutation Invariant Anomaly Detection

Methods for anomaly detection of new physics processes are often limited...

Please sign up or login with your details

Forgot password? Click here to reset