Robust one-class kernel spectral regression

SR Arashloo, J Kittler - IEEE Transactions on Neural Networks …, 2020 - ieeexplore.ieee.org
The kernel null-space technique is known to be an effective one-class classification (OCC)
technique. Nevertheless, the applicability of this method is limited due to its susceptibility to …

Open problems in robotic anomaly detection

R Gupta, ZT Kurtz, S Scherer, JM Smereka - arXiv preprint arXiv …, 2018 - arxiv.org
Failures in robotics can have disastrous consequences that worsen rapidly over time. This,
the ability to rely on robotic systems, depends on our ability to monitor them and intercede …

Supervised anomaly detection based on deep autoregressive density estimators

T Iwata, Y Yamanaka - arXiv preprint arXiv:1904.06034, 2019 - arxiv.org
We propose a supervised anomaly detection method based on neural density estimators,
where the negative log likelihood is used for the anomaly score. Density estimators have …

[HTML][HTML] Analytics for investigation of disease outbreaks: web-based analytics facilitating situational awareness in unfolding disease outbreaks

N Velappan, AR Daughton, G Fairchild… - JMIR Public Health …, 2019 - publichealth.jmir.org
Background: Information from historical infectious disease outbreaks provides real-world
data about outbreaks and their impacts on affected populations. These data can be used to …

Supervised conformance checking using recurrent neural network classifiers

J Peeperkorn, S vanden Broucke… - Process Mining Workshops …, 2021 - Springer
Conformance checking is concerned with the task of assessing the quality of process
models describing actual behavior captured in an event log across different dimensions. In …

Enhancing HPC system log analysis by identifying message origin in source code

M Hickman, D Fulp, E Baseman… - 2018 IEEE …, 2018 - ieeexplore.ieee.org
Supercomputers, high performance computers, and clusters are composed of very large
numbers of independent operating systems that are generating their own system logs …

Novel Conformance Checking Methods and Validation Strategies for Deep Learning in Process Mining

J Peeperkorn, J De Weerdt - 2023 - lirias.kuleuven.be
This research project focusses on the development of representation learning-based
techniques for business processes. More specifically, both the architectural design as well …

One-class kernel spectral regression

SR Arashloo, J Kittler - arXiv preprint arXiv:1807.01085, 2018 - arxiv.org
The paper introduces a new efficient nonlinear one-class classifier formulated as the
Rayleigh quotient criterion optimisation. The method, operating in a reproducing kernel …

N-SLOPE: A One-Class Classification Ensemble For Nuclear Forensics

J Kehl, L Stanchev - 2018 IEEE First International Conference …, 2018 - ieeexplore.ieee.org
One-class classification is a specialized form of classification from the field of machine
learning. A traditional classifier always assigns a new element to one of the known classes …

[PDF][PDF] Analytics for Investigation of Disease Outbreaks (AIDO) ā€“A web-based analytic facilitating situational awareness in unfolding disease outbreaks

N Velappan, AR Daughton, G Fairchild, W Earl… - scholar.archive.org
Background: Information from historical infectious disease outbreaks provides real-world
data about outbreaks and its impacts on affected populations. These data can be used to …