JSAI2020

Presentation information

General Session

General Session » J-2 Machine learning

[2I4-GS-2] Machine learning: Anomaly detection

Wed. Jun 10, 2020 1:50 PM - 3:30 PM Room I (jsai2020online-9)

座長:堀井隆斗(大阪大学)

2:10 PM - 2:30 PM

[2I4-GS-2-02] An Anomaly Detection Method with Neural Network Near Neighbor

〇Yuichi Kato1, Kentaro Takagi1, yaling Tao1, Susumu Naito1, Yasunori Taguchi1, Teguh Budianto1, Kouta Nakata1 (1. TOSHIBA CORPORATION)

Keywords:Neural Network, k-nearest neighbor, anomaly detection

Machine learning for anomaly detection is a key technology employed in diverse industries. k-nearest neighbor and AutoEncoder are one of those methods used frequently. However, the former one searches nearest neighbors even for anomalies requiring large distance between normal and anomaly examples, and the latter one suffers from excessive generalization. In order to tackle the problems, we developed an algorithm, neural network near neighbor, approximating neighborhood search by a neural network. It seeks out train data addition ratio to reproduce input data via a softmax layer. Therefore, it neither derives nearest neigbors of anomaly examples nor recreates data which are unattainable from superposition of train data. We evaluated the performance of it with MNIST data-set consisting of handwritten digits. The algorithm has the highest mean of the area under the curve of Reciever Operating Characteristic of 0.850, while k-nearest neighbor and AutoEncoder show 0.822 and 0.623, respectively.

Authentication for paper PDF access

A password is required to view paper PDFs. If you are a registered participant, please log on the site from Participant Log In.
You could view the PDF with entering the PDF viewing password bellow.

Password