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Novel Class Detection in Non-stationary Streaming Environment with a Discriminative Classifier (CROSBI ID 695698)

Prilog sa skupa u zborniku | izvorni znanstveni rad | međunarodna recenzija

Šajina, Romeo ; Tanković, Nikola ; Etinger, Darko Novel Class Detection in Non-stationary Streaming Environment with a Discriminative Classifier // MIPRO / Skala, Karolj (ur.). 2020. str. 1353-1357 doi: 10.23919/MIPRO48935.2020.9245193

Podaci o odgovornosti

Šajina, Romeo ; Tanković, Nikola ; Etinger, Darko

engleski

Novel Class Detection in Non-stationary Streaming Environment with a Discriminative Classifier

In a data streaming environment, one of the biggest challenges for a machine learning classifier is to detect the changes in the concepts that the data corresponds to - a phenomenon called Concept Drift. It can manifest in different modes: existing classes can continually evolve, experience a sudden shift, or a novel class can emerge. Algorithms for novel class detection using cluster-based techniques and statistical approaches applied to the model outputs rely on the assumption that the feature space of the data posses some distance metric governing the class affiliation. Therefore, the novel class will correspond to a significant distance from the known clusters. Most of the time, these assumptions are correct, but the resulting algorithms are challenging to apply on higher-dimensional data such as images. In this paper, we present a novel approach called Discriminative Classifier Detector (DCD) for detecting concept evolution. DCD trains alongside the classification model. The primary model used to evaluate our approach is a Convolutional Neural Network (CNN) classifier for which the proposed DCD is a densely layered neural network. DCD is applied to the outputs of CNN’s penultimate layer to achieve its independence against the number of output classes, which enables the underlying CNN model to evolve independently. DCD requires no structural change when the detected novel class is added to the CNN classifier. We demonstrate the effectiveness of our approach on several well- known datasets.

Covolutional Neural Network ; Novel Class Detection ; Concept Evolution ; Discriminative Classifier

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Podaci o prilogu

1353-1357.

2020.

objavljeno

10.23919/MIPRO48935.2020.9245193

Podaci o matičnoj publikaciji

Proceedings of the 43rd International Convention on Information and Communication Technology, Electronics and Microelectronics

Skala, Karolj

Rijeka: Hrvatska udruga za informacijsku i komunikacijsku tehnologiju, elektroniku i mikroelektroniku - MIPRO

1847-3938

1847-3946

Podaci o skupu

MIPRO 2020

predavanje

28.09.2020-02.10.2020

Opatija, Hrvatska

Povezanost rada

Informacijske i komunikacijske znanosti, Računarstvo

Poveznice