Interpretable SAM-kNN Regressor for Incremental Learning on High-Dimensional Data Streams

Jakob, Jonathan and Artelt, André and Hasenjäger, Martina and Hammer, Barbara (2023) Interpretable SAM-kNN Regressor for Incremental Learning on High-Dimensional Data Streams. Applied Artificial Intelligence, 37 (1). ISSN 0883-9514

[thumbnail of Interpretable SAM kNN Regressor for Incremental Learning on High Dimensional Data Streams.pdf] Text
Interpretable SAM kNN Regressor for Incremental Learning on High Dimensional Data Streams.pdf - Published Version

Download (5MB)

Abstract

In many real-world scenarios, data are provided as a potentially infinite stream of samples that are subject to changes in the underlying data distribution, a phenomenon often referred to as concept drift. A specific facet of concept drift is feature drift, where the relevance of a feature to the problem at hand changes over time. High-dimensionality of the data poses an additional challenge to learning algorithms operating in such environments. Common scenarios of this nature can for example be found in sensor-based maintenance operations of industrial machines or inside entire networks, such as power grids or water distribution systems. However, since most existing methods for incremental learning focus on classification tasks, efficient online learning for regression is still an underdeveloped area. In this work, we introduce an extension to the SAM-kNN Regressor that incorporates metric learning in order to improve the prediction quality on data streams, gain insights into the relevance of different input features and based on that, transform the input data into a lower dimension in order to improve computational complexity and suitability for high-dimensional data. We evaluate our proposed method on artificial data, to demonstrate its applicability in various scenarios. In addition to that, we apply the method to the real-world problem of water distribution network monitoring. Specifically, we demonstrate that sensor faults in the water distribution network can be detected by monitoring the feature relevances computed by our algorithm.

Item Type: Article
Subjects: Article Archives > Computer Science
Depositing User: Unnamed user with email support@articlearchives.org
Date Deposited: 12 Jun 2023 04:46
Last Modified: 22 Oct 2024 04:26
URI: http://archive.paparesearch.co.in/id/eprint/1578

Actions (login required)

View Item
View Item