Document detail
ID

oai:arXiv.org:2410.10041

Topic
Computer Science - Machine Learnin... Computer Science - Artificial Inte...
Author
Xu, Kunpeng Chen, Lifei Wang, Shengrui
Category

Computer Science

Year

2024

listing date

12/18/2024

Keywords
concepts kan-based kan time series drift concept
Metrics

Abstract

Dynamic concepts in time series are crucial for understanding complex systems such as financial markets, healthcare, and online activity logs.

These concepts help reveal structures and behaviors in sequential data for better decision-making and forecasting.

However, existing models often struggle to detect and track concept drift due to limitations in interpretability and adaptability.

To address this challenge, inspired by the flexibility of the recent Kolmogorov-Arnold Network (KAN), we propose WormKAN, a concept-aware KAN-based model to address concept drift in co-evolving time series.

WormKAN consists of three key components: Patch Normalization, Temporal Representation Module, and Concept Dynamics.

Patch normalization processes co-evolving time series into patches, treating them as fundamental modeling units to capture local dependencies while ensuring consistent scaling.

The temporal representation module learns robust latent representations by leveraging a KAN-based autoencoder, complemented by a smoothness constraint, to uncover inter-patch correlations.

Concept dynamics identifies and tracks dynamic transitions, revealing structural shifts in the time series through concept identification and drift detection.

These transitions, akin to passing through a \textit{wormhole}, are identified by abrupt changes in the latent space.

Experiments show that KAN and KAN-based models (WormKAN) effectively segment time series into meaningful concepts, enhancing the identification and tracking of concept drift.

Xu, Kunpeng,Chen, Lifei,Wang, Shengrui, 2024, WormKAN: Are KAN Effective for Identifying and Tracking Concept Drift in Time Series?

Document

Open

Share

Source

Articles recommended by ES/IODE AI

Critical Prognostic Factors in Cerebral Venous Sinus Thrombosis: An Observational Study
thrombosis 001 p<0 involvement sinus prognostic study factors outcome poor associated