Unsupervised Assessment of Landscape Shifts Based on Persistent Entropy and Topological Preservation
- URL: http://arxiv.org/abs/2410.04183v2
- Date: Tue, 22 Oct 2024 07:24:05 GMT
- Title: Unsupervised Assessment of Landscape Shifts Based on Persistent Entropy and Topological Preservation
- Authors: Sebastian Basterrech,
- Abstract summary: A drift in the input data can have negative consequences on a learning predictor and the system's stability.
In this article, we introduce a novel framework for monitoring changes in multi-dimensional data streams.
The framework operates in both unsupervised and supervised environments.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: In Continual Learning (CL) contexts, concept drift typically refers to the analysis of changes in data distribution. A drift in the input data can have negative consequences on a learning predictor and the system's stability. The majority of concept drift methods emphasize the analysis of statistical changes in non-stationary data over time. In this context, we consider another perspective, where the concept drift also integrates substantial changes in the topological characteristics of the data stream. In this article, we introduce a novel framework for monitoring changes in multi-dimensional data streams. We explore variations in the topological structures of the data, presenting another angle on the standard concept drift. Our developed approach is based on persistent entropy and topology-preserving projections in a continual learning scenario. The framework operates in both unsupervised and supervised environments. To show the utility of the proposed framework, we analyze the model across three scenarios using data streams generated with MNIST samples. The obtained results reveal the potential of applying topological data analysis for shift detection and encourage further research in this area.
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