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Article type: Research Article
Authors: Hu, Hanqing* | Kantardzic, Mehmed | Kar, Shreyas
Affiliations: CECS, University of Louisville, Louisville, USA
Correspondence: [*] Corresponding author: Hanqing Hu, CECS, University of Louisville, Louisville, USA. E-mail: [email protected].
Abstract: Explainable Machine Learning brings expandability, interpretability, and accountability to Data Mining Algorithms. Existing explanation frameworks focus on explaining the decision process of a single model in a static dataset. However, in data stream mining changes in data distribution over time, called concept drift, may require updating the learning models to reflect the current data environment. It is therefore important to go beyond static models and understand what has changed among the learning models before and after a concept drift. We propose a Data Stream Explanability framework (DSE) that works together with a typical data stream mining framework where support vector machine models are used. DSE aims to help non-expert users understand model dynamics in a concept drifting data stream. DSE visualizes differences between SVM models before and after concept drift, to produce explanations on why the new model fits the data better. A survey was carried out between expert and non-expert users on the effectiveness of the framework. Although results showed non-expert users on average responded with less understanding of the issue compared to expert users, the difference is not statistically significant. This indicates that DSE successfully brings the explanability of model change to non-expert users.
Keywords: Explanable machine learning, data stream mining, concept drift
DOI: 10.3233/IDT-230065
Journal: Intelligent Decision Technologies, vol. 18, no. 1, pp. 371-385, 2024
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