LGAug 17, 2021

Incremental cluster validity index-guided online learning for performance and robustness to presentation order

arXiv:2108.07743v18 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of intelligent decision-making in streaming data applications for lifelong learning systems, though it appears incremental as it builds on existing iCVI and ART methods.

The paper tackles the problem of improving accuracy and robustness to presentation order in online learning systems by introducing iCVI-TopoARTMAP, an adaptive resonance theory-based model that integrates incremental cluster validity indices (iCVIs) for unsupervised and semi-supervised learning, achieving enhanced performance as demonstrated in experiments with synthetic and real-world face image datasets.

In streaming data applications incoming samples are processed and discarded, therefore, intelligent decision-making is crucial for the performance of lifelong learning systems. In addition, the order in which samples arrive may heavily affect the performance of online (and offline) incremental learners. The recently introduced incremental cluster validity indices (iCVIs) provide valuable aid in addressing such class of problems. Their primary use-case has been cluster quality monitoring; nonetheless, they have been very recently integrated in a streaming clustering method to assist the clustering task itself. In this context, the work presented here introduces the first adaptive resonance theory (ART)-based model that uses iCVIs for unsupervised and semi-supervised online learning. Moreover, it shows for the first time how to use iCVIs to regulate ART vigilance via an iCVI-based match tracking mechanism. The model achieves improved accuracy and robustness to ordering effects by integrating an online iCVI framework as module B of a topological adaptive resonance theory predictive mapping (TopoARTMAP) -- thereby being named iCVI-TopoARTMAP -- and by employing iCVI-driven post-processing heuristics at the end of each learning step. The online iCVI framework provides assignments of input samples to clusters at each iteration in accordance to any of several iCVIs. The iCVI-TopoARTMAP maintains useful properties shared by ARTMAP models, such as stability, immunity to catastrophic forgetting, and the many-to-one mapping capability via the map field module. The performance (unsupervised and semi-supervised) and robustness to presentation order (unsupervised) of iCVI-TopoARTMAP were evaluated via experiments with a synthetic data set and deep embeddings of a real-world face image data set.

Foundations

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