عنوان مقاله فارسی: یک ماشین یادگیری فوق العاده فراشناختی نوع 2 افزایشی
عنوان مقاله لاتین: An Incremental Type-2 Meta-Cognitive Extreme Learning Machine
نویسندگان: Mahardhika Pratama; Guangquan Zhang; Meng Joo Er; Sreenatha Anavatti
تعداد صفحات: 14
سال انتشار: 2017
زبان: لاتین
Abstract:
Existing extreme learning algorithm have not taken into account four issues: 1) complexity; 2) uncertainty; 3) concept drift; and 4) high dimensionality. A novel incremental type-2 meta-cognitive extreme learning machine (ELM) called evolving type-2 ELM (eT2ELM) is proposed to cope with the four issues in this paper. The eT2ELM presents three main pillars of human meta-cognition: 1) what-to-learn; 2) how-to-learn; and 3) when-to-learn. The what-to-learn component selects important training samples for model updates by virtue of the online certainty-based active learning method, which renders eT2ELM as a semi-supervised classifier. The how-to-learn element develops a synergy between extreme learning theory and the evolving concept, whereby the hidden nodes can be generated and pruned automatically from data streams with no tuning of hidden nodes. The when-to-learn constituent makes use of the standard sample reserved strategy. A generalized interval type-2 fuzzy neural network is also put forward as a cognitive component, in which a hidden node is built upon the interval type-2 multivariate Gaussian function while exploiting a subset of Chebyshev series in the output node. The efficacy of the proposed eT2ELM is numerically validated in 12 data streams containing various concept drifts. The numerical results are confirmed by thorough statistical tests, where the eT2ELM demonstrates the most encouraging numerical results in delivering reliable prediction, while sustaining low complexity.
an incremental type-2 meta-cognitive extreme learning machine_1619529361_47945_4145_1409.zip2.84 MB |