Literature DB >> 35590801

Prototype Regularized Manifold Regularization Technique for Semi-Supervised Online Extreme Learning Machine.

Muhammad Zafran Muhammad Zaly Shah1, Anazida Zainal1, Fuad A Ghaleb1, Abdulrahman Al-Qarafi2, Faisal Saeed3.   

Abstract

Data streaming applications such as the Internet of Things (IoT) require processing or predicting from sequential data from various sensors. However, most of the data are unlabeled, making applying fully supervised learning algorithms impossible. The online manifold regularization approach allows sequential learning from partially labeled data, which is useful for sequential learning in environments with scarcely labeled data. Unfortunately, the manifold regularization technique does not work out of the box as it requires determining the radial basis function (RBF) kernel width parameter. The RBF kernel width parameter directly impacts the performance as it is used to inform the model to which class each piece of data most likely belongs. The width parameter is often determined off-line via hyperparameter search, where a vast amount of labeled data is required. Therefore, it limits its utility in applications where it is difficult to collect a great deal of labeled data, such as data stream mining. To address this issue, we proposed eliminating the RBF kernel from the manifold regularization technique altogether by combining the manifold regularization technique with a prototype learning method, which uses a finite set of prototypes to approximate the entire data set. Compared to other manifold regularization approaches, this approach instead queries the prototype-based learner to find the most similar samples for each sample instead of relying on the RBF kernel. Thus, it no longer necessitates the RBF kernel, which improves its practicality. The proposed approach can learn faster and achieve a higher classification performance than other manifold regularization techniques based on experiments on benchmark data sets. Results showed that the proposed approach can perform well even without using the RBF kernel, which improves the practicality of manifold regularization techniques for semi-supervised learning.

Entities:  

Keywords:  Internet of Things; machine learning; manifold regularization; semi-supervised learning; sequential learning

Mesh:

Year:  2022        PMID: 35590801      PMCID: PMC9101820          DOI: 10.3390/s22093113

Source DB:  PubMed          Journal:  Sensors (Basel)        ISSN: 1424-8220            Impact factor:   3.576


  5 in total

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Authors:  Shen Furao; Osamu Hasegawa
Journal:  Neural Netw       Date:  2005-09-08

2.  An enhanced self-organizing incremental neural network for online unsupervised learning.

Authors:  Shen Furao; Tomotaka Ogura; Osamu Hasegawa
Journal:  Neural Netw       Date:  2007-08-14

3.  Universal approximation of extreme learning machine with adaptive growth of hidden nodes.

Authors:  Rui Zhang; Yuan Lan; Guang-Bin Huang; Zong-Ben Xu
Journal:  IEEE Trans Neural Netw Learn Syst       Date:  2012-02       Impact factor: 10.451

4.  Distributed semi-supervised support vector machines.

Authors:  Simone Scardapane; Roberto Fierimonte; Paolo Di Lorenzo; Massimo Panella; Aurelio Uncini
Journal:  Neural Netw       Date:  2016-04-27

5.  Semi-supervised and unsupervised extreme learning machines.

Authors:  Gao Huang; Shiji Song; Jatinder N D Gupta; Cheng Wu
Journal:  IEEE Trans Cybern       Date:  2014-12       Impact factor: 11.448

  5 in total
  1 in total

1.  A New De-Noising Method Based on Enhanced Time-Frequency Manifold and Kurtosis-Wavelet Dictionary for Rolling Bearing Fault Vibration Signal.

Authors:  Qingbin Tong; Ziyu Liu; Feiyu Lu; Ziwei Feng; Qingzhu Wan
Journal:  Sensors (Basel)       Date:  2022-08-16       Impact factor: 3.847

  1 in total

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