Adaptive Fuzzy Learning Vector Quantization (AFLVQ) for Time Series Classification

Author(s):  
Renan Fonteles Albuquerque ◽  
Paulo D. L. de Oliveira ◽  
Arthur P. de S. Braga
Author(s):  
Jiří Fejfar ◽  
Jiří Šťastný ◽  
Miroslav Cepl

We are presenting results comparison of three artificial intelligence algorithms in a classification of time series derived from musical excerpts in this paper. Algorithms were chosen to represent different principles of classification – statistic approach, neural networks and competitive learning. The first algorithm is a classical k-Nearest neighbours algorithm, the second algorithm is Multilayer Perceptron (MPL), an example of artificial neural network and the third one is a Learning Vector Quantization (LVQ) algorithm representing supervised counterpart to unsupervised Self Organizing Map (SOM).After our own former experiments with unlabelled data we moved forward to the data labels utilization, which generally led to a better accuracy of classification results. As we need huge data set of labelled time series (a priori knowledge of correct class which each time series instance belongs to), we used, with a good experience in former studies, musical excerpts as a source of real-world time series. We are using standard deviation of the sound signal as a descriptor of a musical excerpts volume level.We are describing principle of each algorithm as well as its implementation briefly, giving links for further research. Classification results of each algorithm are presented in a confusion matrix showing numbers of misclassifications and allowing to evaluate overall accuracy of the algorithm. Results are compared and particular misclassifications are discussed for each algorithm. Finally the best solution is chosen and further research goals are given.


2012 ◽  
Vol 19 (1) ◽  
pp. 120 ◽  
Author(s):  
Sarajane Marques Peres ◽  
Thiago Rocha ◽  
Helton H. Biscaro ◽  
Renata Cristina B. Madeo ◽  
Clodis Boscarioli

2010 ◽  
Vol 439-440 ◽  
pp. 367-371
Author(s):  
Xiao Hong Wu ◽  
Bin Wu ◽  
Jie Wen Zhao

Fuzzy learning vector quantization (FLVQ) benefits from using the membership values coming from fuzzy c-means (FCM) as learning rates and it overcomes several problems of learning vector quantization (LVQ). However, FLVQ is sensitive to noises because it is a FCM-based algorithm (FCM is sensitive to noises). Here, a new fuzzy learning vector quantization model, called noise fuzzy learning vector quantization (NFLVQ), is proposed to handle the noises sensitivity problem of FLVQ. NFLVQ integrates LVQ and generalized noise clustering (GNC), uses the membership values from GNC as learning rates and clusters data containing noisy data better than FLVQ. Experimental results show the better performances of NFLVQ.


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