Polynomial tuned Kernel Parameter in SVM of Agarwood Oil for Quality Classification

Author(s):  
Nur Shazareen Ismail ◽  
Nurlaila Ismail ◽  
Mohd Hezri Fazalul Rahiman ◽  
Mohd Nasir Taib ◽  
Nor Azah Mohd Ali ◽  
...  
Author(s):  
Muhamad Addin Akmal Bin Mohd Raif ◽  
Nurlaila Ismail ◽  
Nor Azah Mohd Ali ◽  
Mohd Hezri Fazalul Rahiman ◽  
Saiful Nizam Tajuddin ◽  
...  

<span>This paper presents the analysis of agarwood oil compounds quality classification by tuning quadratic kernel parameter in Support Vector Machine (SVM). The experimental work involved of agarwood oil samples from low and high qualities. The input is abundances (%) of the agarwood oil compounds and the output is the quality of the oil either high or low. The input and output data were processed by following tasks; i) data processing which covers normalization, randomization and data splitting into two parts in which training and testing database (ratio of 80%:20%), and ii) data analysis which covers SVM development by tuning quadratic kernel parameter. The training dataset was used to be train the SVM model and the testing dataset was used to test the developed SVM model. All the analytical works are performed via MATLAB software version R2013a. The result showed that, quadratic tuned kernel parameter in SVM model was successful since it passed all the performance criteria’s in which accuracy, precision, confusion matrix, sensitivity and specificity. The finding obtained in this paper is vital to the agarwood oil and its research area especially to the agarwood oil compounds classification system.</span>


Author(s):  
Aqib Fawwaz Mohd Amidon ◽  
Noratikah Zawani Mahabob ◽  
Nurlaila Ismail ◽  
Zakiah Mohd Yusoff ◽  
Mohd Nasir Taib

Author(s):  
Khairul Anis Athirah Kamarulzaini ◽  
Nurlaila Ismail ◽  
Mohd Hezri Fazalul Rahiman ◽  
Mohd Nasir Taib ◽  
Nor Azah Mohd Ali ◽  
...  

Author(s):  
Noratikah Zawani Mahabob ◽  
Zakiah Mohd Yusoff ◽  
Aqib Fawwaz Mohd Amidon ◽  
Nurlaila Ismail ◽  
Mohd Nasir Taib

<span>Agarwood oil is in increasing demand in Malaysia throughout the world for use in incense, traditional medicine, and perfumes. However, there is still no standardized grading method for agarwood oil. It is vital to grade agarwood oil into high and low quality so that both qualities can be properly differentiated. In the present study, data were obtained from the Forest Research Institute Malaysia (FRIM), Selangor Malaysia and Bioaromatic Research Centre of Excellence (BARCE), Universiti Malaysia Pahang (UMP). The work involves the data from a previous researcher. As a part of on-going research, the stepwise linear regression and multilayer perceptron have been proposed for grading agarwood oil. The output features of the stepwise regression were the input features for modeling agarwood oil in a multilayer perceptron (MLP) network. A three layer MLP with 10 hidden neurons was used with three different training algorithms, namely resilient backpropagation (RBP), levenberg marquardt (LM) and scaled-conjugate gradient (SCG). All analytical work was performed using MATLAB software version R2017a. It was found that one hidden neuron in LM algorithm performed the most <span>accurate result in the classification of agarwood oil with the lowest mean squared error (MSE) as compared to SCG and RBP algorithms. The findings in this research will be a</span> benefit for future works of agarwood oil research areas, especially in terms of oil quality classification.</span>


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