Title :
Auto-associative extreme learning factory as a single class classifier
Author :
Ravi, Vadlamani ; Singh, Puneet
Author_Institution :
Center of Excellence in CRM and Analytics, Institute for Development and Research in Banking, Technology, Hyderabad-500057, India
Abstract :
We first design the Auto Associative Extreme Learning Machine (AAELM) as an auto associative version of the ELM and then propose a single class classifier based on Auto Associative Extreme Learning Factory (AAELF), which is an ensemble of several AAELMs. The ensemble was necessitated because the results of AAELM are extremely sensitive to the random weights of the connections between input and hidden layers. The proposed architecture is tested on bankruptcy prediction datasets namely Spanish banks, Turkish banks, UK banks; UK Credit dataset and phishing dataset. It turns out that AAELF outperforms past works that included many binary and single class classifiers. It is concluded that AAELF is an effective single class classifier in classifying highly unbalanced datasets or datasets where the positive class is totally missing.
Keywords :
Accuracy; Electronic mail; Logistics; Neural networks; Production facilities; Support vector machines; Auto Associative Extreme Learning Factory; Bankruptcy Prediction; Credit Scoring; Extreme Learning Machine; Phishing Detection; Single Class Classifier;
Conference_Titel :
Computational Intelligence and Computing Research (ICCIC), 2014 IEEE International Conference on
Print_ISBN :
978-1-4799-3974-9
DOI :
10.1109/ICCIC.2014.7238402