Subgroup Preference Neural Network.

Journal: Sensors (Basel, Switzerland)
Published Date:

Abstract

Subgroup label ranking aims to rank groups of labels using a single ranking model, is a new problem faced in preference learning. This paper introduces the Subgroup Preference Neural Network () that combines multiple networks have different activation function, learning rate, and output layer into one artificial neural network () to discover the hidden relation between the subgroups' multi-labels. The is a feedforward (), partially connected network that has a single middle layer and uses stairstep () multi-valued activation function to enhance the prediction's probability and accelerate the ranking convergence. The novel structure of the proposed consists of a multi-activation function neuron () in the middle layer to rank each subgroup independently. The uses gradient ascent to maximize the Spearman ranking correlation between the groups of labels. Each label is represented by an output neuron that has a single function. The proposed using conjoint dataset outperforms the other label ranking methods which uses each dataset individually. The proposed achieves an average accuracy of 91.4% using the conjoint dataset compared to supervised clustering, decision tree, multilayer perceptron label ranking and label ranking forests that achieve an average accuracy of 60%, 84.8%, 69.2% and 73%, respectively, using the individual dataset.

Authors

  • Ayman Elgharabawy
    Australian Artificial Intelligence Institute, School of Computer Science, University of Technology Sydney, Ultimo, Sydney 2007, Australia.
  • Mukesh Prasad
    Centre for Artificial Intelligence, School of Software, Faculty of Engineering and Technology, University of Technology Sydney, Sydney, Australia.
  • Chin-Teng Lin